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Article

Assessing Commercial Sugarcane Irrigators’ Intentions to Adapt Water-Use Behaviour in Response to Climate Variability in South Africa

Department of Agricultural Economics, University of the Free State, P.O. Box 339, Bloemfontein 9300, South Africa
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Author to whom correspondence should be addressed.
Water 2024, 16(23), 3454; https://doi.org/10.3390/w16233454
Submission received: 14 October 2024 / Revised: 26 November 2024 / Accepted: 28 November 2024 / Published: 30 November 2024

Abstract

:
The scarcity of water resources in South Africa remains a considerable challenge for water users. This study evaluated the impact of climate variability on the adaptive water-use behaviour of sugarcane producers by identifying the factors influencing their adaptation decisions. A survey, the Theory of Planned Behaviour (TPB), and structural equation modelling (SEM) were used to achieve this objective. The study involved 54 sugarcane producers from the Impala Irrigation Scheme, selected through random sampling. Socio-economic profiles revealed a largely male, older demographic with varied education levels and farm characteristics. Results indicated that attitude (β = 0.349, p < 0.1) and subjective norms (β = 0.281, p < 0.05) significantly influenced farmers’ intentions to adapt, while perceived behavioural control had no significant effect (β = 0.051, p > 0.1). These findings suggest that improving farmers’ attitudes and strengthening social support systems can enhance their intentions to adopt adaptive strategies. However, the model’s explanatory power (R² = 0.276) suggests that other unexamined factors may also influence farmers’ adaptive intentions, highlighting the need for further research. Overall, our findings suggest that interventions targeting attitudes, social support, and resource access can improve adaptive behaviours.

Graphical Abstract

1. Introduction

Water is a vital and limited resource necessary for all human activities, utilised by various users, such as the agricultural, domestic, and industrial sectors [1]. Increased competition for water resources due to population growth, urbanization, and climate challenges is especially concerning as the agricultural industry, the largest consumer of freshwater, contributes substantially to global water stress [2,3,4]. Water is crucial for sustaining livelihoods, and its scarcity poses considerable challenges for agricultural production, particularly in areas prone to frequent droughts [5]. The changes and fluctuations in precipitation and temperatures present a severe risk to available water resources [6]. According to the World Bank, South Africa ranks among the top 30 driest countries globally and is the fifth most water-scarce in Sub-Saharan Africa, increasing its susceptibility to climate-related challenges in agriculture [7]. As a result, climate variability and change further complicate the sustainability of water use in agricultural production, affecting the region’s ability to produce essential commodities.
The performance of a country’s economic sectors can be affected by changes in climatic conditions, including variations in rainfall and temperatures, as well as droughts and floods, which could lead to decreased crop yield and productivity [8]. This is concerning because agriculture is often viewed as a catalyst for economic change and advancement, ensuring household food security and income [9]. Specifically in South Africa, agriculture plays a pivotal role in the economy by producing a wide variety of essential commodities for both human and animal consumption, while generating employment opportunities [10]. According to the South African Government (SAG) [11], South Africa typically receives about 40% less rainfall annually than the global average of 860 mm, emphasising its status as a water-stressed country. The pressure on water resources, compounded by fluctuating rainfall patterns, has led to reduced water availability in many regions across South Africa [12]. Fluctuations in rainfall intensify the necessity for efficient water use to meet demand [13]. Thus, it emphasises the water-use behaviour of water users within the agricultural sector.
The production within the agricultural sector in South Africa is threatened by changes in climatic conditions, which can affect food security and the country’s economic performance. South Africa’s susceptibility to climate variations leaves the country vulnerable, given its limited adaptive capacity to cope with climate-related challenges [14]. The variability in temperatures and rainfall could impact the success of crop production, food security, and farming profitability [13,15,16,17]. Water utilisation decisions within the agricultural sector vary among farmers in response to different contextual factors experienced in their production regions [18,19]. The behaviour of water users is crucial for agricultural production, as their decisions impact water usage, leading to various response strategies and adaptation measures to cope with climate-related challenges [20].
The scarcity of freshwater makes optimal utilisation and conservation highly important for the agricultural sector [21,22]. Farmers are the primary water users within the agricultural sector, and it is essential to understand their decision-making regarding sustainable water use [23]. Water availability is influenced by climate conditions, and climate variability impacts crop yields, contributing to food insecurity [24]. The growing importance of effective water management for food production is driven by constraints such as climate variability and climate change [25,26]. A better understanding of agricultural producers’ water-use behaviour can help develop strategies for optimising water use and ensuring sustainability. Furthermore, it can aid in better policy development.
Climatic changes endanger the agriculture industry; consequently, farmers’ decision-making regarding adaptation and their responses to climate fluctuations are vital in agriculture [27]. Farmers’ ability and willingness to adapt their farming techniques are often influenced by their understanding of climate variability and the perceived risks associated with changing climate conditions [28,29]. This highlights the critical role of effective and efficient water management in minimising the effects of climate variability [30]. Understanding farmers’ decision-making concerning land and water use is essential to managing scarce water resources, especially as climate change intensifies pressures on water availability [19,31].
Human behaviour plays a critical role in water scarcity, highlighting the need for sustainable management approaches that account for water users’ actions and decisions [32,33]. The challenge of not understanding water users’ behaviour makes it difficult to tailor policy formulation based on their actions [34]. Consequently, water management policies will prove ineffective as water users may not adhere to them [32]. The behaviour of water users, especially irrigators, substantially influences the effectiveness of measures aimed at improving water-use efficiency [34]. Several studies have assessed the effects of climate variability on various sectors and aspects of the agricultural industry [35,36,37,38,39]. However, while many studies exist on related topics (see Appendix A for a summary of similar studies and the highlighted research gap), studies have yet to explore the water-use behaviour of irrigators in South Africa, particularly in relation to sugarcane production. A lack of understanding of irrigators’ behaviour in South Africa presents a serious challenge, hindering the development of effective policies, support programs, and water-use efficiency measures, ultimately compromising sustainable irrigation practices. In the Impala Irrigation Scheme, where sugarcane production is a major economic driver, recent droughts have underscored the need for improved irrigation and adaptive agricultural practices [40]. These droughts have highlighted the sensitivity of the region’s water resources to both climatic variability and water management practices. With rainfall fluctuations directly affecting the Pongola River catchment, it is crucial to understand how farmers make decisions regarding water use in response to changing climate conditions. This study aims to address this need by examining how attitudes, subjective norms, and perceived behavioural control influence farmers’ intentions to adopt adaptive water-use practices, providing insights to support more resilient and sustainable agriculture in the face of climate variability. To achieve this objective, a survey, the Theory of Planned Behaviour (TPB), and structural equation modelling (SEM) were utilised. This aim was achieved by answering the following research questions:
i.
How do attitudes, subjective norms, and perceived behavioural control influence irrigators’ intentions to adapt to climate variability in the Impala Irrigation Scheme?
ii.
What is the relationship between these key TPB constructs and irrigators’ adaptive responses to climate variability?
iii.
To what extent do these factors explain the variation in irrigators’ intentions to adopt water-saving practices?
The remainder of the paper is structured as follows: Section 2 outlines the materials and methods, including the survey, TPB, and SEM. Section 3 presents the results, while Section 4 discusses the findings. Finally, Section 5 concludes the study, offering key insights and recommendations.

2. Materials and Methods

2.1. Study Area

The study was conducted in the Impala Irrigation Scheme, located in the northern region of the Zululand district municipality in KwaZulu-Natal, South Africa, near the Eswatini border [41]. The scheme is situated around Pongola, within the uPhongolo local municipality, where irrigation plays a crucial role in local agricultural activities. Figure 1 provides an overview of the Zululand district municipality and shows Pongola’s location within the uPhongolo local municipality.
The crops produced in the area include sugarcane, pecan nuts, macadamias, citrus, mangoes, and vegetables. Sugarcane is the primary crop produced in the scheme, with 15,439 hectares, contributing 87.75% of crops produced. Sugarcane is planted from September to April and harvested from March to December. The average yield at the Impala Irrigation Scheme is around 100 tons per hectare [43]. The climate in the Pongola River catchment varies due to differences in elevation. The evaporation rate in the Impala Irrigation Scheme ranges from 1500 mm to 1600 mm, substantially affecting irrigation water use [41]. The scheme experiences warm, humid conditions, with an average annual temperature of 20.2 °C [44].
Figure 2 presents the monthly climate data for Pongola, averaged from 1991 to 2021, showing trends in temperature (minimum, maximum, and average) and precipitation. Rainfall is highest in the summer months of January, February, and December (119 mm, 104 mm, and 124 mm, respectively), and lowest in winter, with June and July receiving 12 mm and 16 mm. The average temperature remains warm year-round, peaking at 23.7 °C in January and 23.8 °C in February, while the coolest months, June and July, average 15.5 °C to 15.9 °C. These climate patterns are essential for understanding agricultural water use in the region.
Figure 3 provides an overview of the conveyance and distribution infrastructure of the Impala Irrigation Scheme. Water is diverted from the Grootdraai Weir into the main canal, which splits into the Impala and Transvaal Canals. The system consists of primary and secondary canals, with siphons at river crossings. Branch canals distribute water to irrigators throughout the scheme. The total length of the canal system is 217 km, of which the majority is concrete-lined, except for 3 km [41].

2.1.1. Climate Variability in the Pongola Hydrological Zone and Its Impact on Agricultural Water Use

The Impala Irrigation Scheme is located in the Pongola Hydrological Zone of KwaZulu-Natal, a region that is highly vulnerable to climate change. According to South Africa’s Department of Forestry, Fisheries, and the Environment (DFFE), climate change poses considerable risks to water resources, food security, and the overall ecosystem of the province [45]. The DFFE [45] further highlighted that vulnerability is compounded by low adaptive capacity and high biophysical sensitivity in the Pongola Hydrological Zone. In response to the concern regarding the lack of information on climate variability, the DFFE [45] provided projections for the Pongola Hydrological Zone, which highlighted notable climate variability that farmers in the area are likely to face in the near future. These projections indicate changes in temperature and rainfall patterns that will directly impact water resources, making it crucial for farmers to adapt their water-use behaviour. Given the expected climate variability in the region, it further underscores the need to understand how changes in climate conditions influence farmers’ decision-making, particularly regarding their intentions to adopt sustainable water management practices.

2.2. Research Design

2.2.1. Sample Selection

The respondents were selected as a sample of farmers in the Impala Irrigation Scheme located in the KwaZulu-Natal Province of South Africa who produce sugarcane under irrigation. Literature suggests that SEM requires at least five observations per measurement item when latent variables include multiple indicators [46,47]. As illustrated in Figure 5, the model includes eight measurement items. Therefore, a minimum of 40 respondents is needed when applying the five observations per measurement item rule. However, the minimum sample size requirement should also consider the statistical power of the estimates [48]. For this reason, we applied Kock and Hadaya’s [49] inverse square root method, which is more tailored to the specific parameters of our SEM model and accounts for the expected path coefficients.
Kock and Hadaya’s [49] inverse square root method considers the probability that the ratio of a path coefficient to its standard error will exceed the critical value of a test statistic at a specific significance level. While Kock and Hadaya’s [49] formula (Equation (1)) specifies P m i n as the minimum path coefficient, we used the average of the minimum path coefficients across studies from Table 1, selected based on their similar model complexity.
The average minimum path coefficient from Table 1 was identified as 0.244. However, instead of using this value directly as input for calculating the required minimum sample size in our study, we followed the recommendation of Hair et al. [48]. According to Hair et al. [48], when limited information about expected effect sizes is available, researchers should consider a range of effect sizes rather than relying on a single value. Table 2 provides a summary of the minimum sample sizes required for different levels of minimum path coefficients ( P m i n ) and significance levels, as outlined by Hair et al. [48].
Hair et al. [48] suggest that when deriving the minimum sample size, it is reasonable to consider the upper boundary of the effect size range, as the inverse square root method is conservative. Given that the minimum average path coefficient from previous literature was identified as 0.244, the corresponding range lies between 0.21 and 0.3 in Table 2. Applying Kock and Hadaya’s [49] inverse square root method (Equation (1)) with the upper-bound P m i n of 0.3, the required minimum sample size was determined to be 51 at a 10% significance level. A 10% significance level was selected for this study, given the exploratory nature of our research and, to the authors’ best knowledge, as it is the first application of the TPB in the context of our study area.
S i g n i f i c a n c e   l e v e l = 10 %   :   n m i n > 2.123 P m i n 2
where n m i n is the minimum sample size required for the analysis and P m i n is the minimum value of the path coefficient in the model. In Equation (1), 2.123 is a constant corresponding to a significance level of 10%.
The population of irrigated sugarcane producers at the Impala Irrigation Scheme is 67, and all members of this population were invited to participate in the study. Only 54 farmers indicated their willingness to participate in the study and were interviewed. This number exceeds the minimum sample size requirement of 51, as determined by the inverse square root method, and represents 80.6% of the study population in the scheme. These participants were subsequently included in the analysis.

