1. Introduction
The high environmental costs of carbon-rich energy sources and the economic costs of fossil fuels due to their limited supply encourage countries to increase the diversity and consumption of renewable energy sources. Rising regional and global tensions between countries, such as the Russia–Ukraine conflict in recent years, also significantly affect the supply and consumption costs of fossil fuels. Hence, it is critical that the majority of nations formulate and institute strategic renewable energy policies founded on carbon-neutral sources. They include solar, wind, precipitation, tidal forces, ocean waves, and geothermal energy. Enhancing renewable energy sources is also crucial in mitigating CO2 emissions, which contribute immensely to environmental degradation.
When we look at the historical rate of increase in CO
2 emissions, we see that emissions were 6 billion tons in the 1950s and reached 20 billion tons in the 1990s. Today, it is known that the world’s CO
2 emissions exceed 35 billion tons every year [
1]. It is known that a significant portion of CO
2 emissions originate from production, and that CO
2 emissions in developed countries are higher than in developing or underdeveloped countries. To this end, governments should turn to renewable energy sources in order to reduce CO
2 emissions and achieve sustainable development goals [
2,
3]. In fact, when Ember’s Global Electricity Outlook 2024 Report is examined, 30% of global electricity is expected to be produced from renewable sources in 2023. Among the most significant effects of renewable energy consumption (REC) is the minimization of CO
2 emissions, alongside curbing the impact that energy consumption has on environmental degradation. It is evident that governments must accelerate their plans for renewable energy sources if they are to realize the COP 28 goals.
An important problem faced by governments and global actors is how to ensure economic growth (EGRO) in a way that creates minimal environmental degradation. It is also known that EGRO is one of the most important causes of CO
2 emissions and thus environmental degradation [
4]. Therefore, achieving EGRO with renewable energy sources will contribute to reducing CO
2 emissions. In this context, there are studies showing that the relationship between REC and EGRO varies from country to country [
5,
6,
7,
8], as well as studies demonstrating the positive effects of REC on EGRO [
9,
10,
11,
12,
13,
14,
15,
16,
17].
The countries’ external dependency on energy (EDP) is another important parameter that directs governments to diversify and increase renewable energy sources. For example, when Europe’s EDP rate was examined, it was projected to be 58.3% by 2024 [
18]. Regional and global threats in energy-supplying countries endanger energy supply security and pose serious risks to production, particularly to EGRO. In addition, increases in input costs in countries’ EDPs also affect their current account deficits. Consuming renewable energy can be an alternative solution to problems related to energy supply. Therefore, examining the relationship between REC and EDP, and presenting policy recommendations, will provide useful information to governments for the actions they will take in this regard. Nonetheless, the existing literature suggests that there is little research in this field. This research adds to the existing body of knowledge by bridging this gap.
Another significant determinant that influences environmental degradation is financial development (FD). While FD enables the creation of funds that are environmentally friendly, such as green finance practices, it can also cause environmental degradation by increasing EGRO through the use of these funds [
19]. However, it is also known that FD has significant effects on REC [
20]. For example, Shahbaz et al. [
21] found in their study that FD increases the demand for renewable energy. Therefore, examining the relationship between REC and FD and presenting the results with empirical findings impacts the decisions of policymakers. When reviewing studies reported in the literature, it is observed that FD has asymmetric effects on REC in the long term [
22]. In addition, some studies reveal that FD has positive effects on REC [
23,
24,
25]. In addition, while studies reveal that FD has reducing effects on CO
2 emissions [
26], some studies find it has an increasing effect on CO
2 emissions [
27]. Therefore, this study aims to fill the gap in the literature by using current data on the relationship between FD and both REC and CO
2 emissions, especially for countries that supply renewable energy.
