The impact of renewable energy sources on the sustainable development of the economy and greenhouse gas emissions

. Growing population and limited energy resources have impacted energy consumption. Limited fossil fuel resources and increased pollution threaten national and human societies. These elements emphasize energy sources. Renewable energy use affects growth. All new energy sources, including renewables, are crucial for global economic growth. Economic and environmental issues have led to new approaches in international environmental law, including the green economy. This study employs structural vector auto-regression (SVAR) to compare the effects and outcomes of increasing the use of renewable energy in the context of economic growth and greenhouse gas Citation: Candra, O.; Chammam, A.; Alvarez, J.R.N.; Muda, I.; Aybar, H.¸S. The Impact of Renewable Energy Source s on the Sustainable Development of the Economy and Greenhouse Gas Emissions


Introduction
The subject of climate change is a significant one that has led to a great deal of difficulty globally [1][2][3].The burning of fossil fuels contributes to the acceleration of climate change [4,5].As a result, the utilization of environmentally friendly and renewable energy sources (RESs) can be a suitable alternative to the utilization of fossil fuels.[6].These resources are replenishable, and in addition, they do not produce any pollution; as a result, they contribute to the conservation of the environment [7,8].Investment in renewable energy can become a new stimulus for economic growth, increase in national income, improvement of trade balance, development of industries, and increase in employment [9].Some countries with a low and middle economic growth rate can provide the basis for its improvement and promotion through the adoption of optimal policies for the development of renewable energies.For this purpose, first of all, there should be a correct understanding of the economic value of the development of renewable energies and its valueadding parts [10].Therefore, it is necessary to identify the influencing variables in the first step and then evaluate the contribution of each of them in the value chain of renewable energy development [11].Value creation, from the perspective of the traditional definition of economy, includes a wide range of economic benefits for countries with a sustainable development approach.In other words, value creation includes job creation, improvement of health and education, reduction in poverty, and reduction in negative environmental effects [12,13].The development of renewable energy has created millions of jobs directly and indirectly [14].
It Is very difficult and complex to conceptualize economic works in a comprehensive and complete framework that can be measured, collected, and compared, as numerical measurement of some variables, such as education, is very difficult [15].On the other hand, the prioritization between variables is not the same for different countries, and as a result, the effects of project changes will also be different [16].
Many economic systems are dynamic, complex, unpredictable, and sensitive to the initial conditions [17].Therefore, using mathematical and econometric models, it is not possible to achieve a correct understanding of economic and social systems and to analyze and predict the relationships between them.Most of the time, one of the two modeling based econometric methods or economic analysis are used in economic studies and reviews to look at how indicators affect each other [18].Valid international reports, databases, and existing articles should answer this basic question: what has the development of renewable energies done to macroeconomic indicators in different countries?The effects of the development of renewable energies on each of them have been studied [19].
Although the benefits of renewable energy development are increasing significantly, few economic analysis studies have been undertaken in this field.In this article, we have discussed the potential capacities in different parts of the renewable energy value chain, focusing on the development of solar and wind energy [20].In the following, we have discussed the impact of the development of renewable energies on employment and the added value resulting from the development of renewable energies.Furthermore, how the development of renewable energy affects the GDP and the impact of renewable energy on public welfare have also been investigated [21].
The economic and social effects of renewable energy development are divided into four main sections: economic effects, distribution effects, energy system development effects, and other effects [22].In order to examine each of these works, it is necessary to identify the main and influential indicators.Some of the most important indicators are: employment, added value, gross domestic product, and economic prosperity [23].
Most of the studies conducted regarding the impact of the development of renewable energies on the mentioned indicators are limited to the estimation and analysis of the changes made in economic growth due to the use of renewable energies, some of which are mentioned below.Some researchers have investigated the relationship between the development of renewable and non-renewable energy consumption on economic growth in different coun tries.The results show the existence of a positive and significant relationship between the consumption of renewable energy and economic growth in the long term [24][25][26].Further more, there is a two-way causal relationship between non-renewable energy consumption and economic growth in the long and short term [27].
Wang et al. [28] determined if and how trade decouples carbon emissions.To analyze and quantify the impact, Tapio decoupling and structural threshold models are combined.The analysis includeed panel data from 2000 to 2018 for 124 countries.Results revealed a weak dissociation between trade openness, economic growth, and carbon emissions.Using the EKC theory, Wang et al. [29]evaluated trade openness, human capital, renewable energy, and natural resource rent on carbon emissions.Second-generation econometric tests, GMM, and FMOLS were developed from 1990 to 2018.Open trade, human capital, renewable energy consumption, and natural resource rents confirm EKC.Wang et al. [30] studied income inequality's impact on the EKC hypothesis.Income inequality is the threshold variable, economic growth is the explanatory variable, and carbon emission is the explained variable.The threshold panel model was created utilizing the data of 56 economies.The empirical results revealed that income inequality has shifted the link between economic growth and carbon emissions from an inverted U-shaped to an N-shaped curve, which increases the complexity of decoupling economic development and carbon emissions.Li et al. [31] investigated the impact of structural changes on per capita carbon emissions from energy, trade, society, and economics.From 1990 to 2015, 147 countries and four income categories were evaluated using OLS, FMOLS, and the Granger causality test.Global carbon emissions were most affected by economic growth and structure.
In addition, by using the panel co-accumulation method, Pao et al. investigated the relationship between economic growth and the demand for renewable energy and environ mental pollutants in the countries of Mexico, Indonesia, South Korea, and Turkey [32].The results show that the long-term causal relationship is from the side of renewable energy demand towards economic growth, and the relationship between them is positive in the short term.Based on the cointegration technique and the panel vector error correction model, Cho et al. investigated the relationship between renewable energy consumption and economic growth [33].By examining the causality between the variables of renewable energy consumption and economic growth, they concluded that there is a long-term equilibrium relationship between the variables of renewable energy consumption, economic growth, capital, and labor.
In South America, a specific study regarding the impact of renewable energy development on macroeconomic indicators has not been conducted in a consistent manner.Furthermore, considering the environmental concerns caused by the consumption of fossil fuels, it is inevitable to choose appropriate policies for the development of investment and consumption of renewable energies [34].The requirement of this important matter is the awareness of the policy makers and planners regarding how the development of renewable energies affects macroeconomic variables in order to make appropriate decisions.The evidence shows that although the potential for middle income countries to use renewable resources is very high, they have not been properly exploited so far [35].
Making significant investments in the field of renewable energy has caused many changes in the global energy industry and the rapid growth of the global share of renewable energy in the total amount of electricity production.Although dealing with climate change is one of the main and important goals of renewable energy development, decentralization of energy systems and the resulting positive economic effects are the most important goals of renewable energy development.On the other hand, the evaluation of the actions resulting from the economic effects of renewable energies on the development of regions is faced with many methodological and experimental limitations.Investigating the added value of renewable energy development is one of the proposed solutions to measure its economic impact on different societies [36].
This study aims to investigate and compare the effects and results of increasing the use of renewable energy in the process of economic growth and gas emissions in middle income countries (MICs) and high income countries (HICs) using the structural vector auto-regression (SVAR) model.The next section is devoted to the review of the subject literature and the introduction of the research method, in the third section, the experimental model and there sults of this research are presented, and finally, the conclusion and recommendations will be found in the fourth section.

