1. Introduction
The world is currently facing energy poverty, a significant issue that has garnered the attention of numerous academics, economists, governments, and environmentalists [
1]. To address this challenge, many countries have relied on traditional energy sources such as coal, oil, and gas. However, the shift towards clean energy is essential for reducing environmental concerns [
2]. Therefore, to set the world on a path toward achieving net-zero emissions, nations must implement and promote strategies that accelerate the transition from traditional to modern energy sources. It is crucial to adopt a carbon-free mode of production [
3].
Renewable energy (RE) plays a vital role in this energy transition, as the development of the RE sector is critical for sustainable energy supply and consumption [
4]. RE encompasses non-fossil fuel sources generated through innovative technologies, including hydroelectricity, solar, wind, hydrogen, and ocean energy [
5,
6,
7]. Countries have devised strategies to transition from traditional to modern energy sources. However, despite the economic and sustainability benefits of energy evolution, this transition will not occur spontaneously [
8]. Policymakers must act decisively to replace the existing energy framework with a more sustainable one. Wealthy economies are leading the change toward a more sustainable economic future by transforming their energy infrastructure. Developing nations are also participating in this initiative, but they are progressing slowly and laboriously through the energy transition. This sluggish pace is not surprising given the accessibility of traditional energy resources and budgetary constraints. The exacerbating RE investments have given rise to the green finance market (GFM) and thereby positively affect the environmental quality of society [
9]. Despite all the benefits that RE offers, the authors of [
10] argue that RE may be the cause of an increase in security risk and geopolitical conflicts.
The demand for renewable energy consumption (REC) in Southern Africa has surged, prompting countries in the region to enhance their renewable energy production capacity. According to Africa’s Development Dynamics 2030 report on investing in sustainable development, the Southern African region accounts for 60% of Africa’s installed solar energy capacity. As of 2021, it boasted 21.4 GW of the installed renewable electricity capacity, reflecting a 37% increase since 2017. South Africa is at the forefront of the energy transition in the region, making substantial investments in wind, green hydrogen, and solar energy. Other countries, such as Mozambique and Zambia, are expanding their hydropower generation capabilities, while Angola and Botswana are improving solar energy access for their populations. Namibia is also allocating more funds toward investments in wind, green hydrogen, and solar energy. The region is projected to increase its capacity to 908 GW in solar energy and 53 GW in wind energy by 2022 (IRENA). This indicates that the region possesses significant potential to expand its renewable energy production. However, the primary challenge facing these countries is a lack of investment in renewable energy technologies. Additionally, some of their power station equipment is outdated, which has contributed to a decline in REC and public disapproval.
The
Figure 1 below illustrates the share of final energy use from renewable sources in various countries for the year 2021. The data include contributions from solar, wind, geothermal, hydropower, bioenergy, and marine energy sources. Most sub-Saharan African countries, along with a few South American and Asian nations, are represented with darker shading, indicating a reliance on renewable energy of 50% or more. This is often attributed to the use of traditional bioenergy and hydropower. In contrast, industrialized countries in North America, Europe, and parts of the Middle East typically exhibit lighter shades, reflecting a lower share of renewable energy use, ranging from 0% to 20%. This is likely due to their dependence on fossil fuels and nuclear energy.
This paper adds to the literature by analyzing the impact of economic development and other macroeconomic factors on renewable energy consumption in 14 Southern African countries. It uses data from 2000 to 2022. The main research gap identified in this research is that little research has been conducted on this topic. Many scholars have focused on the influence of renewable energy consumption on economic growth. Many scholars believe that energy has the ability to sustain an economy as it enables the functionality of all service sectors. The region was selected because of its peculiar economic structure and the plethora of untapped natural resources that have great potential for REC. In spite of all these resources, countries in the region face a chronic lack of investment in renewable energy infrastructure. This paper is organized as follows:
Section 2 reviews the literature and analyzes the determinants of REC;
Section 3 describes the data and methodology used in the estimation;
Section 4 presents the results obtained from the RALS-EG and MMQR models, and discusses the findings in detail; and
Section 5 concludes with policy recommendations and suggestions for future research. The results further emphasize that among Southern African countries, economic development is very crucial for the betterment of REC. There is also a two-way relationship in that, as highlighted by the report on Energy in Southern Africa, improved REC contributes to economic growth in the region.
