Is Drought Caused by Fate? Analysis of Farmers’ Perception and Its Inﬂuencing Factors in the Irrigation Areas of GAP- ¸Sanlıurfa, Turkey

: This research aims to determine the belief-based drought perceptions and attitudes of farmers in ¸Sanlıurfa, which is in a semi-arid climate regime, and the factors affecting them. The surveys were conducted through face-to-face interviews with farmers selected by a simple random sampling method in 2020. Analyses were performed with ordinal logit regression in STATA. According to the results, while the effects of settlement location, land size, age, and the size of the household were statistically signiﬁcant to farmers seeing drought, which is the dependent variable, as caused by fate, the effects of income, experience, and education level were insigniﬁcant. For the probability of predicting drought for each independent variable in the sequence analysis, the highest probabilities were found among farmers in the Harran Plain, with 21–30 years of experience, from a household of one to four people, with the land area between 5.1 and 10.0 hectares, aged 61 and above, who were primary school graduates, and who had an annual income of less than 25,000 TL ($3561). The subject of drought should be given more place in religious education in the entire research area by prioritizing these groups. It would also be beneﬁcial to organize workshops for the farmers by agricultural consultants, where Islamic scholars would be present to support science and knowledge in terms of faith. This study is the ﬁrst in this context in Turkey and provides useful data to policymakers for drought-mitigation policies.

first studies to determine individual attitudes and concerns for the environment, age, education, and political ideologies were found to be effective factors [29]. In another pioneering study, the effect of religious belief on environmental problems was investigated [30]. Later, different authors investigated the role of religious beliefs in the conservation of natural resources and the environment [31][32][33][34][35][36]. In a recent study, 18 variables were determined to be effective in individual attitudes and concerns for the environment, with the belief among these variables [37]. In this study, it was demonstrated that some relationship existed between religious beliefs and the variables. In principle, religion and belief are expected to have an impact on individual attitudes and concerns, as they provide a cosmological view of how humans should relate to other living things and their environment [38]. More importantly, religious practices and beliefs offer a moderate life that restricts individuals and, therefore, consumers [4].
In a study to determine the willingness to pay to avoid the effects of water-use restrictions in case of drought in the UK, it was found that the severity and frequency of drought and the costs of avoiding drought were effective factors in the decisions of individuals [39]. In a study on the behavioral psychology of farmers in the fight against drought in China, behavioral rationality was determined to be an effective factor [40]. In a study conducted to find ways to combat drought in Ghana, it was determined that age, education, income, land ownership, and awareness were among the effective factors [41]. In a study on drought and emotional interaction with farmers in the Netherlands, farm income, experience, and perceived control measures were found to be important explanatory variables [42]. In a study on farmers and drought risk perception in the semi-arid region of Tanzania, it was determined that perception increased through education [43]. A study conducted in Ethiopia concluded that the perceived climate change and drought were not sufficient in the fight against them [44]. In a study on drought risk perception among local people of different faith groups in Africa, the effect and importance of social network was emphasized due to the low level of education among the influential factors [45]. In a study on drought risk perception in the USA, no consensus was reached among community members on who should manage it and how, even if there was a perception because drought is complex and sometimes contradictory [46]. In a study conducted in England, it was determined that climate change increased the perception of drought risk [47]. In a study on cognitive risk perception and its effective factors among Polish farmers, it was determined that subjective factors were much more effective than objective factors [48]. In a study conducted to determine the willingness of farmers to pay for participation in drought adaptation policies in the GAP (The Southeast Anatolia Project) Region in Turkey, it was suggested that farmers' perception of drought and fate should be investigated [20].