2.2.2. Questionnaire Development

The questionnaire was developed from reviewing the previous literature and studies to identify the questions regarding climate change and variability, and also water-use behaviour [27,54,55,56,57]. The reviewed literature and studies were used as a guideline to develop the questionnaire to align with the objectives and requirements of this study. This was done to develop a questionnaire with measurement items relevant and applicable to irrigation farmers within the study area. The questions were developed to measure the behaviour of farmers towards adaptation to climate variability and climate change on their farms. The respondents had to indicate, on a Likert scale, the level to which they agreed with certain statements about their water use and adaptation to climate variability. The questionnaire addressed socio-economic factors (farm, farmer, and household characteristics), as well as measures of farmers’ attitudes, subjective norms, perceived behavioural control, and the intention to adapt to climate variability.
The questionnaire was first evaluated by the project team and reference group members to ensure its relevance and clarity. Following this, a pilot study was conducted in the Orange-Riet Irrigation Scheme in South Africa. Initially, the questionnaire was piloted with the head of the Farmers’ Association of the Orange-Riet Irrigation Scheme. Based on the feedback received, necessary adjustments were made. Subsequently, a second pilot study was conducted with 11 irrigators from the Orange-Riet Irrigation Scheme. The feedback from this second round of piloting further informed final revisions to the questionnaire before the main data collection. The data collection formed part of a Water Research Commission project (Project nr: C2022/2023-00798). The project also received ethical clearance (Ethical clearance nr: UFS-HSD2023/1327).

2.2.3. The Survey

The primary data were collected through face-to-face interviews with farmers in November 2023. These interviews took place at the head office of the Impala Irrigation Scheme in Pongola, KwaZulu-Natal.

2.2.4. Data Processing

The survey data were captured in Excel and exported to SmartPLS 4 software for further analysis. SEM was used through the SmartPLS 4 software to analyse the data and obtain the TPB results for the study. The processing entailed assigning path coefficients and variables to each construct regarding the outcome of their measurement items. These path coefficients for each construct were used to compare the different constructs and how they contributed to irrigation farmers’ intentions to adapt to climate variability. The intended results obtained were used to measure the behaviour of farmers in adapting their farming practices to climate conditions. It assisted in identifying how each construct contributed to the intention of sugarcane producers to adapt to climate variability. The factors that impacted the farmers’ water-use behaviour and decision-making were also identified.

2.3. Theoretical Framework

2.3.1. The Theory of Planned Behaviour

The TPB is a widely used theoretical framework for measuring human behaviour across various fields [58]. Developed by Ajzen [59], the TPB builds on earlier decision-making models, specifically the Theory of Propositional Control and the Theory of Reasoned Action [60]. This socio-psychological model posits that the most substantial predictor of behaviour is a person’s intention to perform it. According to the TPB, three factors influence an individual’s intention: attitude, subjective norms, and perceived behavioural control. The TPB offers a flexible framework adaptable to various behaviours [58].
Figure 4 is a flow diagram that illustrates the core components of the TPB, showing how subjective norms, attitudes, and perceived behavioural control contribute to an individual’s behavioural intention. Subjective norms are shaped by an individual’s normative beliefs, reflecting the influence of others, such as family, friends, and community members, on their decision-making. An individual’s attitude can affect the likelihood of achieving a desired outcome through specific behaviours and beliefs. Additionally, the extent to which a person perceives they have control over a behaviour will influence their intention to engage in that behaviour. Ultimately, these behavioural intentions will determine the actual behaviour performed [56,59].
The TPB is widely used in research to understand farmers’ behaviours and decision-making processes regarding water use, with various studies applying it to assess their perceptions, intentions, and adaptive behaviours [22,29,56,61,62,63]. In the present study, the TPB was employed to assess sugarcane producers’ decision-making regarding their irrigation water use in the context of climate variability. The TPB was identified as the appropriate framework to evaluate the decision-making of farmers and to have a better understanding of their water use behaviour due to the fact that several other studies have applied the TPB in their research and that it was identified as the adequate framework to achieve the objectives of this study.
To analyse the constructs of the TPB, this study focused on four key constructs: attitudes, subjective norms, perceived behavioural control, and behavioural intentions. SEM was employed to assess the relationships between these constructs, specifically examining how attitudes, subjective norms, and perceived behavioural control influence the intentions of sugarcane producers regarding their irrigation water use. The following section discusses the application of SEM in this context to obtain the results related to the TPB.
Figure 4. The TPB core components (source: modified from Pourmand et al. [64]).
Figure 4. The TPB core components (source: modified from Pourmand et al. [64]).
Water 16 03454 g004

2.3.2. Structural Equation Modelling

SEM is a second-generation multivariate data analysis method that can test the theoretically supported linear and additive causal models [56]. SEM is often used in social science to explain and predict the behaviour of an individual or group in a scientific manner. In statistical terms, this model comprises a set of equations with accompanying assumptions about the studied system. Its parameters are inferred through statistical observations [65]. Thus, structural equations denote mathematical expressions using parameters to investigate the relationships between latent constructs and their associations with observable variables (measurement items) [65,66].
The path model estimated using SmartPLS 4 is illustrated in Figure 5. In this study, each construct is measured using two specific items. Attitudes were represented by AB1 and AB2, subjective norms by SN1 and SN2, perceived behavioural control by PBC1 and PBC2, and intentions by INT1 and INT2. Only two measurement items were used per construct, as this study was part of a larger research project that employed a comprehensive questionnaire to collect data. To avoid respondent fatigue, we limited each construct to two measurement items. This decision does not pose a limitation, as SmartPLS 4 is capable of analysing models with as few as one measurement item per construct. The empirical specifications of the TPB and the SEM are indicated in Appendix B, which was specifically developed according to the empirical requirements of the study. Appendix B also provides an overview of the steps followed in assessing the measurement and structural model of our study’s SEM path model. The data used in the SEM analysis to estimate the path coefficients and derive the t-statistics and p-values were exclusively based on the responses to the TPB constructs (attitudes, subjective norms, and perceived behavioural control). The socio-economic and demographic variables collected in the questionnaire were not included in the SEM analysis.
Several approaches can be used for SEM. The first approach is covariance-based SEM (CB-SEM), which uses software such as Analysis of Moments Structures (AMOS version 29) and Linear Structural Relations (LISREL version 9.3). The second approach is component-based SEM, or Generalised Structured Component Analysis (GSCA), implemented through VisualGSCA. The third approach is partial least squares (PLS), which focuses on variance analysis using techniques such as SmartPLS and WarpPLS [56,67]. PLS-SEM is an appropriate alternative to CB-SEM when small sample sizes are used [56]. This study applied the PLS approach using SmartPLS 4 software.
The conceptual framework and path model, as shown in Figure 4 and Figure 5, were employed to test the study’s hypotheses. These hypotheses were developed based on the research objective, which seeks to understand the factors influencing commercial sugarcane producers’ intentions to adapt to climate variability. The specific hypotheses are as follows:
Hypothesis 1 (H1): 
There is a positive and significant relationship between attitude and the intention of commercial sugarcane producers to adapt to climate variability.
Hypothesis 2 (H2): 
There is a positive and significant relationship between subjective norms and the intention of commercial sugarcane producers to adapt to climate variability.
Hypothesis 3 (H3): 
There is a positive and significant relationship between perceived behavioural control and the intention of commercial sugarcane producers to adapt to climate variability.

3. Results

3.1. Socio-Economic Characteristics

This section provides an overview of the socio-economic characteristics of the respondents, focusing on three key aspects: demographic characteristics (Table 3), household characteristics (Table 4), and farm characteristics (Table 5).

3.1.1. Demographic Characteristics of Respondents

The respondent demographic profile is shown in Table 3. All respondents (100%) identified as male, indicating a male-dominated demographic in this study. The age distribution shows that 33% of respondents were 61 years or older, with notable representation in the 41–50 years (30%) and 51–60 years (24%) age brackets. Notably, younger individuals (under 30) were not represented. Only 30% of respondents completed secondary education, while the majority have attained higher qualifications, with 37% holding diplomas and 33% obtaining undergraduate degrees. Health levels are largely positive, with 54% rating their health as good and 33% as excellent.

3.1.2. Household Characteristics

Table 4 presents the household characteristics of respondents within the Impala Irrigation Scheme. A great majority (76%) of households comprise two adults aged 18 and older, indicating a tendency towards smaller household sizes. The total number of individuals living in these households shows that 46% have two members, while 32% have four or more, suggesting a mix of small and slightly larger families. All respondents reported that the head of their household is male. Regarding involvement in farming, 59% of households reported that only one person is engaged in farming activities, and 33% have two people involved. Most heads of households are married (94%), indicating a stable demographic. The age distribution of household heads shows that 37% are 61 years or older. Additionally, 87% of respondents indicated that farming or agricultural activities are their main source of income, highlighting the importance of agriculture in the local economy. This is further supported by the fact that 65% of respondents reported having no off-farm income, indicating that many families depend solely on their agricultural earnings.

3.1.3. Farm Characteristics

The farming characteristics of the respondents are summarized in Table 5. A substantial majority, 70%, report using canal water as their primary source for irrigation. In contrast, reliance on river (6%) and dam water (7%) is minimal, with only a small percentage indicating the use of combined water sources. In terms of farming activities, crop production is the predominant focus, with 82% of respondents engaged in this practice. Notably, there are no respondents dedicated exclusively to livestock production, while 18% practice mixed farming. Regarding land ownership, 50% of respondents own between two and five agricultural land deeds, while 43% own more than five deeds. Moreover, 80% of respondents identify as sole owners of their land, reflecting a preference for individual ownership over leasing arrangements. The distance of farmland from water sources is also noteworthy, with 70% of respondents indicating that their main irrigation land is located less than 1 km from the water source. Finally, the organizational structure of farming operations varies, with 39% operating as corporations and 41% as trusts.

3.2. Empirical Results

3.2.1. Theory of Planned Behaviour

This section presents certain key findings from the assessment of the measurement and structural models, as outlined in Appendix B.3. A comprehensive overview of the results of the measurement and structural model assessment is provided in Appendix C. Figure 6 presents the standardised estimates of the model. The estimates were analysed to evaluate the adequacy of the measurement model, ensuring that the constructs accurately reflect the underlying theoretical concepts. After the analysis for the measurement model was completed, the structural model analysis was conducted, as discussed in the next section.

3.2.2. Structural Model Assessment and Reporting of the TPB and SEM Results

The bootstrapping estimates presented in Figure 7 were obtained using SmartPLS 4 software with 5000 resamples and the percentile method to determine 90% confidence intervals at a 10% significance level. The bootstrapping procedure was performed with the ‘Complete (slower)’ setting, the test type set to ‘two-tailed’, and confidence intervals were constructed by evaluating the lower 5% and upper 95% percentiles of the distribution. Path coefficients (β) were used to assess the significance of the hypotheses, with coefficients having p-values ≤0.10 considered significant, as this study is exploratory in nature. Figure 7 presents the path coefficients and p-values for the bootstrapping calculations. All factor loadings were significant, indicating that they met the inclusion criteria, as shown in Figure 7.
Table 6 illustrates the path coefficients, the sample mean, standard deviation, t-statistics, and p-values obtained from the bootstrapping procedure. The results show that subjective norms significantly affect the intention to adapt to climate variability (p < 0.10). Similarly, attitude significantly affects intention (p < 0.10). Interestingly, the results show that perceived behavioural control does not significantly affect intention (p > 0.10).
Table 7 presents the R-squared (R²) and adjusted R² results, along with their t-statistics and p-values. The R² value refers to the coefficient of determination calculated as the squared correlation between the model’s predicted and observed values for the endogenous construct, intention [48]. The results show that the R² (0.276) of intention was significant at a 0.01 significance level for both the t-statistic and p-value. The t-statistic (2.758) of R² was greater than 2.57, and the p-value (0.006) of R² was smaller than 0.01. The results show that the adjusted R² (0.233) of intention was significant at a 0.05 significance level for both the t-statistic and p-value. The t-statistic (2.193) of R² was greater than 1.96, and the p-value (0.028) of R² was smaller than 0.05. According to Anjum et al. [68], an adjusted R² value greater than 0.20 is deemed high in behavioural studies. Thus, the adjusted R² result obtained for this study was in accordance with the literature.
The estimated standard root mean square residual of 0.093 is less than 0.1, which suggests that the model is a good fit, as highlighted by Mahdavi [56], and can be used to assess the relationships between the four constructs. The measurement and structural model assessment discussed above provided a comprehensive overview of the procedures followed to obtain the results for the study in SmartPLS 4 software. Next follows a discussion of the results to put the findings into context.

4. Discussion on TPB and SEM

This section provides a detailed analysis of the TPB constructs, including attitude, subjective norms, perceived behavioural control, and intention, using the SEM procedure. Socio-economic characteristics were collected to describe the respondents and provide context, but were not part of the formal analysis and would, therefore, not be included in the discussion. Each TPB construct is discussed individually, with comparisons drawn to the relevant literature in agricultural studies. The study’s hypotheses are examined to determine whether they were supported or rejected, and the findings are compared with other studies on climate-related behaviour and agricultural research.