The interconnection between REC, EGRO, CO2 emissions, EDP, and FD is analyzed in the current research for nations with the most potential for renewable energy investment. The countries whose data are used in this study were determined based on the “Renewable Energy Country Attractiveness Index” (RECAI), created by Ernst & Young in 2003. Examining the link between REC, EGRO, CO2 emissions, EDP, and FD in RECAI countries is important for revealing the renewable energy investment effectiveness.
When the literature is examined, the connection between REC and various variables has been investigated for different countries and country groups. There are only four different studies on RECAI countries [
28,
29,
30,
31]. The majority of literary records analyze the relationship between energy consumption and the economy, focusing on countries that use renewable energy sources. This causes the special role of producing countries in renewable energy use to be overlooked. Therefore, it is important to focus on the energy–economy–environment link using panel data from countries that produce the most renewable energy. For this reason, this study used data from RECAI countries. However, despite the importance of these countries in terms of renewable energy investments, studies examining the energy–economy–environment link are limited in the literature. This study is the first to examine this link by focusing on financial development and energy dependency in RECAI countries. Thus, it also fills the literature gap regarding countries producing renewable energy.
This study makes several important contributions, focusing on the link between renewable energy, economic, and environmental factors, particularly in countries that are attractive for renewable energy investments. First, this study differs from the general literature in its country selection. The RECAI index, which takes into account energy-specific, macroeconomic, and technological factors, is used in the country selection. This demonstrates that RECAI focuses not only on energy but also on economic stability in country selection. Second, this study advances our understanding of the impact of economic and energy factors on environmental degradation in the context of RECAI countries, which is of the utmost importance for the energy–economy–environment nexus. Thirdly, this study contributes to the existing literature by examining the relationship between renewable energy consumption, economic development, and environmental degradation in RECAI countries, focusing on financial development and energy dependency variables. Thus, this study contributes new data sets and variables to the renewable energy–economy–environment nexus.
Within the scope of this study, the relationship between REC, CO
2 emissions, EGRO, FD, and EDP was investigated using data from 38 RECAI countries for the period 1991–2021. The appropriate panel unit root tests, cointegration tests, and causality tests were chosen based on the results of heterogeneity and cross-section dependence tests. After the stationarity test, analysis results were obtained using the Westerlund [
32] cointegration test, the Augmented Mean Group (AMG) estimator, and the Emirmahmutoglu and Kose [
33] causality test.
This study is organized into five main sections. The
Section 1 examines the theoretical background of the research and emphasizes the importance of the variables used. The
Section 2 provides an overview of the renewable energy–economy–environment hypothesis, focusing on the empirical literature explaining the dynamics of renewable energy and the economy. The
Section 3 presents the data set and explains the research methodology employed in this study. The empirical findings of the research are reported and compared with those of other studies in the
Section 4. The
Section 5 presents conclusions and provides policy suggestions.
3. Data and Methodology
In this section of this study, data on the variables used in the empirical analysis, as well as the methodology employed to analyze the data, will be presented. Annual data for 38 RECAI countries between 1991–2021 were used in the study. In this context, the description of the data used in the analysis and the databases from which these data were obtained are presented in
Table 1.
In this study, a panel data set was created and analyzed using the panel regression method. A panel tracks a sample of individuals at several points in time, thus generating many observations for each sample unit [
84]. Therefore, the empirical analysis is based on the model given in Equation (1) and is analyzed using panel data from 38 RECAI countries.
The econometric tests and the visual representation of the analysis processes are shown in
Figure 1.
Before proceeding to panel data analysis, various preliminary tests should be applied. The choice of cointegration tests and estimation procedures is based on whether the panel units are heterogeneous or homogeneous. Tests for homogeneity are thus required to be conducted prior to selecting appropriate methods [
85].
The homogeneity test developed by Swamy [
86] is suitable for panel structures where the time dimension is large and the panel dimension is small. Pesaran and Yamagata [
87] developed a standardized version of the Swamy test to overcome this constraint. Therefore, this study first investigates homogeneity using the delta test of Pesaran and Yamagata [
87,
88]. The hypotheses and mathematical model of this test are shown in Equations (2) and (3).