Knowing the factors that affect individual attitudes and concerns for natural re-sources, the environment, and disasters is of critical importance in determining and implementing more efficient policies and obtaining the desired results. For all these reasons, the importance of drought should not be detached from its social context. Different factors that shape individual risk perceptions have been pointed out in some studies, and while economic theory deals with objective risk variables, psychology and sociology focus on subjective risk variables [42]. Today, drought management is inefficient because the feedback between drought and people are not fully understood, and the concept needs to be rearranged to include human attitude, role, and influence in combating drought [15]. This research aims to determine the belief-based drought perceptions and attitudes of farmers in the Harran plain and Yaylak irrigation areas in GAP-Şanlıurfa and the factors affecting them.

Study Area
In a study on the basic elements of rural social structure in Turkey, it was determined that low income, poor connection with the outside world, social inactivity, low education level, and a belief-based culture are dominant [49]. Generally, individuals living in rural areas of Turkey are not open to change and education, exhibit conservative attitudes, and  [50][51][52]. GAP andŞanlıurfa generally have a patriarchal structure, strong tribal ties, generally depend on the tribal norm and culture of the region in decision making, do not fully participate in democratically organized structures, and are not very open to change [6,53,54].
Although the average annual precipitation in Turkey is around 640 mm, water shortage and drought are experienced in many regions due to the irregularity of precipitation distribution [21]. Turkey is among the countries in the second-highest category in terms of water shortages in the context of the possible effects of global warming in the Mediterranean region [55,56], droughts are expected to increase, especially in summer, due to increased temperatures [22]. The most severe and widespread drought events in Turkey occurred in 1971-1974, 1977, 1982-1984, 1989-1990, 1994, 1996, 2001, 2007-2008, 2013-2014, and 2020 [21,27,57-59]. The Central Anatolia and Southeast Anatolia region (GAP in Turkish acronym) of Turkey often experiences droughts [60]. The GAP region is located in the Euphrates sub-basin, where 128 months of moderate to severe drought have occurred between 1984 and 2015 [61].Şanlıurfa is located in the GAP region, which is Turkey's second least developed region [11].Şanlıurfa, with a population of 2.155 million, is the eighth-most populous city in Turkey [62]. The locations of the GAP region and the province ofŞanlıurfa in Turkey are given in Figure 1. them.

Study Area
In a study on the basic elements of rural social structure in Turkey, it was determined that low income, poor connection with the outside world, social inactivity, low education level, and a belief-based culture are dominant [49]. Generally, individuals living in rural areas of Turkey are not open to change and education, exhibit conservative attitudes, and use religious elements in all areas of life. For this reason, they are cautious about their development, sometimes even prejudiced, and they reject development without examining and questioning [50][51][52]. GAP and Şanlıurfa generally have a patriarchal structure, strong tribal ties, generally depend on the tribal norm and culture of the region in decision making, do not fully participate in democratically organized structures, and are not very open to change [6,53,54].
Although the average annual precipitation in Turkey is around 640 mm, water shortage and drought are experienced in many regions due to the irregularity of precipitation distribution [21]. Turkey is among the countries in the second-highest category in terms of water shortages in the context of the possible effects of global warming in the Mediterranean region [55,56], droughts are expected to increase, especially in summer, due to increased temperatures [22]. The most severe and widespread drought events in Turkey occurred in 1971-1974, 1977, 1982-1984, 1989-1990, 1994, 1996, 2001, 2007-2008, 2013-2014, and 2020 [21,27,57-59]. The Central Anatolia and Southeast Anatolia region (GAP in Turkish acronym) of Turkey often experiences droughts [60]. The GAP region is located in the Euphrates sub-basin, where 128 months of moderate to severe drought have occurred between 1984 and 2015 [61]. Şanlıurfa is located in the GAP region, which is Turkey's second least developed region [11]. Şanlıurfa, with a population of 2.155 million, is the eighth-most populous city in Turkey [62]. The locations of the GAP region and the province of Şanlıurfa in Turkey are given in Figure 1.  Between the years 1929 and 2019 inŞanlıurfa, the average annual amount of precipitation was 463.6 mm, the average annual number of rainy days was 73.5, and the average annual temperature was 18.4 • C [63]. Between the years 2000 and 2020 (21 years), the GAP region received less rainfall than its annual average for 12 years, andŞanlıurfa has received 13% less rainfall than the average of the GAP region [63,64]. Between 2008 and 2017,Şanlıurfa experienced exceptional drought conditions twice, extreme drought twice, severe drought once, moderate drought once, and abnormal drought four times [65]. According to the projection analysis performed by the Ministry of Agriculture and Forestry on the Atatürk Dam in GAP-Şanlıurfa, which is the GAP region's source of hydro energy, drinking water, and irrigation water, the amount of surface water is expected to decrease by 23.3%-and from 67.2% to 55.1% for the south-between 2018 and 2100 [20].