2. Literature Review
The study of the relationship between economic growth (EG) and RE has captivated many scholars and environmental economists. There are a few studies that have been conducted on the impact of economic development on RE. In Organization for Economic Co-operation and Development (OECD) nations, RE has a significant influence on EG [
11]. This reviews that OECD nations should advocate for the use of sustainable energy sources as it is a catalyst that encourages the EG of these nations. Ref. [
12] postulates that RE in Europe is said to promote EG, thereby resulting in a reduction in global warming. Nations should invest more in renewable energy resources that improve their environment while enhancing the EG of nations. Ref. [
13] postulates that a correlation exists between RE and EG, using the asymmetric causality test approach and the auto regressive distributive lag (ARDL).
2.1. Economic Growth and Renewable Energy Production
Several scholars have postulated that renewable energy consumption (REC) positively impacts EG [
7,
14,
15,
16,
17]. This implies that renewable energy boosts economic growth. A few scholars have focused on the impact of economic growth on renewable energy production. Among the many researchers that have carried out research on this topic, some focused on the growth hypothesis and postulated that there is a significant impact between energy consumption and growth output. Thus, any transposition in energy consumption or policy will significantly affect economic growth. The empirical results pose a strong correlation between renewable energy consumption and economic growth. REC is important for EG; correspondingly, EG promotes the utilization of renewable energy sources [
18]. On the effect of renewable energy on EG, ref. [
19] carried out a study in Brazil through employing the cointegration test and found that there is a casual relationship between real GDP and the four kinds of energy consumption: non-hydroelectric renewable energy consumption (NHREC), total renewable energy consumption (TREC), non-renewable consumption (NREC), and the total primary energy consumption (TEC). Ref. [
19] observed that there is a long-run equilibrium among Brazil’s real GDP, labor, capital, and each of the four types of consumption. The findings postulated that Brazil is an energy-independent economy and that EG is vital in providing the essential resources for sustainable development. Enhancing RE not only promotes Brazil’s EG and deters the destruction of the environment but also creates opportunities for leadership roles in the international system. Ref. [
20] concurs that RE, labor, and capital significantly promote EG.
However, other researchers do not concur with the view that RE boosts EG. Ref. [
21] state that RE in OECD countries does not strongly impact EG. This may be due to the fact that RE is costly in the short run compared to the long run [
22]. Some countries still depend on NRE to promote EG [
23]. The empirical findings of Ref. [
24] postulated that economic growth negatively impacts RE. Ref. [
25] postulated that in the SR, renewable electricity consumption (REC) has a negative effect on EG. The LR REC has a negative impact on EG for South Africa and is insignificant in Zimbabwe. The governments of these countries should revise their energy policies in order to positively affect their economy.
2.2. Exchange Rate (ER) and Renewable Energy Consumption (REC)
The recent literature has explored the interrelated causal relationship of the exchange rate (ER) with renewable energy consumption and other determinants. Among the findings, it is observed that tourism demand and REC are positively related to each other, while the volatility of the exchange rate significantly negatively affects the latter in China [
26]. A comparative analysis has also been made regarding emerging economies, indicating that the GDP, the balance of payments, the real interest rate, and renewable energy consumption, in general, give rise to the appreciation of the ER, and this depreciation occurs due to inflation factors [
18]. This energy transition factor does differ in the case of the main exchange rate. While USD/EUR and USD/JPY appear insensitive, USD/CNY showed sensitivity regarding energy consumption, REC, and carbon dioxide (CO2) emissions from various sector sources [
27]. These results suggest the need to include the energy transition factor in the exchange rate policy and encourage the use of renewable energy for possible economic benefits.