In Equation (2), is the Swamy homogeneity test statistic, is the number of cross-sections, is the number of independent variables, and is the Swamy test statistic. In Equation (3), is the adjusted homogeneity test statistic, is the normalized deviation of the estimated coefficient for each cross-section, is the expected value of this statistic, and is the variance of this statistic.
Since the homogeneity or heterogeneity of the variables changes the choice of unit root and cointegration tests, the interdependence of the horizontal cross-sections forming the panel is examined using various horizontal cross-section dependence tests. To test horizontal cross-section dependence, the CD test developed by Pesaran [
89] can be applied to a large number of dynamic panel models that differ in terms of stability and homogeneity [
90]. Therefore, since the cross-sectional dimension is 38 and the time dimension is 31, the CD test developed by Pesaran [
89] is used in this study. The mathematical representation of the CD test is given in Equation (4).
The hypotheses for the CD test can be expressed as follows:
: There is no horizontal cross-section dependence.
: There is horizontal cross-section dependence.
After testing the model for cross-sectional dependence, it is necessary to perform a unit root test to determine the stationarity of the panel variables. It has been observed that traditional unit root tests do not yield satisfactory results when faced with heterogeneity and/or cross-sectional dependence (CSD) in the data. To mitigate the negative effects of this limitation, Pesaran [
91] developed the CIPS test, which falls under the category of second-generation unit root tests. Therefore, this study examines the stationarity of the series using the CIPS test, which falls under the category of second-generation unit root tests that also take into account the presence of inter-unit correlation and heterogeneity. This test provides more robust results since it can control both heterogeneity and cross-sectional dependence (CSD) [
92].
Equation (5) presents the mathematical expression of the CIPS unit root test, where is the number of countries in the panel, is the time dimension, and is the CADF test statistic.
In this stage, after the unit root tests, the Westerlund [
32] cointegration test, which takes into account the horizontal cross-section dependence, is applied to detect a cointegration relationship between the series. The Westerlund [
32] cointegration test consists of four basic test statistics, namely group statistics
and
and panel statistics
and
. The panel cointegration test developed by Westerlund [
32] shows strong performance in small samples and allows for the flexibility to take cross-sectional dependence into account. When cross-sectional dependence is detected, the bootstrap distribution is used, and when no dependence is detected, the classical asymptotic normal distribution is used [
93]. The Westerlund [
32] cointegration test is based on the error correction model (ECM) shown in Equation (6):
where
is the dependent variable,
is the independent variable,
is the error correction coefficient,
is the long-run relationship coefficients,
is the first difference operator,
is the constant term,
is the time trend, and
is the error term. The four different test statistics proposed by Westerlund [
32] are shown in Equations (7)–(10).
where
is the error correction coefficient for each unit,
is the standard error of this coefficient, and
is the time dimension of each unit.
After testing the cointegration relationship between the series, the Augmented Mean Group (AMG) estimator, developed by [
94], which takes into account heterogeneity and cross-sectional dependence, is used to determine the long-run relationship. The AMG estimator provides robust estimates in the presence of cross-sectional dependence (CSD) and also allows for country-specific heterogeneity and non-stationarity [
95]. The equation for the AMG estimator is given in Equation (11) [
96]:
where
is the independent variable,
is all other independent variables,
is unobservable common factors,
is the time dummy variable, and
is the error term.
After determining the long-run coefficients, the causality relationship between the variables is investigated using the Emirmahmutoglu and Kose [
33] causality test, which does not require preliminary tests such as the series containing unit roots and horizontal cross-section dependence. To apply the Emirmahmutoglu and Kose [
33] causality test, a system defined by two equations, shown in Equations (12) and (13), can be established.
where
is the dependent variable,
is the independent variable,
is the horizontal cross-section,
is the time dimension,
is the maximum order of integration for each
, and
is the lag length for both estimated models. Emirmahmutoglu and Kose [
33] have a number of advantages, such as taking causality and cross-sectional dependence into account, being usable even when the series are not stationary at the same level, and providing both individual and panel-level estimates [
97].