Turkey's sectoral share of agriculture was 6.2% of the gross domestic product in 2018 [25,66], with 17.7% of Turkey's total employment in agriculture [25,67]. The main livelihood inŞanlıurfa is agriculture and agriculture-based industry.Şanlıurfa, with an area of 1.06 million hectares (ha), ranks first in the GAP region and third in Turkey in terms of agricultural areas, where the irrigable area is 941,000 ha and the economically irrigable area is 764,800 ha [68]. By the end of 2019, irrigated agriculture had been conducted on an area of 481,800 ha [66], which was 45.5% of the total land. There is about 2.5 million livestock inŞanlıurfa, with average annual milk production of 426,000 tons [69].
The first irrigations inŞanlıurfa started in 1994 with an area of 30,000 ha in the Harran plain [70]. The irrigation areas expanded with time, and today, it has reached an area of 166,000 ha with the irrigation of Upper Harran. Irrigation systems of gravity 85% and pressure 15% are applied in the irrigation of the Harran plain located in the south of Sanlıurfa. The crop pattern in the Harran plain in 2019 consisted of 98.7% field crops (90% of which were cotton, 6% wheat, 3% corn, and 1% other produce) and 1.3% vegetables, fruits, and other produce. The Yaylak irrigation area located in the northwest ofŞanlıurfa began operations in 2006, with pressurized irrigation conducted on an area of approximately 22,000 ha. The crop pattern in this area in 2019 was 47.7% field crops (79.4% of which were cotton, 7% wheat, 12.2% barley, and 1.4% other produce), 48.3% fruit trees (96.7% of which were pistachio, 2% almonds, 1.3% grapes), and 4% vegetables, ornamental plants, and forest produce. In both irrigation areas, water shortage problems are experienced from time to time [69,71,72]. The locations ofŞanlıurfa-Harran Plain and Yaylak irrigation areas are given in Figure 2.
severe drought once, moderate drought once, and abnormal drought four times [65]. According to the projection analysis performed by the Ministry of Agriculture and Forestry on the Atatürk Dam in GAP-Şanlıurfa, which is the GAP region's source of hydro energy, drinking water, and irrigation water, the amount of surface water is expected to decrease by 23.3%-and from 67.2% to 55.1% for the south-between 2018 and 2100 [20].
Turkey's sectoral share of agriculture was 6.2% of the gross domestic product in 2018 [25,66], with 17.7% of Turkey's total employment in agriculture [25,67]. The main livelihood in Şanlıurfa is agriculture and agriculture-based industry. Şanlıurfa, with an area of 1.06 million hectares (ha), ranks first in the GAP region and third in Turkey in terms of agricultural areas, where the irrigable area is 941,000 ha and the economically irrigable area is 764,800 ha [68]. By the end of 2019, irrigated agriculture had been conducted on an area of 481,800 ha [66], which was 45.5% of the total land. There is about 2.5 million livestock in Şanlıurfa, with average annual milk production of 426,000 tons [69].