4.1. Attitude

A farmer’s attitude can positively or negatively affect their behaviour. The extent to which a farmer perceives that climate variability will specifically influence their intention and behaviour to adapt (H1, as indicated in the Section 2).
The results for the path coefficient, t-statistic, and p-value for attitude are presented in Table 6. The path coefficient value of 0.349 (p < 0.1) indicates a positive and significant relationship between attitude and the intention to adapt to climate variability. Consequently, if attitude increases by one standard deviation, the intention to adapt to climate variability is expected to increase by 0.349 standard deviations, assuming all other variables in the model are held constant. Sugarcane farmers with a positive attitude towards climate variability are significantly more likely to adopt strategies to withstand the effects of variable climate conditions. A positive attitude in this context means they are open to change and willing to take action to cope with climate variability. Thus, based on the results presented for attitude, H1 was accepted, meaning that a sugarcane farmer’s attitude will substantially affect the intention to adapt to climate variability.
The positive and significant effect of attitudes on farmers’ intention to adapt to climate variability aligns with the findings of similar studies within agriculture. Arunrat et al. [61] found that attitude had a path coefficient of 0.352 for farmers’ intention to adapt to climate change, aligning with the positive relationship findings of this study. Farmers’ attitudes towards climate adaptation could be influenced by their previous experiences and risks, for example, droughts and flooding, which would drive them to implement new farming practices [62]. Zhang et al. [62] found that attitude had a coefficient of 0.384 in climate adaptation, indicating a positive relationship. According to Wheeler et al. [69], farmers exposed to risks (higher debt, fluctuations in rainfall, and temperature) are more likely to have a behavioural attitude acknowledging that climate is a substantial risk for their agricultural production.
It has been found that the structure of survey questions could influence farmers’ attitudes towards the climate. Thus, farmers are more likely to agree with statements that indicate that variability in climate conditions is occurring rather than that human actions are to blame for climate change [70]. The perception of sugarcane farmers about climate conditions could lead to an intention for them to adapt, as their attitude had a positive relationship with intention. Jellason et al. [71] found that when the determinants of attitude were significant, they caused intentions to adapt to climate change. Farmers with negative attitudes towards climate are subsequently less likely to change their farming practices [72]. Furthermore, the ability to access climate information, membership in social groups, and previous experiences of adverse climate conditions would positively affect the attitude of farmers when referring to climate variability adaptation.
The studies discussed above indicate that farmers’ attitudes play a significant role in shaping their intentions to adopt certain behaviours. The attitude of farmers could drive their intentions towards making the necessary adaptations to climate variability. However, it will ultimately depend on their view of specific behaviours, such as those related to climate. This implies that there must be efforts to enhance farmers’ attitudes towards climate adaptations, which would increase their intention to implement adaptive measures. This will promote and contribute to more resilient agricultural practices and improve the water-use behaviour of commercial sugarcane farmers. The next section elaborates on the findings about subjective norms as a driver of a farmer’s intention to adapt to climate variability.

4.2. Subjective Norms

The engagement of a farmer in a specific behaviour could be impacted by the social context in which they produce sugarcane. The social pressure that a farmer experiences contributes to their intention to adapt to climate variability (H2, as indicated in the Section 2).
The results for the path coefficient, t-statistic, and p-value for subjective norms are presented in Table 4. The path coefficient value of 0.281 (p < 0.05) indicates a positive and significant relationship between subjective norms and the intention to adapt to climate variability. Thus, if subjective norms increase by one standard deviation, the intention to adapt to climate variability is expected to increase by 0.281 standard deviations, assuming all other variables in the model are held constant. Sugarcane farmers who experience social pressure towards adapting to climate variability are more likely to implement such strategies. Thus, H2 was accepted, indicating that subjective norms would substantially affect sugarcane producers’ intention to adapt to climate variability in the Impala Irrigation Scheme.
The results showed that subjective norms have a positive relationship with the intention of sugarcane farmers to adapt to climate variability. Multiple studies also found that subjective norms positively and significantly affected the intention to adapt to climate conditions. In the study of Zhang et al. [62], the path coefficient of subjective norms (0.285) was very close to the results found in this study (0.281), showing a very similar outcome. The study area investigated by Zhang et al. [62] relates to the location identified for this study, as both regions have a subtropical climate, explaining why the results are almost similar. The findings of Arunrat et al. [61] about subjective norms (0.258) showed a significant relationship between them and farmers’ intention to adapt to climate change. Nguyen and Drakou [73] also identified a significantly positive relationship between subjective norms and the intention to adapt, with a path coefficient of 0.47.
The study by Jellason et al. [71] revealed contrasting effects of subjective norms on the intention to adapt to climate change, depending on the study area. In one area, subjective norms had a significant positive effect (0.60), whereas in another, the relationship was positive but insignificant (0.31). While our study aligns with other research that shows a positive relationship between subjective norms and the intention to adapt, such as those by Zhang et al. [62] and Arunrat et al. [61], the findings of Jellason et al. [71] underscore the need to account for contextual factors when assessing behavioural intentions. Overall, our results, which show a significant positive effect of subjective norms, are consistent with the majority of studies in the field, emphasizing the importance of social pressure in the decision-making processes of sugarcane farmers in the Impala Irrigation Scheme.
The literature supported our findings that subjective norms substantially affected this study’s participants’ intention to adapt to climate variability. The social environment sugarcane farmers experience will thus play a role in adapting to climate variability. The social pressure on sugarcane farmers could subsequently determine their water-use behaviour. This finding suggests that social influences, such as the opinions of important others (family, friends, community leaders) or societal expectations, play a major role in shaping individuals’ intentions to adapt to climate change. Efforts to increase the intention to adapt to climate change could benefit from strategies that strengthen positive subjective norms, such as promoting social approval or endorsing adaptive behaviours.

4.3. Perceived Behavioural Control

The adoption of water-use behaviour by farmers is affected by how they perceive having a level of control over it. If farmers think they have influence over a specific water-use behaviour, they would be more encouraged to have intentions to adopt a particular behaviour (H3, as indicated in the Material and Methods Section 2).
The findings for the path coefficient, t-statistic, and p-value for perceived behavioural control are presented in Table 4. The path coefficient value of 0.051 indicates a slightly positive but insignificant (p > 0.1) relationship between perceived behavioural control and the intention to adapt to climate variability. This suggests that sugarcane producers’ perception of their ability to adapt to climate variability does not significantly influence their intention to adopt climate adaptation strategies.
The results showed that perceived behavioural control is the only construct that does not substantially influence sugarcane farmers’ intentions to adapt to climate variability. These findings are related to only a few other studies regarding perceived behavioural control because they also found insignificant results. Jellason et al. [71] investigated behaviour in two different study areas. They found that perceived behavioural control was insignificant in predicting both study areas’ intentions to adapt to climate change. These insignificant findings may suggest that the farmers in the Impala Irrigation Scheme feel they do not have a substantial degree of influence on their water-use behaviour. The sugarcane producers did not have substantial intentions to adapt against climate variability and perceived themselves as having a low level of behavioural control over climate conditions.
Numerous other studies, however, found that farmers had a significant intention to adapt to climate conditions. Arunrat et al. [61] found that PBC (0.503) significantly and positively affected the intention of farmers to adapt to climate conditions. Nguyen and Drakou [73] reported similar results, with their perceived behavioural control path coefficient of 0.510 indicating a positive and significant effect on intention. Renita and Anindita [74] added that perceived behavioural control had a significantly positive impact on the intentions of farmers to adapt, with a coefficient of 0.27. Lastly, Zhang et al. [62] discovered that PBC (0.183) was a major determinant of intention. Therefore, it can be concluded that results from various water-use behaviour studies regarding adaptation to climate change could have either significant or insignificant outcomes, depending on the perceived control of farmers.
The literature showed that most water-use behaviour studies reported a significant relationship between perceived behavioural control and intention. This study’s findings indicated an insignificant relationship, which showed that sugarcane farmers in the Impala Irrigation Scheme were not perceived to be likely to adapt to climate variability. The following section discusses the intention to adapt to climate variability.

4.4. Intention

The intention of farmers could be expressed as the degree to which they plan to perform and implement a specific behaviour. Numerous factors contributed to the water-use behaviour of sugarcane producers in the Impala Irrigation Scheme. As the results indicated, attitudes and subjective norms had a significant and positive relationship with the intention of sugarcane farmers to adapt to climate variability, with perceived behavioural control showing insignificant outcomes.
Table 5 shows the R² value as 0.276, with a t-statistic of 2.758 and a p-value of 0.006. R² is the value of the determination coefficient, measuring the proportion of the variance in the dependent variable predicted by the independent variables [62,75]. The R² found in this study indicated that 27.6% of the explained variance in the intention to adapt to climate variability among sugarcane farmers was explained by the independent variables in the model. The adjusted R², which accounts for the number of predictors in the model, was lower, at 23.3%, reflecting a slight penalty for model complexity. The adjusted R² was not discussed in detail, as the difference between R² and adjusted R² was minimal and did not substantially alter the explanatory power of the model. The predictive accuracy for the R² can be classified as moderate [75].
These results are consistent with findings from other water-use behaviour studies. The study by Zhang et al. [62] found an R² value of 0.421 for adaptation behaviours to climate change, indicating a moderate relationship. Arunrat et al. [61] reported an R² value of 0.518 for the intention of farmers to adapt to climate change, which was a moderate to strong relationship between the independent variables and the intention to adapt to climate change. A moderate R² value indicates that other factors may affect the adaptive intentions of sugarcane farmers in the Impala Irrigation Scheme, which can be a limitation of this study.
Usman et al. [76] found that the adaptation measures implemented by farmers were affected by various socio-economic, demographic, and agronomic factors. They included factors such as age, farming experience, education, access to credit, and climate information. The findings of Dang et al. [77] correlate with the factors mentioned because they found that access to agricultural extension, credit, and better technologies substantially affect farmers’ adaptation to climate change. Trinh et al. [78] reported that training for climate change, farm size, farming experience, access to credit, and education affected farmers’ adaptation to climate change. Lastly, Michalak [79] indicated several problems in adapting to climate change. The lack of awareness of climate change and inadequate methods to use water were some of the issues farmers faced in effectively managing water resources.
Sugarcane producers in the Impala Irrigation Scheme may face some of the factors mentioned, explaining only a moderate relationship between attitudes, subjective norms, and perceived control and farmers’ intention to adapt to climate change. A better understanding of the influence of these factors on farmers’ water-use behaviour is essential.

4.5. Sample Size Considerations and Validity

The sample size for this study was determined prospectively using the inverse square root method based on an average of the smallest path coefficients from prior studies with similar models. This approach recommended a minimum sample size of 51 respondents. However, when using the smallest path coefficient from our own results (0.051 for the relationship between perceived behavioural control and intentions), the inverse square root method suggests that a sample size of 451 is needed at the 10% significance level. In light of this, it is important to note that while the sample size required based on our own results is larger than our actual sample size of 54, Rigdon [80] argues that PLS-SEM can still be effectively used when the population is finite and additional data are not available. Rigdon [80] emphasizes that the generalisability of results in such cases is limited to the specific population being studied. In our case, the sample of 54 farmers is drawn from a finite population of 67 sugarcane farmers, and while the sample size may be smaller than typically recommended for generalising findings to a larger population, the findings remain valid and meaningful within the context of the Impala Irrigation Scheme.

5. Conclusions

Agriculture is vital to South Africa’s economy, yet it remains the largest consumer of freshwater resources, raising concerns about the efficiency and sustainability of water use. Given that agricultural producers are the primary water users, understanding how climate variability impacts their water-use behaviour is essential. This study addresses a research gap by examining how climate variability influences the intentions of commercial sugarcane irrigators in the Impala Irrigation Scheme to adapt their water-use behaviour in response to climate variability, using the TPB and formalizing it in SEM.
This study demonstrates that attitudes and subjective norms significantly influence sugarcane irrigators’ intentions to adapt their water-use practices in response to climate variability, while perceived behavioural control does not. The findings suggest that efforts to promote adaptive behaviour among sugarcane irrigators should focus on strengthening positive attitudes and social norms. These insights can assist policymakers and stakeholders within the Impala Irrigation Scheme in supporting sugarcane farmers’ adaptation to climate variability.
This study contributes to the theoretical application of the TPB in agriculture and highlights the importance of psychological factors in shaping farmers’ adaptive behaviours. From a practical standpoint, improving water-use behaviour among sugarcane producers in the Impala Irrigation Scheme requires targeted educational initiatives to enhance farmers’ knowledge about climate variability. Additionally, increasing access to financial resources and accurate climate information is essential for informed decision-making.
Stakeholder involvement in supporting water-use practices is essential for helping farmers adapt. Policymakers should focus on developing strategies that facilitate access to improved technologies and sustainable practices. Addressing these areas will improve the adaptive capacity of sugarcane producers in the Impala Irrigation Scheme.
Our study is not without limitations. The primary limitation is that we applied the standard TPB model, focusing only on its four core constructs (attitudes, subjective norms, perceived behavioural control, and intention). This approach excludes other factors that could influence farmers’ adaptive behaviour. The study focused on adaptation to climate variability, without exploring other water-use behaviours such as technology adoption or conservation practices. Furthermore, the generalisability of the findings is limited to the specific context of the Impala Irrigation Scheme, given the finite nature of the sample (67 farmers). The results should be interpreted as relevant to this population and may not be applicable to other irrigation schemes or broader farming populations.
Future research could expand the TPB model by incorporating additional constructs to gain a broader understanding of adaptive behaviours. Additionally, exploring how the constructs within the TPB interact and influence each other could provide deeper insights into the dynamics that shape irrigators’ adoption of water-saving behaviours. Future studies could also investigate other water-use behaviours, such as conservation practices and the adoption of water-saving policies.