2.3. Green Finance (GF) and Renewable Energy Consumption (REC)
Green finance (GF) encourages RE production [
28,
29]. Much research has been conducted in support of GF influencing RE. This is because GF fosters scientific investigation and innovation, openness, and economic growth. Given the large investments needed for renewable energy projects, GF is influential in financing these initiatives [
30]. The research on RE resource investment and greenhouses in China in the post-COVID-19 era postulates that green finance has a bidirectional relationship with renewable energy investment [
31]. GF provides higher-level financial support to renewable energy projects, which is more significant. GF has a structural/geometric effect on RE in surrounding cities and neighboring regions by encouraging it [
29,
32]. Ref. [
33] used theoretical models and case studies for this subject, and the results explain that GF assists in closing the gap of inadequacy of finances to fund renewable energy. A number of scholars have expanded this research, including [
9], postulating that GF fosters innovation towards RE and plays a crucial role in mitigating the rise of climate change. GF plays a crucial role in energy transition in E7 through RE dependence [
34]. According to [
35], “scaling up renewable energy” argues that GF reinforces the management and risk sharing of reshelve, public, and private funding in the energy sector industry of E7 countries have hindered the promotion of economic growth, access to power, and energy security. Therefore, the governments of these countries should address the policy hindrances of GF and RE.
2.4. Foreign Direct Investment (FDI) and Renewable Energy Consumption (REC)
FDI is a crucial factor for RE. FDI is found to increase RE consumption [
36]. Therefore, it is beneficial for the government of South Africa and Uganda to promote foreign direct investment so as to enhance renewable energy. Ref. [
36] supports the findings above, and the literature intensively examined the relationship between foreign direct investment (FDI), EG, and banking and development in South Africa. It is advisable for the government of South Africa to invest more in RE sources [
37]. FDI enhances RE consumption through the promotion of investment in nations where capital is scarce [
38]. Foreign direct investment, in as much as it contributes to economic growth, is found to be insignificant when it surpasses the threshold of 95% [
39]. This study utilized the dynamic panel threshold model on 62 countries using data from 1987 to 2016. Ref. [
24] uncovered the crucial benefits of EG and RE. According to [
40], FDI has a significant correlation with RE and EG in nine selected countries, Denmark, Finland, India, Italy, Morocco, Norway, Portugal, and Sweden, as seen when utilizing the climate change performance index (CCPI 18). However, various scholars have discovered that FDI has a disadvantageous effect on renewable resources. The research conducted on South Asian countries postulates that there is a negative correlation between FDI and RE [
41]. The governments of these Asian countries should come up with ways to motivate the financial sector to participate in RE.
2.5. Oil Prices (OPs) and Renewable Energy Consumption (REC)
Research carried out on Turkey revealed that OPs have a deleterious effect on RE. The bootstrap ARDL model was utilized in a study to evaluate the impact of US interest rates on oil prices in Turkey [
36]. Ref. [
42] supports the notation that oil prices do not have a causal relationship with RE. According to [
43], OPs have an inverse impact on RE in Iran, as seen when employing a general to specific model. However, research carried out in Norway, the UK, and the US postulates that there is a presence of positivity correlation between OPs and RE in the US and Norway but no correlation with the UK because it is an exporter, and also due to government intervention [
44].
In addition, not many scholars have paid much attention to the relationship between oil prices and EG [
45,
46,
47]. Kuznets curves were used to analyze the impact of OP, RE, and CO
2. OP and EG do not have a casual correlation [
48].
2.6. Trade Openness (TO) and Renewable Energy Consumption (REC)
Ref. [
5] postulates that there is a nonlinear correlation between TO and RE, as seen in a study of 35 OECD countries using a panel smooth transition regressive method. It was discovered that TO has some merits on renewable energy at the degree of 40.945% of the GDP; after this, trade openness begins to hinder renewable energy. Trade openness is said to increase the ecological footprint, whilst renewable energy and new technology tend to improve the environment. However, [
49] postulates that exacerbating renewable energy leads to a decline in trade openness. Increasing renewable energy will ensure a sustainable economy in long-term decision-making. Non-renewable energy sources were found to foster trade openness. Non-renewable energy exacerbates trade openness [
50]. The government should come up with ways of mitigating the negative effects of renewable energy whilst expanding trade. TO, EG, and technological growth foster renewable energy utilization [
51].