4. Findings and Discussion
In this part of this study, the empirical findings on REC, CO
2, FD, EGRO, and EDP variables are compared with those of previous studies using the econometric methods mentioned in the methodology.
Table 2 and
Table 3 present the findings on cross-sectional dependence, concerning units and models.
Table 2 presents the results of horizontal cross-section dependence between the units in the panel using the Pesaran CD test. In this context, cross-sectional dependence is found at the 1% significance level for the REC, FD, CO
2, and EGRO variables, and at the 5% significance level for EDP variable.
Table 3 shows the test results for the horizontal cross-section dependence of the model. The test results for horizontal cross-section dependence analysis include LM, LM adj, and LM CD test statistics, as well as probability values. According to the probability values given,
p < 0.05 means that “Ho: There is no horizontal cross-section dependence” is rejected. Thus, it is determined that the model exhibits horizontal cross-section dependence at a 5% significance level. These results show that there is horizontal cross-section dependence in the model established within the scope of the research, both on the basis of the variables and other influencing factors.
The results of the homogeneity delta test developed by Pesaran and Yamagata [
87] following the horizontal cross-section dependence test are shown in
Table 4. According to the results obtained from the delta test, the null hypothesis that “slope coefficients are homogeneous” is statistically rejected, as
p < 0.05. This result indicates that there is no homogeneity among the variables used in the research; that is, the relationships differ between units.
Following the assessment that the slope coefficients are not homogeneous and that there is horizontal cross-sectional dependence between variables and the model, it was realized that employing second-generation unit root tests is appropriate, considering the availability of correlations between units, along with heterogeneity. In this regard, the study employed the CADF and CIPS tests, which are types of second-generation unit root tests. The results of CADF and CIPS tests are presented in
Table 5, both with and without trend.
According to the unit root test results in
Table 5, the EGRO variable is stationary at the level value in both CADF and CIPS unit root tests. While the FD variable is stationary at first difference according to CADF test results, it is stationary at level according to CIPS results. REC,
, and EDP variables are found to be stationary at first difference in both CADF and CIPS unit root tests.
After analyzing the stationarity levels of the series, the Westerlund [
32] test, which is appropriate for cases where there is cross-sectional dependence, is applied to determine the cointegration relationship. Since the slope coefficients are heterogeneous in our study,
and
test statistics are used to determine whether there is a cointegration relationship. The results of the Westerlund cointegration test are presented in
Table 6.
According to the Westerlund [
32] panel cointegration test results in
Table 6, according to the robust probability values of
and
statistics, the null hypothesis of “No Cointegration” is statistically rejected at 5% significance level, since
p < 0.05. According to this result, there is a cointegration relationship between the variables. The cointegration test results indicate that renewable energy consumption, financial development, economic growth, and carbon emissions share a long-run equilibrium. The result implies that structural interactions between the variables can have long-term implications for the energy transition process. For instance, Germany’s “Energiewende” policy not only subsidized investment in renewables but also created financial instruments like green banks and green bonds to mobilize finance for investment. Due to such financial structural changes, renewable energy utilization in Germany has risen consistently in the long run [
98]. Similarly, it has been empirically established that the development of the Turkish financial system and renewable energy use are in favor of each other and that their nexus has a long-run equilibrium framework [
77]. Having specified a cointegration relation, the Augmented Mean Group (AMG) estimator is applied to estimate the coefficient of the long-run relation among the variables. The estimator is applicable under the conditions of heterogeneous slope parameters and horizontal cross-section dependence.