Author Contributions

All authors extensively contributed to the preparation of the present paper. Y.T.B., H.J. and M.A.M. were supervisors of H.C.K. M.A.M. was involved in data curation, formal analysis, methodology, software, validation, and visualisation, and aided in refining the final version of the paper and attending to most of the reviewers’ comments. H.C.K. was involved in data curation, formal analysis, methodology, software, and writing of the first draft. Y.T.B. was involved in conceptualisation, funding acquisition, methodology, project administration, resource validation, and visualisation, and aided in refining the final version of the paper. H.J. was involved in methodology, validation, and visualisation, and aided in refining the final version of the paper. All authors have read and agreed to the published version of the manuscript.

Funding

The study is part of the big project entitled “Assessing the social and economic impact of changed water use behaviour in selected production and irrigation scheme in South Africa”, funded by the Water Research Commission (WRC) of South Africa (Project Number: C20222023-00798).

Data Availability Statement

Data are available is at the reasonable request of correspondence author Henry Jordaan.

Acknowledgments

We acknowledge and thank the Water Research Commission (WRC) of South Africa for supporting this research.

Conflicts of Interest

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Appendix A

Table A1. Summary of similar studies (source: authors’ compilation).
Table A1. Summary of similar studies (source: authors’ compilation).
Author/sObjectivesMethods and DataFindings
Mahdavi [56]The study identified the policies that farmers support for using less water for agricultural purposes.A survey was used to obtain the data designed using a literature review. SEM was used to create structures derived from the TPB.A separate model for each policy was employed and showed that attitudes, perceived behavioural control, and subjective norms have a positive and significant effect on the intention of a farmer. The factors that had the most substantial impact on intention were attitude and perceived behavioural control. This research also found that the variance explained was over 85% for intentions and 42% for farmers’ behaviour on the water policy options.
Castillo et al. [63]The study proposed a socio-psychological model based on the TPB and social capital variables.The information was gathered through a cross-sectional survey. The questionnaire used a five-point Likert scale. A socio-psychological model, the TPB, and SEM were used to evaluate data.The findings demonstrated that intention directly influences adaptation, and that intention mediates the effects of attitudes, perceived control, and subjective norms on adoption. The farmers are subject to significant social pressure, which has a negative impact.
Yuan et al. [30]The study explored how farmers’ behaviour traits influence the crops they choose, the effectiveness of strategies for water management, and how their crop choices affect water use, crop yields, and patterns.Data were gathered from several sources at the study site. They included agronomic data, economic data, historical meteorological data, and institutional data. An agent-based model was used for the study.This study found that farmers who identify as Type 1 (adventurous in outlook and high intolerance) favour high-profit crops and are, therefore, more likely to follow a single cropping pattern and use more water. Type 2 farmers (low tolerance levels and wary perceptions) prefer steady crop profits. They are more likely to combine cropping patterns with lower profits and water consumption. Type 2 farmers are less responsive to variations in irrigation efficiency and water permit volume than Type 1 farmers.
Tama et al. [47]The study’s objective was to add two additional constructs to the TPB model and create an extended model.A sequential multi-stage sampling technique was used to collect data in the study area and sample households. A structured questionnaire was used to collect data from participants. An extended TPB model and SEM were used.Compared to the conventional variables of the TPB model, the results showed that the extended model explained 7% more of the variation in intention. It was also discovered that knowledge had the most significant overall impact on farmers, and attitude had the most immediate effect on intention. The results further found a positive significance for every variable in the extended model when farmers’ intentions were evaluated for adopting conservation agriculture.
Talanow et al. [19]This study assessed how farmers view climate change, what factors influence their risk perception and adaptive behaviour, and what adaptation methods they apply.Semi-structured interviews and MaxQDA software were used.According to the study, farmers were aware of long-term climatic changes, including variations in rainfall and temperature rises. Farmers’ adaptation behaviour was impacted by their intrinsic characteristics and prior climatic experience. They discovered that farmers used adaptable techniques on their farms but were planning less for the future.
Arunat et al. [61]Their research explored farmers’ adaptation plans and decisions.The data in this study were collected through face-to-face field surveys. Logistic regression models and the TPB were used to analyse the data.The findings demonstrated that farmers’ views and short-term weather data were in agreement, indicating rising temperatures and declining precipitation. The socio-economic considerations statistically increased the likelihood that farmers would adapt. Farmers’ perceptions of behavioural control, followed by attitudes and subjective norms, were the key factors influencing their intention to adapt. Farmers’ willingness to adjust to changing climate conditions was favourably impacted by farm income and the accessibility of instruction and training on climate change, its impacts, and adaptation techniques.
Mitter et al. [27]The study examined farmers’ perceptions of climate change and adaptation and how socio-environmental factors affect their intention to adapt to it and avoid it.They built on the Model of Private Proactive Adaption to Climate Change and used qualitative interviews in the two study areas.According to their findings, farmers only have adaptive intentions if they are aware of realistic steps, acknowledge individual accountability for their property, and favourably estimate adaptation costs. Farm and regional factors are considered relevant to farmers but less important than the climate change appraisal. The study found that strategies and efforts to address risks and opportunities are insufficient; farmers should be more responsible, and adaptive measures should be offered to meet their needs.
Niles et al. [29]The study explored how farmers’ views and actual adaptation to climate change varied.The data were gathered using qualitative, semi-structured interviews. Multiple regression models and the TPB were used.The study found that different factors drive the intended versus actual adaptation to climate change. The attitudes and beliefs about climate change can only be associated with planned adaptation. Also, subjective norms do not particularly affect the intention or actual adaptation, and the only significant predictions for adaptation were perceived capacity and self-efficacy.
Zhang et al. [62]The study’s objective was to explore the predictive ability of the TPB and values/beliefs/norms regarding the behaviour of rice farmers towards climate change adaptation and mitigation.The data were obtained through questionnaires using multi-stage random sampling. The TPB, values/beliefs/norms theory, and partial least squares structural equation modelling were used.The results for the TPB showed that behavioural intentions and perceived behavioural control constituted 42.1% of the adaptive behaviour of farmers and 25.6% of mitigation behaviour. The value-belief-norm theory showed that personal norms explain 54.2% of the mitigation behaviour of farmers. For adaptive behaviour, it was 28.4%. Thus, the TPB was better at predicting adaptive behaviour, such as climate change adaptation, whereas the values/beliefs/norms theory was more successful at explaining the mitigation behaviours.
Tshikovhi and Van Wyk [38]The objective was to examine the effect of the increase in climate variability on the food production of South Africa, with the primary focus on wheat and maize yields.The study used secondary data for temperature and precipitation—a two-way fixed effects panel regression model. Crop yield statistics were analysed using a quantitative research methodology.According to the study’s findings, South Africa’s production of wheat and maize was negatively impacted by increased climate unpredictability. The outcomes also showed a negative association between the yields of both crops and the yearly average temperature. Reduced precipitation had an adverse effect on maize yield, whereas it had a positive but insignificant effect on wheat yields. The study strongly emphasised supporting programmes that inform farmers about how rising climate variability affects farming operations nationwide.
Savari et al. [67]The study aimed to assess the variables affecting farmers’ water conservation behaviour.The study used a questionnaire that consisted of two sections. The norm activation model and SEM were used to process the data.According to the findings, the initial norm activation model explained 0.301% of the variation in farmers’ water-saving practices. The water conservation practices of farmers were significantly impacted by each of the nine basic norm activation model structures. Incorporating the environmental concern variable increased the model’s ability to explain farmers’ water conservation behaviour by 16.5%.
Abid et al. [28]This study assessed farmers’ beliefs and perceptions about climate change, the trends observed in climate conditions, and the relationship between the adaptation stages: perceptions, intentions, and adaptation.The study used cross-sectional farm data and historical data on climate. A multi-stage sampling technique was employed to select the farmers for the interviews. A multivariate probit model was used to obtain the research results.The study’s results indicated that the perception of farmers observing increasing average temperatures matches the local climate records. However, a discrepancy existed between the farmers’ perception of rainfall changes and local climate data. It also found that elements such as experience, education, land tenure, and access to weather data influence the three adaptation stages; a strong correlation was found between them.
Notes: The gap in the current knowledge was identified by reviewing and synthesising the abovementioned similar studies. It is evident that many studies use the TPB as it is an effective and efficient way to determine farmers’ behaviour. The TPB consists of three constructs: perceived behavioural control, subjective norms, and attitude. These constructs measure factors that affect the intention and behaviour of farmers to adapt their farming practices to use water more conservatively amid climate change and variability in weather patterns. SEM is often used to derive the constructs of the TPB. Thus, from the related and similar studies, one can derive the importance of measuring the water-use behaviour of farmers while taking the impact of climate variability into account to measure the intentions and perception of farmers in the Impala Irrigation Scheme to adapt their production patterns for sugarcane to sustainability use scarce water resources. These studies have evaluated water-use behaviour and climate variability but have yet to assess the impact of climate variability on the water-use behaviour of sugarcane farmers in South Africa. This study will contribute to knowledge by better understanding the decision-making of commercial sugarcane farmers in relation to climate variability.

Appendix B

Appendix B.1. General Theoretical Framework and Empirical Specification of the Theory of Planned Behaviour (TPB)

This section outlines the general theoretical and empirical specification of the Theory of Planned Behaviour (TPB), as illustrated in Figure 4, presenting its key constructs and their relationships without reference to specific measurement items.

Appendix B.1.1. Attitude

An individual’s attitude can be described as the degree to which they see an action favourably or unfavourably, and it can be seen as behavioural beliefs [59]. For Mahdavi [56], attitude could be seen as the farmers’ level of interest in a potential change to a specific policy or measure. Attitude can be expressed mathematically as
A B = i n b i e i
where A B represents an individual’s attitude towards performing the behaviour. b i denotes the personal belief about the probability of the object possessing the i -th attribute, while e i refers to the personal evaluation of the i -th attribute. Finally, n is the total number of attributes considered.

Appendix B.1.2. Subjective Norms

Subjective norms are the social pressure to engage in a particular behaviour or refrain from doing so [59]. The degree of social pressure on an individual to accept a given policy by crucial role players can be defined as subjective norms [56]. Subjective norms can be expressed mathematically as
S N = i n n i m i
where S N represents the subjective norm related to performing the behaviour. n i denotes the strength of each normative belief regarding referent i , and m i refers to the motivation to comply with referent i . Lastly, n is the total number of referents considered.

Appendix B.1.3. Perceived Behavioural Control

Ajzen [59] stated that perceived behavioural control could be the ease or difficulty an individual has in performing the behaviour. Individuals are more likely to have good intentions and engage in a behaviour when they believe they have substantial control over it. Conversely, suppose individuals feel they have limited control over a behaviour. In that case, they may be less likely to intend to do it or not. Perceived behavioural control can be expressed mathematically as
P B C = i n c i p i
where P B C represents perceived behavioural control. c i denotes the perceived occurrence of factor i , and p i refers to the perceived power of control over factor i . Finally, n is the total number of factors considered.

Appendix B.1.4. Intention

An individual’s intention can be defined as the motivation to perform a given behaviour. An individual will be more likely to perform a behaviour if they have a substantial intention to engage [59]. Intention can be expressed mathematically as
I N T = i n t i o i
where I N T represents the intention to perform the behaviour. t i denotes the intention to comply with indicator i , and o i refers to the extent to which the intention is driven by indicator iii. Finally, n is the total number of indicators considered.

Appendix B.1.5. Behavioural Intention

The TPB states that the four constructs (attitude, subjective norms, perceived behavioural control, and intention) could lead to the formulation of behavioural intention because it drives the intention of an individual to perform a given behaviour, which could be expressed mathematically as
B = B I = A B w A B + S N w S N + P B C w P B C
where B represents the behaviour of interest, and B I is an individual’s behavioural intention. A B denotes an individual’s attitude towards performing the behaviour, S N refers to the subjective norm related to performing the behaviour, and P B C represents perceived behavioural control. Additionally, w A B , w S N , and w P B C are the relative weights of A B , S N , and P B C , respectively.
Equation (A5) shows that behaviour is a function of the individual’s intention to engage in the behaviour of interest. In turn, the individual’s intention depends on their attitude towards engaging in the behaviour, their impression of how the crucial role players would want them to behave, and the degree to which they feel they have control over the behaviour. The direct and indirect effects of perceived behavioural control on behaviour are due to intentions.