2.7. Research Gap
The prior literature has expanded this area of research, but not many scholars have capitalized on the impact of renewable electricity output, exchange rates, foreign direct investment, oil prices, trade openness, green finance, and economic growth. Few studies have been carried out on the effects of exchange rates and trade openness on RE. However, much work needs to be conducted on this. Many scholars have not utilized renewable resources or financial development as their proxies, which makes the present research unique from all other past studies carried out. Most of the research was conducted on a particular nation, China, and no research has been conducted on Southern African countries besides South Africa, in which few scholars showed interest. However, this paper evaluates the role of economic development on renewable energy, which is a novelty as we have not found any prior research on this area.
4. Results
Table 2 depicts the descriptive statistic data. The number of observations for each variable is 314. The data collected are from 2000 to 2022 in this study. The median, standard deviation, mean, maximum, and minimum for the variables are shown in
Table 2 below.
This paper followed a three-stage sequence for the analysis of the data. We started by testing the preliminary test on the variables. In this first stage, we ran the CD test of Pesaran [
58] and Fisher to evaluate if the variables depict significant CD. In this research, we found that CD is significant. The second-generation method was employed because of its ability to overcome CD. The second-generation method was utilized for the existence of CD, whilst for the non-existence CD, the first-generation method was utilized. The variables used show no cross-dependency; thus, the second-generation method was employed. See
Table 3.
The ADF and the RALS-ADF techniques were employed in this study to test the order of integration of the variables, as shown in
Table 4. In addition, another column in the table represents the RALS-ADF test statistic with the adjustment for endogeneity. The ADF test checks for stationarity at all levels. A test statistic smaller (more negative) than the critical values indicates stationarity.
From these results, variables such as EG, FDI, and GF are significant at their different levels (*, **, or ***) and reject the null hypothesis of the unit root and are hence stationary. The rest of the variables, RE, OP, and TO, are not stationary at all levels, as seen by the ADF result. According to the results from the RALS-ADF test, the RALS-ADF test is an improved version of the ADF test as it considers endogeneity and small-sample bias. The results under the RALS-ADF test indicate that most of the series turn stationary once this test is performed. For instance, variables such as ER, GF, FDI, and EG have significant results at 1%*** levels, hence confirming their stationarity. However, some of the variables remain non-stationary, like RE, GR, and TO.
The variables that were not stationary at every level were tested at their first differences for stationarity: ∆RE, ∆OP, and ∆TO. It can be seen that they are all stationary at the first difference; hence, they are integrated of order one, I(1) [
59].
Second Stage: Cointegration Results.
Table 5 shows the cointegration results. In this second stage, we examined the presence of the long-run (LR) correlation of variables. This study employed the Engle and Granger (EG) and the Residual Augmented Least Squares (RALS-EG) methods for testing cointegration. The EG method utilizes the residuals of the t-statistics in their evaluation. The RALS-EG cointegration was employed to determine the long-run correlation of variables used in this study. The RALS-ADF method was created by [
60] by integrating the EG cointegration model and the EG model [
61]. Ref. [
62] were the first to use the RALS method in their work. In scenarios where the error terms have some uniformity with a non-normal distribution, the RALS method is utilized to give excellent results. The RALS method gives robust results as it employs the second and third classical cointegration residuals to develop new terms [
63]. The RALS-EG method has been broadly used in the research because of its preeminence of superior results [
64].
Table 5 depicts the cointegration findings. The RALS -EG statistic shows that the critical values of (−4.01), which are less than the critical values (−4.80, −4.19, and −3.88, respectively) at the 10% significant level. The results of the RALS -EG test were also verified with conventional methods, in this case the EG test. It was concluded that there is an LR relationship between the dependent variables and the independent variables. After the verification of cointegration association, the long-run effects were estimated, and the MMQR method was employed to determine the negative effects of the variables.