The first irrigations in Şanlıurfa started in 1994 with an area of 30,000 ha in the Harran plain [70]. The irrigation areas expanded with time, and today, it has reached an area of 166,000 ha with the irrigation of Upper Harran. Irrigation systems of gravity 85% and pressure 15% are applied in the irrigation of the Harran plain located in the south of Şanlıurfa. The crop pattern in the Harran plain in 2019 consisted of 98.7% field crops (90% of which were cotton, 6% wheat, 3% corn, and 1% other produce) and 1.3% vegetables, fruits, and other produce. The Yaylak irrigation area located in the northwest of Şanlıurfa began operations in 2006, with pressurized irrigation conducted on an area of approximately 22,000 ha. The crop pattern in this area in 2019 was 47.7% field crops (79.4% of which were cotton, 7% wheat, 12.2% barley, and 1.4% other produce), 48.3% fruit trees (96.7% of which were pistachio, 2% almonds, 1.3% grapes), and 4% vegetables, ornamental plants, and forest produce. In both irrigation areas, water shortage problems are experienced from time to time [69,71,72]. The locations of Şanlıurfa-Harran Plain and Yaylak irrigation areas are given in Figure 2.

Data Sources and Survey Design
The main material of the research was the primary data obtained from farmers in the Harran plain and Yaylak irrigation areas. Primary data are often collected in at least one of three ways, viz.: surveys, observation, and interviews [73,74]. The data in this study were obtained through face-to-face surveys with farmers selected by simple random sampling in 2020. The number of farmers registered in the farmer registration system inŞanlıurfa in 2019 was 59,862, of which 15,824 were in the Harran plain and 3180 were in the Yaylak irrigation area. Thus, the number of registered farmers in the research area was 19,004.

Statistical Methods
The sampling volume was found at the 95% confidence limit, with a 5% margin of error, using the Formula (1) [75] given below. where n is the sampling volume; N is the number of samples in the population, i.e., 19,004; p is the rate at which the farmers accepted the survey and were included in the sample, which was taken as 0.5 to reach the maximum number of surveys; q is the rate at which the farmers declined to participate in the survey (1 − p = 0.5); and σ 2 p is the variance ratio, which is given by Formula (2) below.
In Formula (2), Z ∝ 2 is the z-scale value, which is 1.96, and r is the margin of error, i.e., 5%. When these values were substituted in the formula, σ 2 p = 6.51 × 10 −4 was obtained. When σ 2 p and the other values were substituted in Formula (1), n was found to be 377. To be on the safe side, the sampling volume was increased by 15%, and 432 surveys were conducted, of which 308 were conducted on the Harran plain and 124 were conducted in the Yaylak irrigation area. Five questionnaires were incomplete and inaccurate, so only 427 questionnaires were used in the analyses. The obtained data were processed using Excel, depending on the specific code plan, and then ordinal logit regression analysis was performed on STATA.
Ordinal logit regression is a type of analysis used when the dependent variable is a sortable qualitative variable whose level is above 2. There is a hierarchy among the dependent variable levels in an ordinal logit regression model. Levels can be ordered from negative to positive, from the least to the highest [76]. In addition, the independent variables in this method can be of any type. The assumptions need to be tested after the model has been estimated and 3 assumptions need to be checked. There are no multicollinearity problems between independent variables, no model specification error, and no parallel regression assumption. Parallel regression assumption is the assumption that the probability of transition from one level of the dependent variable to another level is equal. In other words, the same parameters must be responsible for the transition from one level of the dependent variable to another level [77].
Odds ratios for variables can also be calculated in ordinal logit regression. Accordingly, if the odds ratio is greater than 1, it means that the probability of being on the next level of the dependent variable is high, and if it is less than 1, it means that it is low. In addition, the calculation of the marginal effects of the variables in the ordinal logit regression makes it easier to understand the effects of the change in the independent variable on the dependent variable. The general representation of ordinal logit regression is given by Formula (3) below [76,78].
Here, γ j jth is the cumulative probability value for the category, µ j jth is the threshold value of the category, β 1 . . . β k are the regression coefficients, x 1 , . . . , x k are the explanatory variables, and k represents the number of explanatory variables.