Appendix B.2. Empirical Specification of the TPB Model in the Scope of This Study Using Structural Equation Modelling (SEM)

This section provides the empirical specification of the Theory of Planned Behaviour (TPB) model as applied in this study. Specifically, it outlines how the latent constructs of attitudes (AB), subjective norms (SN), perceived behavioural control (PBC), and intentions (INT) are measured using dedicated measurement items. The measurement model specifies how well the observed variables reflect their corresponding latent constructs, while the structural model captures the causal relationships between these latent variables in predicting behaviour. The empirical specifications of the TPB model, including the relevant measurement items for each latent construct, are presented below.

Appendix B.2.1. Attitude

A B 1 = β 1 × A B + ε 1
A B 2 = β 2 × A B + ε 2
where A B represents an individual’s attitude towards performing the behaviour. The observed variables, A B 1 and A B 2 , are measured with factor loadings β 1 and β 2 , representing the strength of their relationships with the latent construct A B . The error terms ε 1 and ε 2 account for the unexplained variance in A B 1 and A B 2 .

Appendix B.2.2. Subjective Norms

S N 1 = β 3 × S N + ε 3
S N 2 = β 4 × S N + ε 4
In this study, S N refers to subjective norms related to performing the behaviour. The observed variables, S N 1 and S N 2 , are measured by their factor loadings β 3 and β 4 , respectively, which represent the strength of their relationships with the latent construct S N . The error terms ε 3 and ε 4 capture the unexplained variance for the observed variables S N 1 and S N 2 .

Appendix B.2.3. Perceived Behavioural Control

P B C 1 = β 5 × P B C + ε 5
P B C 2 = β 6 × P B C + ε 6
Perceived behavioural control ( P B C ) is captured through two observed variables, P B C 1 and P B C 2 , each linked to the latent construct P B C by factor loadings β 5 and β 6 . These factor loadings reflect the strength of the relationships between the observed variables and the construct. The error terms ε 5 and ε 6 account for any unexplained variance in P B C 1 and P B C 2 , respectively.

Appendix B.2.4. Intention

I N T 1 = β 7 × I N T + ε 7
I N T 2 = β 8 × I N T + ε 8
Behavioural intention ( I N T ) is represented by two observed variables, I N T 1 and I N T 2 , each associated with the latent construct I N T through factor loadings β 7 and β 8 . These factor loadings indicate the strength of the relationships between the observed variables and the latent construct. The error terms ε 7 and ε 8 capture the unexplained variance in I N T 1 and I N T 2 , respectively.

Appendix B.2.5. The Structural Equation of Intention

I N T = β A B × A B + β S N × S N + β P B C × P B C + ζ 1
I N T represents an individual’s behavioural intention. The latent construct A B denotes the individual’s attitude towards the behaviour, with β indicating the path coefficient that reflects the strength and direction of its relationship with I N T . Similarly, S N represents the subjective norm, while P B C refers to perceived behavioural control, both accompanied by their respective path coefficients ( β ), indicating the strength and direction of their relationships with I N T . Finally, ζ 1 signifies the error term associated with intention ( I N T ).

Appendix B.3. Procedures for Analysing the Measurement and Structural Models

The SEM analysis followed a structured approach, applying the steps outlined by Basbeth et al. [81] and Hair et al. [48]. These steps ensured a comprehensive evaluation of both the measurement and structural models, providing a robust framework for assessing the relationships between latent constructs and observed variables in this study.

Appendix B.3.1. Data Cleaning

The first step entailed cleaning the data to ensure that all the data within the Excel data set were correct before analysing it in SmartPLS 4 software. All data fields must be complete and defined to ensure that the data for each construct are accurate. Following data cleaning, we assessed multicollinearity by calculating the Variance Inflation Factor (VIF) for both the inner (structural) and outer (measurement) model constructs to ensure the independence of variables. All VIF values were below the recommended threshold of 3, as suggested by Hair et al. [48]. This not only confirms acceptable levels of multicollinearity but also suggests that common method bias (CMB) is unlikely to be an issue in this study, given that the VIF values of the inner model were all below 3.

Appendix B.3.2. Identify the Structural Model and Calculate the Estimates

The second step involved identifying the structural model in SmartPLS 4 software. The Excel data set was imported into SmartPLS 4 software, creating a new project (data set). The data fields were adjusted to ordinal, with the minimum set to one and the maximum set to five, as the data were captured from the Likert scale questionnaires. After this, the model was created in the software. The constructs in the data set were imported into the SmartPLS interface, and then the structural paths were drawn. The measurement items were linked to the constructs within the data set. The structural paths were drawn between the independent and dependent variables to obtain the calculated estimates. The calculated estimates were subsequently assessed to ensure the model was reliable and valid.

Appendix B.3.3. Measurement Model Assessment

In this step, the reliability and validity of the measurement model for the constructs of the TPB were evaluated. This step was followed in SmartPLS software, and the measurement model was analysed to assess the factor loadings and the model fit. The reliability and validity of the constructs were tested through construct reliability and validity and discriminatory validity. The construct reliability and validity were assessed by analysing the factor loadings, Cronbach’s alpha, and average variance extracted (AVE). The discriminant validity was evaluated by examining the cross-loadings and heterotrait–monotrait ratio [48,81]. If all of the measurement model indicators are satisfactory, then the structural model can be assessed.

Appendix B.3.4. Structural Model Assessment and Reporting of the TPB and SEM Results

This step was the last step of the SEM analysis procedure. The structural model assessment was done through the collinearity statistics (VIF) for the inner model, which assessed for any collinearity issues. If there are no collinearity issues, then the results of the TPB and SEM can be reported. This was done by examining the path coefficients and the significance of the coefficients and the factor loadings (through the bootstrapping technique). The model fit was assessed through the standard root mean square residual [48,81]. After completing all the steps and evaluating the model fit, the results can be discussed for the TPB and SEM. The results for the TPB constructs were subsequently obtained by conducting the whole SEM procedure in SmartPLS 4 software. Thus, the discussion for TPB followed after the SEM process was completed.

Appendix B.4. Formulation of Measurement Items for Adaptation to Climate Variability and Change

Water-use behaviour can be measured by assessing the adoption of several strategies, such as water-saving technologies, water-saving strategies, and adaptation to climate variability and change. The TACT principle was proposed by Ajzen [82] to assist researchers in formatting the behaviour within the TPB framework. A researcher can follow a structured approach to investigate the behaviour of individuals when using this principle. The TACT principle regarding water use for this study is summarised in Table A2.
Table A2. The integration of the TACT principle into the study (source: authors’ compilation).
Table A2. The integration of the TACT principle into the study (source: authors’ compilation).
ComponentDescription
TargetThe impact of climate variability on water-use behaviour for sugarcane production in the Impala Irrigation Scheme of South Africa.
ActionAdaptation to climate variability and change by the farmers.
ContextThe setting where behaviour occurs is on the farms within the identified irrigation scheme.
TimeThe behaviour occurs during each sugarcane production season when climate variability and conditions impact the farmers’ decisions about sugarcane production and how they modify their agricultural methods to mitigate the effects of climate variability.
The TACT principle was used to formulate the measurement items used to measure farmers’ decision-making regarding their water use. Figure 5 shows the structural path model diagram exploring irrigators’ behaviour for adapting to climate variability and change. Each construct has separate measurement items and was formulated from similar studies. It identified how those studies used the TPB and developed the measurement items for adapting to climate change and variability.
Most literature investigating climate-related subjects has assessed topics relating to climate change [19,28,29,61,62]. Studies have also researched climate variability, especially the impact of climate variability on water-use behaviour [27,38]. Climate change and climate variability are related, and climate variability could be due to climate change. Climate variability refers to the fluctuations in climate conditions that can occur over the short term (only a few seasons) due to weather changes unrelated to human activity. Examples of climate variability could be El Niño and La Niña. South Africa experienced a massive drought in 2016 due to the El Niño effect [83]. Climate change is the alterations that occur over the longer term and can be due to natural processes and human activity, such as greenhouse gas emissions. Climate change increases the probability of extreme weather events, increasing the likelihood of variability in climatic conditions. The variability in seasonal weather patterns that farmers experience could, thus, be caused by climate change. The adaptation measurements that farmers incorporate into their farming operations to reduce the effect of climate change could play a role in the impact of climate variability on them. Thus, how farmers react and make climate variability and change decisions could substantially influence their water-use behaviour and their intention to adapt.

Appendix C

Appendix C.1. Structural Equation Modelling

The SEM results were obtained following the four-step procedure for SEM analysis, as elaborated in Appendix B.3.

Appendix C.1.1. Data Cleaning

The first step in the process was data cleaning. The questionnaire data collected from the sugarcane farmers in the Impala Irrigation Scheme were captured in Excel. The data were assessed accordingly to ensure no missing variables were present in the data set before importing it into SmartPLS 4 software. The extracted data in SmartPLS were correctly defined to ensure all the values and scales were correct, subsequently creating the model in SmartPLS.

Appendix C.1.2. Identifying the Structural Model and Calculating the Estimates

The second step in the procedure was to identify the model in SmartPLS 4 software and calculate the estimates. The imported data were presented in the SmartPLS interface, and each construct’s measurement item was drawn into the canvas. The constructs were correctly placed to illustrate the structural model. This was followed by connecting the independent variable paths to the dependent variable. This can be observed in Figure A1, where the structural paths from AB, SN, and PBC connect to INT, and each construct has its separate measurement items.
Figure A1. The structural model (source: authors’ compilation). Note: AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention.
Figure A1. The structural model (source: authors’ compilation). Note: AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention.
Water 16 03454 g0a1

Appendix C.1.3. Measurement Model Assessment

The third step in the procedure was to conduct the measurement assessment based on the calculated estimates of the identified structural model in SmartPLS. This step consisted of testing the measurement model’s reliability and validity.
The reliability and validity assessments of the measurement model were done after the estimates were calculated using SmartPLS 4 software. The factor loadings were assessed to ensure they met the threshold criteria. The reliability was assessed by investigating the composite reliability and Cronbach’s alpha. The validity was evaluated by reviewing convergent validity using the average variance extracted. Discriminant validity was assessed using the Fornell and Larcker criteria [56,81,84,85,86].
Table A3 illustrates the factor loadings for each measurement item in the model. The optimal threshold criteria for factor loadings must be greater than 0.7. However, loadings between 04. and 0.7 are also acceptable if the research is exploratory in nature [48,56,81,84]. Loadings between 0.4 and 0.7 can be retained if their other reliability and validity criteria are adequate [87]. There were no factor loadings below 0.4 in this study. All the factor loadings were greater than 0.7, thus meeting the criteria for inclusion.
Table A3. The factor loading indicators (source: authors’ compilation).
Table A3. The factor loading indicators (source: authors’ compilation).
ConstructsMeasurement ItemsFactor Loadings
AttitudeAB10.946
AB20.931
Subjective normsSN10.943
SN20.908
Perceived behavioural controlPBC10.958
PBC20.784
IntentionINT10.907
INT20.847
In Table A4, the construct reliability and validity indicators are shown. The Cronbach’s alpha and composite reliability coefficients indicate internal consistency, and the value must be greater than 0.7 for each coefficient [48,56,81,88,89]. All the constructs adhered to Cronbach’s alpha and the composite reliability criterion, indicating high levels of internal consistency among all the latent variables in the model. The convergent validity of the latent variables was examined by assessing the AVE, which must meet the criterion of being above 0.5 [48,81,86,88,89]. All of the latent variables in the model had AVE values above 0.5, indicating that they adhered to the convergent validity criteria.
Table A4. The construct reliability and validity indicators (source: authors’ compilation).
Table A4. The construct reliability and validity indicators (source: authors’ compilation).
ConstructsCronbach’s AlphaComposite ReliabilityAverage Variance Extracted (AVE)
Attitude0.8650.9370.881
Subjective norms0.8350.9230.857
Perceived behavioural control0.7280.8660.766
Intention0.7060.8700.771
In Table A5, the discriminant validity assessment is illustrated. Fornell and Larcker’s [90] criteria were used by comparing the square roots of the AVE with the correlation among the latent variables [68]. The criteria of Fornell and Larker [90] suggest that the square roots of the AVE must not be greater than the correlations among the constructs. Table A5 shows that the correlations among latent variables were not greater than the square roots of AVE; thus, discriminant validity was achieved.
Table A5. The discriminant validity indicators of Fornell and Larker’s test (source: authors’ compilation).
Table A5. The discriminant validity indicators of Fornell and Larker’s test (source: authors’ compilation).
ConstructsAttitudeIntentionPerceived Behavioural ControlSubjective Norms
Attitude0.939---
Intention0.4470.878--
Perceived behavioural control0.5170.2780.875-
Subjective norms0.2580.3790.1690.926
Note: The values in italics represent the square roots of AVE.
In Table A6, the cross-loadings for discriminant validity are illustrated. The criteria for cross-loadings state that the values for each construct and subsequent measurement items (the values in italics) must be higher than those for any other construct [48,75,81,84]. In this study, the constructs and their corresponding measurement items all had values higher than the other constructs in each horizontal column. Thus, discriminant validity was achieved through cross-loading criteria.
Table A6. The cross-loading of the measurement items (source: authors’ compilation).
Table A6. The cross-loading of the measurement items (source: authors’ compilation).
Measurement ItemAttitudeIntentionPerceived Behavioural ControlSubjective Norms
AB10.9460.4430.3870.263
AB20.9310.3940.5950.218
INT10.3630.9070.3060.449
INT20.4330.8470.1670.189
PBC10.5080.3020.9580.231
PBC20.3780.1390.784−0.018
SN10.3010.3870.1840.943
SN20.1600.3070.1210.908
Note: The values in italics represent the values of each construct that represent their measurement items.
The heterotrait–monotrait (HTMT) ratio estimates the actual correlation between two constructs and their perfect reliability. The HTMT ratio is also used to conduct discriminant validity, where a value larger than 0.9 indicates a lack of discriminant validity [81]. It is evident from Table A7 that every ratio was below 0.9, indicating discriminant validity among the constructs.
Table A7. The heterotrait–monotrait (HTMT) ratio results (source: authors’ compilation).
Table A7. The heterotrait–monotrait (HTMT) ratio results (source: authors’ compilation).
ConstructsAttitudeIntentionPerceived Behavioural ControlSubjective Norms
Attitude----
Intention0.577---
Perceived behavioural control0.6360.335--
Subjective norms0.2910.4660.178-
The measurement model evaluation indicated that through the reliability and validity assessment, the model was deemed satisfactory and fit for structural model analysis, which is presented in the next section.