Interpretation of Findings
Table 6 reviews the results of the MMQR model. The link between EG, OP, ER, TO, GF, and FDI is investigated using the MMQR model after the CD, unit root, and cointegration. Five quantiles were chosen to investigate the variable according to the MMQR model. The panel series of MMQR was analyzed by moving through the quantile of variables. The EG results are statistically and positively significant at all quantiles (q05–q95). If EG increases by 1%, RE increases by 1.794, 1.661, 1.438, 1.279, and 1.193. We conclude that if countries in Southern African desire to increase their EG, then they have to utilize their renewable energy. EG findings do not show an asymmetric effect on REC in Southern African countries. These results agree with those of other scholars who postulate that renewable energy utility has a positive effect on economic growth [
11,
18,
20,
65,
66,
67]. Secondly, the OP results are statistically significant across all quantiles. A 1% increase in oil prices increases the dependent variable by 0.132, 0.104, 0.059, 0.026, and 0.009. These results are different from those of other scholars. This may be because of the different methods used in their research. The results indicate that oil prices have a negative impact on renewable energy. The oil prices are high in Southern Africa, which makes it expensive to operate REC energy sources such as hydro-electricity power plants. These results agree with those of [
68]. Thirdly, the exchange rate results are statistically significant across all quantiles (q05–q95). This means that a percentage increase in the ER has a positive effect on REC by 0.011, 0.005, −0.005, 0.012, and −0.015. The ER has an inverse effect on REC. An increase in the ER reduces REC in Southern African countries. These results do not agree with those of [
18], who postulated that REC promotes ER appreciation. The explanation of the differences in the findings may also include the countries of study and the high prices being charged for REC in these countries. Therefore, the governments of these nations need to shield customers from high prices by subsidizing REC. It is postulated that interest rates cause the appreciation of currency, and therefore, the currency rate could be used to solve this problem.
The TO findings are significant. An increase of 1% in trade openness will cause an increase in REC. TO promotes REC in Southern African countries. Trade openness in terms of the removal of bans and a reduction in duty tax encourages the sharing of innovative renewable energy technologies with neighboring countries. These results disagree with those of [
69], which state that non-renewable resources increase trade openness and renewable energy reduces TO. GF is insignificant. An increase in GF by 1% will not have any effect on REC, as shown by the results in
Table 6 (0.000%) from q05 to q95. This may be because of a lack of governmental and private investment in the Southern African region [
69]. These results are different from those of that postulate that GF fosters RE investment. The FDI results are significant, and explain that a 1% increase in FDI will cause an increase in REC of 22.245, 1.972, 1.515, 1.190, and 1.014 from q5 to q95. FDI is said to foster innovation in terms of energy efficiency. FDI opens the opportunity for technological advancement.
Table 7 shows the results of the robustness check using the Driscoll–Kraay Standard Errors method, where the dependent variable is renewable energy consumption. In fact, the DKSE method was applied to take care of heteroscedasticity and cross-sectional dependence in data. The results of the DKSE method support the robustness of the original estimations from the MMQR model. Key variables such as economic growth (EG), oil prices (OPs), and foreign direct investment (FDI) retain their significant and positive influence on renewable energy consumption. Variables like the exchange rate and trade openness show marginal significance, reflecting their possible indirect influence.
However, GF does not exhibit a significant relationship, which may indicate that the influence of GF requires further investigation or perhaps other factors. The evidence obtained using the DKSE method further reinforces the results of the MMQR model in establishing positive and significant relationships of economic growth, oil prices, and foreign direct investment with renewable energy consumption. This strengthens the robustness of the initial estimations and highlights the consistent impact of these variables across different econometric techniques. These findings underline the importance of economic and trade policies, oil price dynamics, and FDI in driving renewable energy adoption, supporting the validity of the main results in the article.