In the categorical independent variable, the marginal effects should be evaluated by taking the difference of the probability values of the variable. For this purpose, the estimated probability of change for the variable x k with the starting value x start k and the ending value x end k can be obtained by Formula (4), which is given below [79].
Odds values in ordinal logistic regression can be modeled with Formula (5) given below [80]. The odds ratio is the ratio of the odds value of two different events. This is estimated by exp (B).

Uncertainties and Shortcomings
The factors affecting the attitudes and perceptions of individuals are very diverse. Individuals can react differently to the same event depending on time, place, media, and mood. Religious beliefs and the degree of loyalty to them depend on the socio-cultural structure of the research area and are not fully tangible and measurable. Although forms of worship are based on certain rituals, concepts such as conscience and faith cannot be fully materialized. Although it is expected that the answers to be given will vary depending on the degree of belief and loyalty, the question "how much do you adhere to Islam, how often do you practice your beliefs and worship" could not be asked because it creates sensitivity and is not welcome in individuals. Another limitation of the research is that this study has never been done in Turkey, and there are almost no studies directly on this subject in the world. Therefore, there have been inadequacies in comparing and discussing the obtained results with the other studies.

Analysis of the Farm Holdings
Only male farmers participated in the surveys due to the socio-cultural structure of the research region. The average age of the farmers was 48.92 years, 99.5% of them were married, and the average size of their households was 8.64 people. The average farming experience of the participants was 31.84 years, the average size of farmland was 13.11 ha, and the average annual household income was 73,957.87 Turkish lira (TL) ($10,535.31). The average exchange rate for 2020 is $1 = 7.02 TL [81]. The descriptive statistics of the farmers are given in Table 1.

Is Drought a Fate?
About 57.7% of the participants had concerns about climate change, 9.7% were partially concerned, and 32.6% had no such concerns. About 68.3% of the participants felt that drought was caused by fate, 9.5% thought it was only partly caused by fate, and 22.2% believed that it had nothing to do with fate. A study conducted in the Netherlands concluded that farmers' perceptions of risk were shaped by both rational and emotional factors [42]. In the current study, the question of whether drought is caused by fate was taken as the dependent variable, and the location of the irrigation area, size of land, income, farming experience, age, education level, and size of the household were taken as the independent variables. The effects of these independent variables on the dependent variable and the possibility of seeing drought as caused by fate were investigated. In this context, Table 2 shows the results of the ordinal logit analysis.  The baseline level for the irrigation area variable is "Harran Plain", for the land variable the baseline level is "5.0 ha and below", the base level for the income variable is "below 25,000 TL/year" for the experience variable the baseline is "20 years and below" the basic level is "between 18-35", the basic level is "illiterate" for the education level variable, and the basic level is "1-4 people" for the household variable.

4.
Marginal effects were calculated for the "yes" level of the dependent variable.
For the parallel regression assumption, chi-square 27.97 according to the likelihood ratio test, p = 0.217 The likelihood ratio chi-square (LR chi-square) statistic was calculated as 45.65, with p = 0.001. According to this result, it is possible to say that the model was significant at the error level of 0.01. Pseudo R 2 was calculated as 0.070. In ordinal logit regression, after model estimation, there should be no multicollinearity problem between independent variables and no model specification error, and parallel regression assumptions should be tested. Since there was no continuous independent variable in the model, testing for multicollinearity was not performed. In testing for the other two assumptions, the link test was used for the model specification, and the likelihood ratio test was applied to the parallel regression assumption. As a result of the link test applied to the model specification, it was determined that the coefficient of the hatsq variable in the output was statistically insignificant (coefficient = 0.206, p = 0.194). According to this result, it is possible to say that there was no model specification error. From the results of the likelihood ratio test applied to the parallel regression assumption, the test statistic was calculated as 27.97, with p = 0.217. This result proved the parallel regression assumption [76][77][78][79]82].