Appendix C.1.4. Structural Model Assessment and Reporting of the TPB and SEM Results

The final step of the analysis was to conduct the structural model assessment and report the results of the TPB and SEM. The structural model assessment consists of various aspects used to evaluate the model. The first step was to assess the collinearity issues [48,81]. Table A8 provides the collinearity statistics (VIF) for the inner model. AB, SN, and PBC were assessed as an INT predictor for the structural model. The threshold for the VIF values must be below five. As shown in Table A8, the predictor construct had no collinearity issues.
Table A8. The collinearity statistics (VIF) (source: authors’ compilation).
Table A8. The collinearity statistics (VIF) (source: authors’ compilation).
ConstructsIntention
Attitude1.422
Subjective norms1.073
Perceived behavioural control1.367
The next step was to examine the path coefficients for the structural model. The closer the path coefficient is to one, the stronger the positive relationship, with values closer to zero representing a weaker relationship. Table A9 shows the path coefficients. Attitudes (0.349) were the most substantial driver of intention, followed by subjective norms (0.281). Perceived behavioural control (0.051) was not a significant driver of intention.
Table A9. The path coefficients (source: authors’ compilation).
Table A9. The path coefficients (source: authors’ compilation).
ConstructsIntention
Attitude0.349
Subjective norms0.281
Perceived behavioural control0.051
The process of determining if a path coefficient is significant was done through a bootstrapping process, evaluating the standard error [48,81]. The bootstrapping process entailed calculating the structural path coefficients’ p-values and t-statistics.

Appendix D

This appendix presents the questionnaire items relevant to this study, which is part of a broader research project focusing on the socio-economic impact of changes in water-use behaviour in food production in South Africa. While the overall project used a comprehensive questionnaire for data collection, only the sections relevant to this study are included here. Appendix D.1. includes questions related to farmers’ socio-economic characteristics, such as household, farm, and farmer profiles. Appendix D.2. provides the specific questionnaire items designed to measure the Theory of Planned Behaviour (TPB) constructs (attitudes, subjective norms, perceived behavioural control, and intentions), which were used in the SEM analysis.

Appendix D.1. Farmer, Farm, and Household Characteristics (Socio-Economics)

Please take a moment to provide your responses to the following questions. Use the provided space or select from the given options to indicate your answers:
1.1Your gender?MaleFemaleOther
1.2Your age in years?
1.3Highest level of education?Primary (Grade 1–7)Secondary (Grade 8–12)DiplomaDegreeMastersPhD
1.4Do you have any off-farm income? (if yes, specify)YesNo
If yes, please specify
1.5Health LevelPoorAverageGoodExcellent
1.6What is the size of your irrigation land (Hectares)?
1.7What is the size of the rest of your agricultural land (hectares)?
1.8The primary source of water used for irrigation?River waterDam waterCanal waterBorehole water
If other, please specify
1.9What is the total amount of agricultural land deeds that you own?OneTwo to fiveMore than five
1.10How scattered is your farmland from your main farm?Highly clustered together (1–5 Km)Moderately dispersed (5–10 Km)Highly dispersed (10 or more Km)
1.11What type of farming do you primarily do on your farm?Crop productionLivestock productionMixed farming
1.12Specify the crops/livestock that you farm with.
1.13What is the business structure of your farming operation?Sole proprietorshipCorporationPartnership
If other, please specify
1.14How far is your farm from the water source you use for irrigation?Less than 1 Km1–3 Km3–7 Km7–10 KmMore than 10 Km
1.15What is the land ownership type for your farm?I am the sole ownerI lease my landA combination of sole ownership and leaseholdcommunal
1.16How many adults 18 years and older live in your home?OneTwoThree or more
1.17How many people live in your home, including adults and children?OneTwoThreeFour or more
1.18Please indicate the age of the head of your household.
1.19Please indicate the gender of the head of your household.MaleFemaleOther
1.20How many individuals in your household are involved in your farming activities?OneTwoThree or more
1.21Please indicate your marital status.MarriedSingleDivorcedWidowedOther
1.22What is your main occupation or primary source of livelihood?Farmer/agricultural activitiesSelf-employed/business ownerOther
If other, please specify

Appendix D.2. Theory of Planned Behaviour Constructs for SEM

Please Read the Following Statements and Show How Much You Agree or
Disagree. Use the Provided Scale to Select Your Option.
Strongly DisagreeDisagreeNeutralAgreeStrongly Agree
Question12345
Attitudes1.23I follow the prescribed irrigation practices from the water user association or governing bodies to adapt to climate change.
1.24Using prescribed irrigation practices from my water user association or governing bodies will save me time and money when adapting to climate change.
Subjective norms1.25Other farmers and people in the industry strongly encourage me to take action against climate change.
1.26There is increasing pressure from my community to adjust my farming practices in response to climate change.
Perceived behavioural control1.27I feel I can adapt my farming practices to climate change.
1.28I can make the necessary changes in my farming in response to climate change.
Intentions1.29I am currently intending to adopt measures to adapt to climate change impacts on my irrigation activities.
1.30I plan to adopt measures to adapt to climate change impacts on my irrigation activities within the near future