However, it is necessary to test whether the variables used in our study, FD and EGRO, have an endogeneity problem against REC. In our study, the Durbin–Wu–Hausman test was performed to determine whether the FD variable, the primary independent variable, exhibits endogeneity in terms of the REC variable, which is the dependent variable. Since the alternative hypothesis of the test was rejected (χ
2 = 0.735,
p = 0.391), it was concluded that the FD variable is exogenous. Similarly, it was concluded that the EGRO variable also satisfies the exogeneity condition (χ
2 = 0.903,
p = 0.342). The results derived from the application of the AMG estimator are presented in
Table 7.
Based on the findings established by the AMG Estimator in
Table 7, FD has a positive and significant impact on REC. Based on this finding, FD has a positive influence on REC. To this end, based on the RECAI index, which reflects the most attractive countries for renewable energy investment, it can be concluded that FD fosters REC. These results are in agreement with those of earlier research [
76,
77,
78,
79]. It can thus be concluded that policies promoting the use of renewable energy are utilized more efficiently by countries that are financially advanced.
The other important result of the analysis indicates that CO
2 emissions have a statistically significant negative impact on REC. This study concludes that higher REC is linked to a reduction in CO
2 emissions. The results obtained from the current research are in line with findings in previous studies [
51,
52,
53,
54,
55,
56,
57,
58,
59,
60,
61,
62,
63,
64,
65,
66]. Therefore, in addition to the basic view that increased REC reduces CO
2 emissions, there is also evidence that REC should be encouraged in order to reduce CO
2 emissions.
In the empirical analysis conducted within the scope of the research, it was also found that the EGRO variable has a positive and significant effect on REC. These findings reveal that EGRO has positive effects on REC. The research findings indicate that they align with previous studies [
42,
43]. The results of the research indicate that expanding economies also promote investment in renewable energy. In particular, it was found that the EDP variable has no statistically significant impact on REC. These findings can be interpreted to mean that the theoretically anticipated negative correlation is not applicable in certain nations due to structural, institutional, and political obstacles. Sovacool [
99] notes that energy markets are typically structured to promote the production and consumption of fossil fuels and that market distortions, such as subsidies and institutional privileges, hinder the implementation of renewable energy technologies. This example indicates that even in energy-importing countries, infrastructure for fossil fuels and short-term energy security concerns can limit the shift to renewable energy and thus hinder the development of a substantial relationship with sustainable practices. It is, however, contended that a study on the causal relationships between the variables should be conducted to facilitate a less biased analysis.
The findings in
Table 8 of Emirmahmutoglu and Kose’s [
33] causality test indicate that there is one-way causality from the FD variable to the CO
2 variable at the 10% significance level. The result could be interpreted to indicate that increases in FD boost economic activity, which consequently results in a rise in CO
2 emissions through channels such as production and transport. That said, one-way causality from FD to EGRO at the 1% significance level means that financial development has a significant role in supporting EGRO.
A strong bidirectional relationship exists across the variable REC and CO
2 emissions at the level of significance of 1%. The reciprocal relationship points to the importance of the interdependence of the environment’s sustainability and energy policy measures. This finding is consistent with previous studies [
67]. This highlights the urgency of improving the development of renewable energy technologies and shaping policies geared toward curbing CO
2 emissions. The establishment of a bidirectional causal relationship identifies the influence of REC on the level of CO
2 and the impact of the level of CO
2 on REC concurrently. The findings are in agreement with those obtained from the estimation using the AMG estimator, as presented in
Table 7. Therefore, this study encourages policymakers to implement increased investments in renewable energy as a measure for curbing CO
2 emissions.
Likewise, a causal relationship was established from REC to EGRO at a 5% significance level and from EGRO to REC at a 1% significance level. This discovery, thus, implies that, as much as REC leads to EGRO through the minimization of energy expenses, increasing economies must also invest in renewable energy in order to minimize the impact of EGRO on the environment by limiting CO
2 emissions. The findings from this study are also supported by previous studies [
6,
9,
35,
62,
76]. Additionally, a causality relationship from EDP to REC is established at the 1% level of statistical significance. In this case, the results from RECAI countries indicate that policymakers need to invest more in renewable energy so that reliance on non-renewable energy sources can be reduced. This is also supported by the bidirectional causality relationship between EDP and CO
2 at 1% level of significance. Thus, when this result is balanced with the causality relation between EDP and REC, it can be stated that policymakers’ growing investment in renewable energy to minimize their reliance on overseas energy can be fruitful in both guaranteeing energy supply security as well as managing CO
2 emissions.