The coefficient of Yaylak irrigation in the irrigation area variable was calculated as −0.996 (see Table 2), which was statistically significant (p < 0.01). The marginal effect of Yaylak irrigation was calculated as −0.219, which was statistically significant (p < 0.01). According to this result, the probability of seeing drought as caused by fate by farmers in the Yaylak irrigation was 0.219 units less than the probability of seeing drought as caused by fate by farmers in the Harran plain, which was taken as the baseline level. Only land size of at least 30.1 ha was statistically significant (p = 0.023). The coefficient of this variable was calculated as −1.150. The marginal effect of the variable was calculated as −0.266, and it was statistically significant (p = 0.026). According to this result, the probability of seeing drought as caused by fate by farmers who owned 30.1 ha lands or more was 0.266 units less than the probability of same by farmers who had 5.0 ha lands or less, which was the baseline level. In a study conducted to combat drought in Ghana, land size was found to be an effective factor [41]. In the current study, it was determined that income and farming experience were statistically insignificant in perceiving drought as caused by fate (p > 0.10). On the other hand, in the studies conducted in Ghana and the Netherlands, it was determined that income and experience were effective factors [41,42].
For the age variable, the coefficient for the 36-43 years' age range was calculated as 1.164, which was statistically significant (p = 0.037). The marginal effect of this group was found to be 0.283 (p = 0.025). The coefficient for the 44-52 years' age range was calculated as 1.446, which was statistically significant (p = 0.017). The marginal effect of this group was found to be 0.346 (p = 0.011). The coefficient for the 53-60 years' age range was calculated as 1.808, which was statistically significant (p = 0.008). The marginal effect of this group was found to be 0.417 (p = 0.004). For the 61 years and older age group, the coefficient was calculated as 2.643, which was statistically significant (p = 0.002). The marginal effect of this group was found to be 0.535 (p = 0.000). According to these results, it is possible to say that the probability of perceiving drought as caused by fate increased as age increased when the age group 35 years and below, which was the baseline level, was compared with other age groups. In the study conducted in Ghana, age was determined as an effective factor [41]. It was determined that the level of education was statistically insignificant in perceiving drought as caused by fate (p > 0.10). On the other hand, education was determined as an effective factor in studies conducted in Ghana and Tanzania [41,43]. The coefficient for households of between five and nine people was calculated as −1.026, which was statistically significant (p = 0.099). The marginal effect of this group was calculated as −0.153 (p = 0.025). The coefficient for households of 10 or more people was calculated as −1.471, which was statistically significant (p = 0.028). The marginal effect of this group was found to be −0.249 (p = 0.003). According to these results, the probability of perceiving drought as caused by fate by households with five to nine people was 15.3% less than that by households with one to four people, which was the baseline level. This probability for households with 10 or more people was 24.9% less than the baseline.

Probability of Perceiving Drought as Fate
The probabilities of perceiving drought as caused by fate for each independent variable used in the ordinal analysis are given in Table 3, where "yes" is for the dependent variable. According to the results of Table 3, the highest probability of perceiving drought as caused by fate for the irrigation area variable was found for the Harran plain. Farmers in the Harran plain are more conservative, so this result is consistent with pre-research expectations. For the farming experience variable, the highest probability was found among farmers between 21 and 30 years of experience. When this variable group was evaluated as a whole, it can be said that as the farming experience increased, the probability of perceiving drought as caused by fate decreased. Experience is important in tackling problems, and in this sense, the result is reasonable. For the household variable, the highest probability was found in farmers from households with one to four people. When this variable group was evaluated as a whole, the probability of perceiving drought as caused by fate decreased as the household size increased. This result is not consistent with pre-research expectations. Since large families in rural areas work in agriculture, numerical majority and the power to stay safe against other people in the tribal structure, and almost no birth control, are a necessity of conservative life. This result can be explained by the fact that crowded households can also be employed in non-agricultural sectors. In other words, the possible loss of income and welfare as a result of agricultural drought can be compensated for by working in non-agricultural sectors, and this affects perception. For the land size variable, the highest probability was found among farmers who cultivated lands of the area between 5.1 and 10.0 ha. When this variable group was evaluated as a whole, the probability of perceiving drought as caused by fate decreased as the size of land increased. As the size of land increases, the perception of drought differs, measures are taken to avoid loss of welfare. The use of a variety of drought-resistant products and water-saving systems are among the measures taken in this context in the research area. The highest probability for the age variable was found among farmers aged 61 years old and older. When this variable group was evaluated as a whole, the probability of perceiving drought as caused by fate increased with increasing age. For the variable of education level, the highest probability was found among farmers who were primary school graduates. When this variable group was evaluated as a whole, although there was a slightly increasing and decreasing situation, it can be said that the probability of perceiving drought as caused by fate decreased as the education level increased. When age and education level were evaluated together, as the age of the farmers increased, the education level decreased, and the conservative structure increased. In this sense, the results are consistent with pre-research expectations.