References

  1. Chapagain, A.K. Water Footprint: State of the Art: What, Why, and How? In Encyclopedia of Sustainable Technologies; Abraham, M., Ed.; Elsevier: Oxford, UK, 2017; pp. 153–163. [Google Scholar] [CrossRef]
  2. Boretti, A.; Rosa, L. Reassessing the projections of the world water development report. NPJ Clean Water 2019, 2, 15. [Google Scholar] [CrossRef]
  3. Mekonnen, M.M.; Hoekstra, A.Y. Sustainability of the blue water footprint of crops. Adv. Water Resour. 2020, 143, 103679. [Google Scholar] [CrossRef]
  4. Xu, H.; Yang, R.; Song, J. Agricultural water use efficiency and rebound effect: A study for China. Int. J. Environ. Res. Public Health 2021, 18, 7151. [Google Scholar] [CrossRef]
  5. Food and Agriculture Organization (FAO). The State of the World’s Land and Water Resources for Food and Agriculture: Systems at Breaking Point; Synthesis Report 2021; Food and Agriculture Organization: Rome, Italy, 2021. [Google Scholar]
  6. Konapala, G.; Mishra, A.K.; Wada, Y.; Mann, M.E. Climate change will affect global water availability through compounding changes in seasonal precipitation and evaporation. Nat. Commun. 2020, 11, 3044. [Google Scholar] [CrossRef]
  7. World Bank (WB). Climate Risk Country Profile: South Africa. 2021. Available online: https://climateknowledgeportal.worldbank.org/country-profiles (accessed on 16 November 2023).
  8. Bedeke, S.B. Climate change vulnerability and adaptation of crop producers in sub-Saharan Africa: A review on concepts, approaches and methods. Environ. Dev. Sustain. 2023, 25, 1017–1051. [Google Scholar] [CrossRef]
  9. Nhemachena, C.; Nhamo, L.; Matchaya, G.; Nhemachena, C.R.; Muchara, B.; Karuaihe, S.T.; Mpandeli, S. Climate change impacts on water and agriculture sectors in Southern Africa: Threats and opportunities for sustainable development. Water 2020, 12, 2673. [Google Scholar] [CrossRef]
  10. Cammarano, D.; Valdivia, R.O.; Beletse, Y.G.; Durand, W.; Crespo, O.; Tesfuhuney, W.A.; Jones, M.R.; Walker, S.; Mpuisang, T.N.; Nhemachena, C.; et al. Integrated assessment of climate change impacts on crop productivity and income of commercial maize farms in northeast South Africa. Food Sec. 2020, 12, 659–678. [Google Scholar] [CrossRef]
  11. South African Government (SAG). National Water Security, South Africa. 2015. Available online: https://www.gov.za/speeches/national-water-security-13-nov-2015-0000 (accessed on 16 March 2024).
  12. Jordaan, H.; Adetoro, A.; Singels, A.; Paraskevopoulos, A.; Jones, M.; Neshifhefhe, K.; Tshibalo, T.; Motaung, N.; Chapagain, A. Assessing the Water Footprints of Selected Fuel and Fibre Crops in South Africa; WRC Report No. 2553/1/22; Water Research Commission: Pretoria, South Africa, 2022. [Google Scholar]
  13. Adhikari, U.; Nejadhashemi, A.P.; Woznicki, S.A. Climate change and eastern Africa: A review of the impact on major crops. Food Energy Sec. 2015, 4, 110–132. [Google Scholar] [CrossRef]
  14. Apraku, A.; Morton, J.F.; Gyampoh, B.A. Climate change and small-scale agriculture in Africa: Does indigenous knowledge matter? Insights from Kenya and South Africa. Sci. Afr. 2021, 12, 00821. [Google Scholar] [CrossRef]
  15. Jarrett, W.B. A Survey of the Influences on Water Conservation Behaviour in Pickens and Oconee Counties. Ph.D. Thesis, Clemson University, Clemson, SC, USA, 2015. [Google Scholar]
  16. Ali, A.; Rahat, D.B.; Erenstein, O. Irrigation water saving through adoption of direct rice sowing technology in the Indo-Gangetic Plains: Empirical evidence from Pakistan. Water Pract. Technol. 2016, 11, 610–620. [Google Scholar] [CrossRef]
  17. Farooq, M.S.; Uzaiir, M.; Raza, A.; Habib, M.; Xu, Y.; Yousuf, M.; Yang, S.H.; Ramzan Khan, M. Uncovering the research gaps to alleviate the negative impacts of climate change on food security: A review. Front. Plant Sci. 2022, 13, 2334. [Google Scholar] [CrossRef] [PubMed]
  18. Ochieng, J.; Kirimi, L.; Ochieng, D.O.; Njagi, T.; Mathenge, M.; Gitau, R.; Ayieko, M. Managing climate risk through crop diversification in rural Kenya. Clim. Chang. 2020, 162, 1107–1125. [Google Scholar] [CrossRef]
  19. Talanow, K.; Topp, E.N.; Loos, J.; Martín-López, B. Farmers’ perceptions of climate change and adaptation strategies in South Africa’s Western Cape. J. Rural Stud. 2021, 81, 203–219. [Google Scholar] [CrossRef]
  20. Monteiro, M.A.; Bahta, Y.T.; Jordaan, H. A systematic review on drivers of water-use behaviour among agricultural water users. Water 2024, 16, 1899. [Google Scholar] [CrossRef]
  21. Savari, M.; Eskandari Damaneh, H.; Eskandari Damaneh, H. Factors influencing local people’s participation in sustainable forest management. Arab. J. Geosci. 2020, 13, 1–13. [Google Scholar] [CrossRef]
  22. Yazdanpanah, M.; Feyzabad, F.R.; Forouzani, M.; Mohammadzadeh, S.; Burton, R.J. Predicting farmers’ water conservation goals and behaviour in Iran: A test of social cognitive theory. Land Use Policy 2015, 47, 401–407. [Google Scholar] [CrossRef]
  23. Mancha, R.M.; Yoder, C.Y. Cultural antecedents of green behavioural intent: An environmental theory of planned behaviour. J. Environ. Psychol. 2015, 43, 145–154. [Google Scholar] [CrossRef]
  24. Ali, S.; Liu, Y.; Ishaq, M.; Shah, T.; Ilyas, A.; Din, I.U. Climate change and its impact on the yield of major food crops: Evidence from Pakistan. Foods 2017, 6, 39. [Google Scholar] [CrossRef]
  25. Bates, B.C.; Kundzewicz, Z.W.; Wu, S.; Palutikof, J.P. Climate change and water. In Technical Paper of the Intergovernmental Panel on Climate Change; IPCC Secretariat: Geneva, Switzerland, 2008. [Google Scholar]
  26. Fu, Y.; Wu, W. Behaviour interventions for water end use: An integrated model. In Proceedings of the 20th International Conference on Automation and Computing, Cranfield University, Bedfordshire, UK, 12–13 September 2014; pp. 266–271. [Google Scholar] [CrossRef]
  27. Mitter, H.; Larcher, M.; Schönhart, M.; Stöttinger, M.; Schmid, E. Exploring farmers’ climate change perceptions and adaptation intentions: Empirical evidence from Austria. Environ. Manag. 2019, 63, 804–821. [Google Scholar] [CrossRef]
  28. Abid, M.; Scheffran, J.; Schneider, U.A.; Elahi, E. Farmer perceptions of climate change, observed trends and adaptation of agriculture in Pakistan. Environ. Manag. 2019, 63, 110–123. [Google Scholar] [CrossRef]
  29. Niles, M.T.; Brown, M.; Dynes, R. Farmer’s intended and actual adoption of climate change mitigation and adaptation strategies. Clim. Chang. 2016, 135, 277–295. [Google Scholar] [CrossRef]
  30. Yuan, S.; Li, X.; Du, E. Effects of farmers’ behavioural characteristics on crop choices and responses to water management policies. Agr. Water Manag. 2021, 247, 106693. [Google Scholar] [CrossRef]
  31. Zobeidi, T.; Yaghoubi, J.; Yazdanpanah, M. Farmers’ incremental adaptation to water scarcity: An application of the model of private proactive adaptation to climate change (MPPACC). Agr. Water Manag. 2022, 264, 107528. [Google Scholar] [CrossRef]
  32. Nazemi, A.; Wheater, H.S. On inclusion of water resource management in Earth system models–Part 1: Problem definition and representation of water demand. Hydrol. Earth Syst. Sc. 2015, 19, 33–61. [Google Scholar] [CrossRef]
  33. Dalin, C.; Wada, Y.; Kastner, T.; Puma, M.J. Groundwater depletion embedded in international food trade. Nature 2017, 543, 700–704. [Google Scholar] [CrossRef]
  34. Kotze, H.C.; Qotoyi, M.S.; Bahta, Y.T.; Jordaan, H.; Monteiro, M.A. A systematic review and meta-analysis of factors influencing water use behaviour and the efficiency of agricultural production in South Africa. Resources 2024, 13, 94. [Google Scholar] [CrossRef]
  35. Ochieng, J.; Kirimi, L.; Mathenge, M. Effects of climate variability and change on agricultural production: The case of small scale farmers in Kenya. NJAS-Wagen. J. Life Sc. 2016, 77, 71–78. [Google Scholar] [CrossRef]
  36. Elum, Z.A.; Nhamo, G.; Antwi, M.A. Effects of climate variability and insurance adoption on crop production in select provinces of South Africa. J. Water Clim. Chang. 2018, 9, 500–511. [Google Scholar] [CrossRef]
  37. Myeni, L.; Moeletsi, M.E. Factors determining the adoption of strategies used by smallholder farmers to cope with climate variability in the Eastern Free State, South Africa. Agriculture 2020, 10, 410. [Google Scholar] [CrossRef]
  38. Tshikovhi, M.; van Wyk, R.B. South Africa’s increasing climate variability and its effect on food production. Outlook Agric. 2021, 50, 286–293. [Google Scholar] [CrossRef]
  39. Kyaw, Y.; Nguyen, T.P.L.; Winijkul, E.; Xue, W.; Virdis, S.G. The effect of climate variability on cultivated crops’ yield and farm income in Chiang Mai Province, Thailand. Climate 2023, 11, 204. [Google Scholar] [CrossRef]
  40. Adendorff, M.W.; Umman, A.J.; Paraskevopoulos, A. Improving the adoption of irrigation scheduling: A demonstration trial case study in Pongola, South Africa. In Proceedings of the Annual Congress—South African Sugar Technologists’ Association, Durban, South Africa, 13–15 August 2024; pp. 100–112. [Google Scholar]
  41. Department of Water and Sanitation (DWS). Development and Implementation of Irrigation Water Management Plans to Improve Water Use Efficiency in the Agricultural Sector: Impala Irrigation Scheme Water Management Plan. 2013. Available online: https://www.dws.gov.za (accessed on 19 April 2024).
  42. Dlamini, B.R.; Rampedi, I.T.; Ifegbesan, A.P. Community Resident’s Opinions and Perceptions on the Effectiveness of Waste Management and Recycling Potential in the Umkhanyakude and Zululand District Municipalities in the KwaZulu-Natal Province of South Africa. Sustainability 2017, 9, 1835. [Google Scholar] [CrossRef]
  43. Boonzaaier, J. Chief Executive Officer, Impala Irrigation Scheme, Pongola, South Africa. Personal interview, 21 November 2023. [Google Scholar]
  44. Climate-data.org. Pongola Climate: Weather Pongola & Temperature by Month. 2024. Available online: https://en.climate-data.org/africa/south-africa/kwazulu-natal/pongola-189671/#climate-graph (accessed on 11 November 2024).
  45. Department of Forestry, Fisheries and the Environment (DFFE). Climate Change Vulnerability Assessment and Response Plan; DFFE: Pretoria, South Africa, 2018.
  46. Bentler, P.M.; Chou, C.P. Practical issues in structural modeling. Sociol. Method Res. 1987, 16, 78–117. [Google Scholar] [CrossRef]
  47. Tama, R.A.Z.; Ying, L.; Yu, M.; Hoque, M.M.; Adnan, K.M.; Sarker, S.A. Assessing farmers’ intention towards conservation agriculture by using the Extended Theory of Planned Behavior. J. Environ. Manag. 2021, 280, 111654. [Google Scholar] [CrossRef]
  48. Hair, J.F.; Hult, M.; Ringle, C.M.; Sarstedt, M. A Primer on Partial Least Squares Structural Equation Modeling (PLS-SEM), 3rd ed.; SAGE Publications: London, UK, 2021. [Google Scholar] [CrossRef]
  49. Kock, N.; Hadaya, P. Minimum sample size estimation in PLS-SEM: The inverse square root and gamma-exponential methods. Inform. Syst. J. 2018, 28, 227–261. [Google Scholar] [CrossRef]
  50. Lee, Y.N.; Zailani, S.; Rahman, M.K. Determinants of customer intention to purchase social enterprise products: A structural model analysis. J. Soc. Entrep. 2021, 12, 358–379. [Google Scholar] [CrossRef]
  51. Ayob, S.F.; Sheau-Ting, L.; Abdul Jalil, R.; Chin, H.C. Key determinants of waste separation intention: Empirical application of TPB. Facilities 2017, 35, 696–708. [Google Scholar] [CrossRef]
  52. Wong, G.Z.; Wong, K.H.; Lau, T.C.; Lee, J.H.; Kok, Y.H. Study of intention to use renewable energy technology in Malaysia using TAM and TPB. Renew. Energ. 2024, 221, 119787. [Google Scholar] [CrossRef]
  53. Imari, I.; Tambayong, W.; Suminto, A.; Ahmad, S.; Harahap, R. Islamic Financial Literacy Analysis of Islamic Economics Students using The Theory of Planned Behavior (TPB): Empirical Studies with SEM-PLS Approach. In Proceedings of the Femfest International Conference on Economics, Management, and Business, Jawa Timur, Indonesia, 24–26 January 2023; Volume 1, pp. 453–469. [Google Scholar]
  54. Deressa, T.T.; Hassan, R.M.; Ringler, C. Perception of and adaptation to climate change by farmers in the Nile basin of Ethiopia. J. Agr. Sci. 2011, 149, 23–31. [Google Scholar] [CrossRef]
  55. Below, T.B.; Mutabazi, K.D.; Kirschke, D.; Franke, C.; Sieber, S.; Siebert, R.; Tscherning, K. Can farmers’ adaptation to climate change be explained by socio-economic household-level variables? Glob. Environ. Chang. 2012, 22, 223–235. [Google Scholar] [CrossRef]
  56. Mahdavi, T. Application of the ‘theory of planned behaviour’ to understand farmers’ intentions to accept water policy options using structural equation modeling. Water Supply 2021, 21, 2720–2734. [Google Scholar] [CrossRef]
  57. Mugi-Ngenga, E.W.; Mucheru-Muna, M.W.; Mugwe, J.N.; Ngetich, F.K.; Mairura, F.S.; Mugendi, D.N. Household’s socio-economic factors influencing the level of adaptation to climate variability in the dry zones of Eastern Kenya. J. Rural Stud. 2016, 43, 49–60. [Google Scholar] [CrossRef]
  58. Manfredo, M.J. Who Cares About Wildlife? Springer: New York, NY, USA, 2008. [Google Scholar] [CrossRef]
  59. Ajzen, I. The theory of planned behaviour. Organ. Behav. Hum. Dec. 1991, 50, 179–211. [Google Scholar] [CrossRef]
  60. Fishbein, M.; Ajzen, I. Predicting and Changing Behaviour: The Reasoned Action Approach; Taylor & Francis: New York, NY, USA, 2011. [Google Scholar] [CrossRef]
  61. Arunrat, N.; Wang, C.; Pumijumnong, N.; Sereenonchai, S.; Cai, W. Farmers’ intention and decision to adapt to climate change: A case study in the Yom and Nan basins, Phichit province of Thailand. J. Clean Prod. 2017, 143, 672–685. [Google Scholar] [CrossRef]
  62. Zhang, L.; Ruiz-Menjivar, J.; Luo, B.; Liang, Z.; Swisher, M.E. Predicting climate change mitigation and adaptation behaviours in agricultural production: A comparison of the theory of planned behaviour and the Value-Belief-Norm Theory. J. Environ. Psychol. 2020, 68, 101408. [Google Scholar] [CrossRef]
  63. Castillo, G.M.L.; Engler, A.; Wollni, M. Planned behaviour and social capital: Understanding farmers’ behaviour toward pressurized irrigation technologies. Agr. Water Manag. 2021, 243, 106524. [Google Scholar] [CrossRef]
  64. Pourmand, G.; Doshmangir, L.; Ahmadi, A.; Noori, M.; Rezaeifar, A.; Mashhadi, R.; Aziminia, R.; Pourmand, A.; Gordeev, V.S. An application of the theory of planned behaviour to self-care in patients with hypertension. BMC Public Health 2020, 20, 1–8. [Google Scholar] [CrossRef]
  65. Tarka, P. An overview of structural equation modeling: Its beginnings, historical development, usefulness and controversies in the social sciences. Qual. Quant. 2018, 52, 313–354. [Google Scholar] [CrossRef]
  66. Jöreskog, K.G.; Sörbom, D. LISREL 8: Structural Equation Modeling with the SIMPLIS Command Language; Scientific Software International: Chicago, IL, USA, 1993. [Google Scholar]