5. Conclusions and Future Research Recommendations
5.1. Conclusions
In conclusion, the current literature provides insight into the achievement of sustainable renewable energy consumption in Southern African countries. The literature also provides essential information that is useful in covering the existing gap that is listed above. The impact of economic development and other macroeconomic factors in Southern Africa is significant. In accordance with the research gap presented above, economic development and other macroeconomic factors positively impact REC. The positive effect of EG, OP, ER, TO, GF, and FDI on renewable energy is notable. The presence of positive results across the quantile reviews indicates that there is no asymmetric effect on renewable energy. Therefore, Southern African countries should invest more in renewable energy, considering the role it plays in the development of the economy.
The present research also furthers the growing body of knowledge by showing the importance of GF, ER, OP, TO, and FDI in improving REC in Southern African countries. These policies must also encourage public and private sectors to invest. The findings postulate that EG, OP, ER, TO, GF, and FDI are positively impacted by REC. The governments of Southern African nations should come up with ways to attract more direct investment by encouraging innovation in these countries. The government must be able to link EG and RE for the betterment of the lives of the people. RE will increase if the life expectancy of the people in these countries increases, since several scholars have shown that there is low life expectancy due to the use of non-renewable energy. The governments or the respected decision makers in different countries should put aside financial resources to be used for the innovation of efficient energy technologies and environmentally friendly projects [
6]. The increase in foreign direct investment will lead to a positive effect on EG. This will result in a positive effect on the significance of FDI in promoting growth among particular countries, as highlighted by these findings. Additionally, the results of our study provide credence to the endogenous growth model, which holds that FDI fosters economic development by increasing capital accumulation and productivity. Governments must therefore encourage FDI in order to advance technology, improve quality management practices, and gain access to global markets. Doing so will increase the likelihood of economic development by boosting productivity and enhancing efficiency. The most faced limitation was the lack of data for some of the countries that were not included, such as Zimbabwe and Seychelles, and we had to employ data from 2000 as there were no data from the 1990s for some countries. Other scholars can conduct more research on this topic, especially if carried out in other regions or if other methods are employed.
5.2. Future Research Recommendations
The present study provides valuable insight into the impact of economic growth and macroeconomic indicators on driving the consumption of renewable energy (REC) in the countries of Southern Africa. Subsequent studies could utilize alternative econometric techniques, such as panel structural equation modeling (SEM), machine learning-based forecasting models, or dynamic panel data models, to assess the sensitivity of the findings and detect any potential nonlinear effects. While the present research study focused on Southern African countries, future studies would be useful if they could extend the analysis to other geographical regions, e.g., East Africa, West Africa, or inter-continental comparisons, in order to identify regional variations in the impact of macroeconomic variables on REC. Also, future research could examine how different economic sectors (e.g., agriculture, industry, and service sectors) influence the consumption of renewable energy since sectoral trends in energy demand may impact policy attention differently.
Additionally, the relationship between regulatory quality, political stability, and anti-corruption efforts and the impact on REC remains a developing field of research. Much more research must be conducted on the role that governance institutions have in driving green finance, FDI, and the impact of trade openness on renewable energy adoption. Furthermore, future research should examine the socio-economic effects of the transition from fossil fuels to renewable energy, including employment trends, income inequality, and health benefits. A deeper examination of the correlation between REC and life expectancy may provide additional policy implications.
The scope of future technologies, such as smart grids, blockchain for energy trading, and artificial intelligence-based energy optimization, needs to be uncovered to explore how these technologies can further enable REC in emerging economies. Also, future studies need to assess the effectiveness of existing renewable energy policies in Southern Africa using policy impact analysis and the identification of best practices that other developing economies can replicate. In addition, the connection between REC and climate resilience needs to be explored in future studies, with an emphasis on how the ippenncreased use of renewable energy can help Southern African countries mitigate climate-related challenges and adapt to climate change. Finally, more research on the degree to which PPPs and innovative financing instruments (e.g., green bonds, carbon credits, and impact investing) can drive REC growth would provide policymakers with efficient tools to create more resources.