For the income variable, the highest probability was found among farmers whose annual income was below 25,000 TL. This group was the most meaningless in terms of subgroups for the probability of perceiving drought as caused by fate. In other words, it is the independent variable that had the least correlation with the dependent variable. In the pre-research expectations, it was expected that the probability of perceiving drought as caused by fate would decrease as income increased, and this result can only be explained by the conservative structure of the research area.

Conclusions
The risk and effects of drought are expected to increase due to the increasing need for crop production and climate change. The adaptive capacity of the agricultural sector in arid and semi-arid regions is largely dependent on farmers' perceptions of drought risk. Understanding farmers' perceptions of drought risk is a necessary prerequisite for designing effective and efficient public drought risk management strategies. These perceptions can be determined based on objective and subjective criteria. Subjective criteria are often more decisive and effective than objective criteria in the behavior of individuals. On the other hand, it is very difficult to embody and measure the subjective criteria precisely due to differing results depending on the socio-cultural structure, time, place, and mood. In the GAP area, which has a semi-arid climate, the socio-economic structure plays a great role in reducing the effects of drought on crop production and more effective use of existing water resources.
According to the results obtained, while settlement location, land size, age, and size of the household were statistically significant to farmers seeing drought as caused by fate, income, experience, and education level were found to be insignificant. In terms of the probability of predicting drought for each independent variable in the ordinal analysis, the highest probabilities were found among farmers in the Harran Plain, with 21-30 years of experience, from a household of one to four people, who owned lands of the area between 5.1 and 10.0 ha, aged 61 and above, who were primary school graduates, and who earned an annual income of less than 25,000 TL which are the groups that policymakers, researchers, and stakeholders should focus on for further work. The subject of drought and precautions should be given more attention in religious education in the research area by giving priority to these groups. The research area is mostly populated by Muslims and has a conservative structure. Islam, which is the religion of Muslims, promotes the protection of natural resources and the environment and takes precautions against disasters. The holy day of Muslims is Friday, when people gather in mosques for the noon prayer. More frequent treatment of drought, waste due to mismanagement of the environment and natural resources, and possible precautions against drought and other natural disasters in Friday sermons. The organization of workshops for farmers by agricultural consultants and the participation of Islamic scholars to support science and knowledge in terms of faith will yield effective results. Individuals do not know what their fate is. Islamic scholars distinguish fate as absolute fate and conditional fate. Therefore, it is up to individuals to make an effort to perform their duties in the best possible way within their God-given abilities. These duties include conserving resources and taking precautions against possible disasters. In addition, special attention should be paid to mothers and children in these matters. Due to the nature of the research area, children mostly spend their time with their mothers and are affected by them. On the other hand, more education programs on these subjects should be given in kindergartens and primary schools.
Since the research subject is sensitive as well as difficult to measure and analyze, it has not been studied much (almost at all). This study is the first in this context in Turkey and one of the few in the world. It is hoped that the results will provide important data to decisionmakers and policymakers in the environment, natural resources, and drought adaptation in Turkey and countries with similar socio-cultural characteristics.