  67. Savari, M.; Abdeshahi, A.; Gharechaee, H.; Nasrollahian, O. Explaining farmers’ response to water crisis through theory of the norm activation model: Evidence from Iran. Int. J. Disast. Risk Redu. 2021, 60, 02284. [Google Scholar] [CrossRef]
  68. Anjum, T.; Sharifi, S.; Nazar, N.; Farrukh, M.; Candidates, P. Determinants of entrepreneurial intention in perspective of Theory of Planned Behaviour. Manag. Theory Stud. Rural. Bus. Infrastruct. Dev. 2018, 40, 429–441. [Google Scholar] [CrossRef]
  69. Wheeler, S.A.; Nauges, C.; Zuo, A. How stable are Australian farmers’ climate change risk perceptions? New evidence of the feedback loop between risk perceptions and behaviour. Global Environ. Chang. 2021, 68, 102274. [Google Scholar] [CrossRef]
  70. Raymond, C.M.; Spoehr, J. The acceptability of climate change in agricultural communities: Comparing responses across variability and change. J. Environ. Manag. 2013, 115, 69–77. [Google Scholar] [CrossRef]
  71. Jellason, N.P.; Baines, N.; Conway, S.; Ogbaga, C.C. Climate change perceptions and attitudes to smallholder adaptation in Northwestern Nigerian Drylands. Soc. Sci. 2019, 8, 31. [Google Scholar] [CrossRef]
  72. Zamasiya, B.; Nyikahadzoi, K.; Mukamuri, B.B. Factors influencing smallholder farmers’ behavioural intention towards adaptation to climate change in transitional climatic zones: A case study of Hwedza District in Zimbabwe. J. Environ. Manag. 2017, 198, 233–239. [Google Scholar] [CrossRef] [PubMed]
  73. Nguyen, N.; Drakou, E.G. Farmers’ intention to adopt sustainable agriculture hinges on climate awareness: The case of Vietnamese coffee. J. Clean. Prod. 2021, 303, 126828. [Google Scholar] [CrossRef]
  74. Renita, D.; Anindita, R. Farmer’s intention on climate change adaptation. Agr. Socio-Econ. J. 2017, 17, 105–111. [Google Scholar] [CrossRef]
  75. Hair, J.F.; Ringle, C.M.; Sarstedt, M. PLS-SEM: Indeed a silver bullet. J. Mark. Theory Pract. 2011, 19, 139–152. [Google Scholar] [CrossRef]
  76. Usman, M.; Ali, A.; Bashir, M.K.; Baig, S.A.; Mushtaq, K.; Abbas, A.; Akram, R.; Iqbal, M.S. Modelling wellbeing of farmers by using nexus of climate change risk perception, adaptation strategies, and their drivers on irrigation water in Pakistan. Environ. Sci. Pollut. R. 2023, 30, 49930–49947. [Google Scholar] [CrossRef]
  77. Dang, H.L.; Li, E.; Nuberg, I.; Bruwer, J. Factors influencing farmers’ adaptation in response to climate change: A review. Clim. Dev. 2019, 11, 765–774. [Google Scholar] [CrossRef]
  78. Trinh, T.Q.; Rañola, R.F., Jr.; Camacho, L.D.; Simelton, E. Determinants of farmers’ adaptation to climate change in agricultural production in the central region of Vietnam. Land Use Policy 2018, 70, 224–231. [Google Scholar] [CrossRef]
  79. Michalak, D. Adapting to climate change and effective water management in Polish agriculture—At the level of government institutions and farms. Ecohydrol. Hydrobiol. 2020, 20, 134–141. [Google Scholar] [CrossRef]
  80. Rigdon, E.E. Choosing PLS path modeling as analytical method in European management research: A realist perspective. Eur. Manag. J. 2016, 34, 598–605. [Google Scholar] [CrossRef]
  81. Basbeth, F.; Razik, M.A.B.; Ibrahim, M.A.H. Four Hours Basic PLS-SEM: A Step by Step Guide; iPRO Publication: Kajang, Malaysia, 2018. [Google Scholar]
  82. Ajzen, I. Constructing a TPB Questionnaire: Conceptual and Methodological Considerations. 2006. Available online: https://people.umass.edu/aizen/tpb.html (accessed on 17 April 2023).
  83. Jordaan, H.; Bahta, Y.T. The economic impact of policy interventions to mitigate water use in irrigation agriculture in South Africa. J. Hum. Ecol. 2020, 71, 8–15. [Google Scholar] [CrossRef]
  84. Aziz, A. Applying theory of planned behaviour to understand pro-environmental intention and behaviour of students. Arthatama 2019, 3, 1–15. [Google Scholar]
  85. Negara, D.J.; Ferdinand, F.; Meitiana, M.; Astuti, M.H.; Anden, T.; Sarlawa, R.; Mahrita, A. Knowledge sharing behaviour in Indonesia: An application of planned behaviour theory. J. Asian Financ. Econ. Bus. 2021, 8, 1053–1064. [Google Scholar]
  86. Ogiemwonyi, O.; Harun, A.B. Theory of planned behaviour approach to understand pro-environmental behaviour among young green consumers in Malaysia. Isr. J. Ecol. Evol. 2021, 67, 168–181. [Google Scholar] [CrossRef]
  87. Ratner, B. The correlation coefficient: Its values range between +1/−1, or do they? J. Target. Measu. Anal. Mark. 2009, 17, 139–142. [Google Scholar] [CrossRef]
  88. Hair, J.F.; Risher, J.J.; Sarstedt, M.; Ringle, C.M. When to use and how to report the results of PLS-SEM. Eur. Bus. Re. 2019, 31, 2–24. [Google Scholar] [CrossRef]
  89. Hair, J.F.; Howard, M.C.; Nitzl, C. Assessing measurement model quality in PLS-SEM using confirmatory composite analysis. J. Bus. Res. 2020, 109, 101–110. [Google Scholar] [CrossRef]
  90. Fornell, C.; Larcker, D.F. Evaluating structural equation models with unobservable variables and measurement error. J. Mark. Res. 1981, 18, 39–50. [Google Scholar] [CrossRef]
Figure 1. The location of Pongola in the Zululand District Municipality (source: adapted from Dlamini et al. [42]).
Figure 1. The location of Pongola in the Zululand District Municipality (source: adapted from Dlamini et al. [42]).
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Figure 2. Average monthly climatic data for Pongola from 1991 to 2021, including temperature and precipitation (source: authors’ compilation based on data obtained from Climate-data.org [44]).
Figure 2. Average monthly climatic data for Pongola from 1991 to 2021, including temperature and precipitation (source: authors’ compilation based on data obtained from Climate-data.org [44]).
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Figure 3. Overview of the Impala Irrigation Scheme’s water distribution network (source: DWS [41]).
Figure 3. Overview of the Impala Irrigation Scheme’s water distribution network (source: DWS [41]).
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Figure 5. Structural path diagram exploring irrigators’ intentions for adapting to climate variability (source: authors’ compilation). Note: AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention. Blue circles represent latent constructs, and yellow rectangles represent the measurement items.
Figure 5. Structural path diagram exploring irrigators’ intentions for adapting to climate variability (source: authors’ compilation). Note: AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention. Blue circles represent latent constructs, and yellow rectangles represent the measurement items.
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Figure 6. The calculated estimates of the structural model (source: authors’ compilation). Note: yellow rectangles represent measurement items; blue circles represent constructs. Values between measurement items and constructs indicate factor loadings, and values between constructs represent path coefficients. AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention. The observed variables ( AB 1 ; AB 2 ; SN 1 ; SN 2 ; PBC 1 ; PBC 2 ; INT 1 ; INT 2 ) are measured with factor loadings representing the strength of their relationships with the latent constructs ( AB ; SN ; PBC ; INT ) . The relative weights indicate the strength of the relationship between the latent constructs ( AB ; SN ; PBC ) and INT.
Figure 6. The calculated estimates of the structural model (source: authors’ compilation). Note: yellow rectangles represent measurement items; blue circles represent constructs. Values between measurement items and constructs indicate factor loadings, and values between constructs represent path coefficients. AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention. The observed variables ( AB 1 ; AB 2 ; SN 1 ; SN 2 ; PBC 1 ; PBC 2 ; INT 1 ; INT 2 ) are measured with factor loadings representing the strength of their relationships with the latent constructs ( AB ; SN ; PBC ; INT ) . The relative weights indicate the strength of the relationship between the latent constructs ( AB ; SN ; PBC ) and INT.
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Figure 7. The bootstrapping estimates of the structural model (source: authors’ compilation). Note: the values between the constructs (blue circles) and measurement items (yellow rectangles) represent the p-values for the factor loadings. The values between constructs (blue circles) represent the path coefficients, with corresponding p-values shown in brackets. AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention.
Figure 7. The bootstrapping estimates of the structural model (source: authors’ compilation). Note: the values between the constructs (blue circles) and measurement items (yellow rectangles) represent the p-values for the factor loadings. The values between constructs (blue circles) represent the path coefficients, with corresponding p-values shown in brackets. AB—attitude behaviour; SN—subjective norms; PCB—perceived behavioural control; INT—intention.
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Table 1. Summary of path coefficients from studies using the Theory of Planned Behaviour (TPB) to measure intentions (source: authors’ compilation).
Table 1. Summary of path coefficients from studies using the Theory of Planned Behaviour (TPB) to measure intentions (source: authors’ compilation).
ReferenceMinimum Path CoefficientMaximum Path CoefficientAverage
Lee et al. [50]0.2430.5780.411
Ayob et al. [51]0.2670.5630.415
Wong et al. [52]0.2910.5850.438
Imari et al. [53]0.1760.4290.303
Average0.2440.5390.4
Table 2. Minimum sample sizes for different levels of minimum path coefficients ( P m i n ) and significance levels (source: Hair et al. [48]).
Table 2. Minimum sample sizes for different levels of minimum path coefficients ( P m i n ) and significance levels (source: Hair et al. [48]).
  P m i n 1% Significance5% Significance10% Significance
0.05–0.11004619451
0.11–0.2251155113
0.21–0.31126951
0.31–0.4633929
0.41–0.5412519
Table 3. Respondents’ demographic profile (source: authors’ compilation).
Table 3. Respondents’ demographic profile (source: authors’ compilation).
VariableClassificationFrequencyPercentage (%)
GenderMale54100%
Female--
AgeYounger than 20--
21–30--
31–40713%
41–501630%
51–601324%
61 and older1833%
Highest education levelPrimary (Grades 1–7)--
Secondary (Grades 8–12)1630%
Diploma2037%
Undergraduate degree1833%
Master’s--
PhD--
Health levelPoor--
Average713%
Good2954%
Excellent1833%
Table 4. Respondents’ household characteristics (source: authors’ compilation).
Table 4. Respondents’ household characteristics (source: authors’ compilation).
VariableClassificationFrequencyPercentage (%)
Number of adults (18 years and older) living in the householdOne917%
Two4176%
Three or more47%
Total individuals living in the household (adults + children)One47%
Two2546%
Three815%
Four or more1732%
Gender of the head of the householdMale54100%
Female--
Individuals in household involved in farming activitiesOne3259%
Two1833%
Three or more48%
Marital statusMarried5194%
Single24%
Divorced--
Widowed12%
Age of the head of the householdYounger than 20--
20–30--
31–40713%
41–501426%
51–601324%
61 and older2037%
Primary source of livelihoodFarmer/agricultural activities4787%
Self-employed/business owner713%
Off-farm incomeYes1935%
No3565%
Table 5. Respondents’ farm characteristics profile (source: authors’ compilation).
Table 5. Respondents’ farm characteristics profile (source: authors’ compilation).
VariableClassificationFrequencyPercentage (%)
The primary source of water used for irrigationRiver36%
Dam47%
Canal3870%
Borehole--
River and dam water24%
River and canal water47%
River and borehole--
Dam and canal water36%
Dam and borehole--
Canal and borehole--
Type of farming performedCrop production4482%
Livestock production--
Mixed farming1018%
Amount of agricultural land deeds ownedOne47%
Two to five2750%
More than five2343%
How scattered is the farmland from the main farmHighly clustered together (1–5 km)2444%
Moderately dispersed (6–10 km)1324%
Highly dispersed (more than 10 km)1732%
Business structure of the farm operationsSole proprietorship815%
Corporation2139%
Partnership24%
Trust2241%
Closed corporation11%
The land ownership type of the farmSole owner4380%
Lease--
Combination of sole owner and lease1120%
Communal--
Distance of main irrigation land from the water sourceLess than 1 Km3870%
1–3 Km1018%
3–7 Km36%
7–10 Km12%
More than 10 Km24%
Table 6. The results from the bootstrapping technique (source: authors’ compilation). Note: * p < 0.1; ** p < 0.05; *** p < 0.01 and * t > 1.65; ** t > 1.96; *** t > 2.57.
Table 6. The results from the bootstrapping technique (source: authors’ compilation). Note: * p < 0.1; ** p < 0.05; *** p < 0.01 and * t > 1.65; ** t > 1.96; *** t > 2.57.
ConstructsPath CoefficientsSample MeanStandard Deviationt-Statisticsp-Values
Attitude Intention0.3490.3270.2061.690 *0.091 *
Subjective norms Intention0.2810.2880.1252.244 **0.025 **
Perceived behavioural control Intention0.0510.0990.1910.2650.791
Table 7. The R² and adjusted R² results (source: authors’ compilation). Note: * p < 0.1; ** p < 0.05; *** p < 0.01 and * t > 1.65; ** t > 1.96; *** t > 2.57.
Table 7. The R² and adjusted R² results (source: authors’ compilation). Note: * p < 0.1; ** p < 0.05; *** p < 0.01 and * t > 1.65; ** t > 1.96; *** t > 2.57.
Constructt-Statistic of R²p-Value of R²Adjusted R²t-Statistic of Adjusted R²p-Value of Adjusted R²
Intention0.2762.758 ***0.006 ***0.2332.193 **0.028 **
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Kotzé, H.C.; Bahta, Y.T.; Jordaan, H.; Monteiro, M.A. Assessing Commercial Sugarcane Irrigators’ Intentions to Adapt Water-Use Behaviour in Response to Climate Variability in South Africa. Water 2024, 16, 3454. https://doi.org/10.3390/w16233454

AMA Style

Kotzé HC, Bahta YT, Jordaan H, Monteiro MA. Assessing Commercial Sugarcane Irrigators’ Intentions to Adapt Water-Use Behaviour in Response to Climate Variability in South Africa. Water. 2024; 16(23):3454. https://doi.org/10.3390/w16233454

Chicago/Turabian Style

Kotzé, Heinrich C., Yonas T. Bahta, Henry Jordaan, and Markus A. Monteiro. 2024. "Assessing Commercial Sugarcane Irrigators’ Intentions to Adapt Water-Use Behaviour in Response to Climate Variability in South Africa" Water 16, no. 23: 3454. https://doi.org/10.3390/w16233454

APA Style

Kotzé, H. C., Bahta, Y. T., Jordaan, H., & Monteiro, M. A. (2024). Assessing Commercial Sugarcane Irrigators’ Intentions to Adapt Water-Use Behaviour in Response to Climate Variability in South Africa. Water, 16(23), 3454. https://doi.org/10.3390/w16233454

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