In addition, bidirectional causality was found to run from EDP to EGRO at the 10% level of significance and from EGRO to EDP at the 1% level of significance. The finding indicates that EDP affects EGRO since EGRO affects EDP by increasing the demand for energy. Finally, there is a bidirectional causality between CO2 and EGRO at the 5% level of significance. This result implies that the speed of EGRO is a driver of certain factors, while CO2 emissions simultaneously impact EGRO. Thus, this study’s findings imply that governmental bodies should further invest in renewable energy to stimulate sustainable economic growth and ensure energy supply security while preventing environmental degradation.
5. Conclusions
The globe is experiencing numerous environmental issues, including global warming and the degradation of natural resources. The threats are likely to have a negative impact on human life and health, in addition to undermining economic stability, development aspirations, and political conditions. In energy-dependent countries, energy security is a major problem. This study contributes to the literature by investigating the relationship between REC, CO2 emissions, EGRO, FD, and EDP and discussing the findings. This relationship is particularly addressed in the context of countries that are attractive for renewable energy investments.
In this study, coefficient estimates obtained using the AMG estimator revealed that FD and EGRO have a positive and significant effect on REC. On the other hand, a negative and statistically significant relationship is observed between CO2 emissions and REC. Additionally, the relationship between EDP and REC is not statistically significant. This may indicate that external dependence is not the sole determining factor in renewable energy consumption or that this relationship may manifest differently depending on country-specific factors such as economic priorities and technological capacity. Considering the findings from the causality test in this study, FD is the cause of both CO2 emissions and EGRO. The findings from this study can be interpreted as indicating that an increase in FD levels may also increase production and, in parallel, lead to increased consumption and investment. This situation increases EGRO on the one hand while causing an increase in EDP on the other. In this context, to ensure that FD and EGRO do not cause environmental degradation, governments should also implement sustainable energy and financial policies that encourage environmentally friendly investments. In this regard, the use of environmentally friendly financial products and tools such as green bonds, credit policies based on environmental criteria, and carbon markets should be encouraged. Similarly, subsidizing a certain portion of investments by the state or providing tax incentives to encourage the private sector to invest in renewable energy will pave the way for an increase in such investments. Within the scope of preventive restrictive measures, environmental burdens can be reduced within sustainability through tools such as new carbon taxes or sectoral carbon limits. To ensure energy supply security, long-term policies should be developed to accelerate the transition away from fossil fuels and toward domestic renewable sources.
According to the findings, renewable energy supports economic growth, while a growing economy can also support renewable energy investments. In addition, this study determined that EDP is the cause of REC and revealed a reciprocal causality between EDP and CO2. This situation shows that energy needs require both a shift toward renewable sources for security and the development of regulations that will reduce carbon emissions. The reciprocal causality between EDP and EGRO indicates that EGRO triggers EDP by increasing energy demand, and, in turn, EDP triggers EGRO. Furthermore, the analysis reveals a two-way causality between CO2 and EGRO: EGRO triggers CO2 by increasing environmental pressures, while increasing environmental degradation can also have limiting effects on EGRO. When taken together, the findings suggest that governments need to increase investments in renewable energy to minimize environmental degradation while ensuring sustainable economic growth and energy supply security.
Our research also has certain limitations. The sample is restricted to RECAI nations, and possible structural differences between countries in certain variables are deemed limitations of our research. To improve future research, policymakers should increase the sample size, use sector-level information, incorporate other microenvironmental factors, such as ESG, and introduce different insights using dynamic causality analyses.