Materials and methods
Investigating the development of renewable energies on macroeconomic indicators has received increasing attention in recent years.In this research, based on the economic analysis method and according to the identified macroeconomic indicators, the impact of the development of renewable energies on each of these indicators is scientifically analyzed and investigated.Using theoretical foundations and empirical study to investigate the impact of renewable energies on the green economy, 3 variable (CO2, RES, and GDP) SVAR models have been used with adjustments.
In this study, the long-term limitation method was used, and the X t vector included the considered variables in the form of the following relationship, in which Equation (1) exists: where, LRES, LGDP,and LCO2 are the logarithm of renewable energy source consumption, gross domestic product, and carbon dioxide emissions (the main greenhouse gas) as an indicator of the green economy, respectively.
The data of renewable energy consumption and greenhouse gas emissions have been collected from the Energy Information Administration (EIA).The statistical population was selected based on the criteria of the World Bank.The World Bank classifies countries according to geographic regions or according to income level.The selected countries in this study were selected based on income level.The World Bank has classified countries based on per capita income into lowincome, middle-income, and high-income countries [37].In addition, in order to compare the impact of renewable energies on the green economy in 2 different structures, another group has been selected in this article.This group includes countries with HICs.It should be noted that in the selection of selected MICs and HICs, the selected countries are producers and consumers of renewable energy.In addition, the statistical data of the variables used in this article were In economic data, it is assumed that there is a long-term and balanced relationship between the variables mentioned in an economic theory.In applied econometric analysis, in order to estimate long-term relationships between variables, their mean and variance are considered constant over time and independent of the time factor, and as a result, behavioral stability is implicitly assumed for them.However, it has been found in applied research that in most cases the stability of behavior with time series variables is not realized.It is possible to interpret the model by forming orthogonal structural impulses.In this study, 3 structural impulses are formed in the form of a matrix, which are presented in Equation ( 2): are the impulses of renewable energy source consump tion, gross domestic product, and carbon dioxide emissions, respectively.Based on this, Equation ( 1) can be expressed in matrix form as follows:

Results and discussion
Before estimating the model, it is necessary to be sure about the reliability of the variables, because unreliable variables cause false regression.For this reason, the Granger and F-Limmer tests are used to check the reliability of the variables.The results of the test show that all the variables were at a reliable level and were identified as non- significant depending on the level of zero.There is no differentiation in the variables.The results of this test are presented in Tables 1 and 2.

Table 1
Granger causality test result Considering that the F-statistic of the research model is not significant at the 1% error level, the tabular data method is not preferred over the consolidated data method.
Instantaneous response functions actually show the dynamic behavior of variables over time and when an impulse as large as one standard deviation occurs.By using this tool, it is possible to analyze the interrelationships between variables in the SVAR model.Figures 1 and 2 show the reaction of system variables due to structural impulses equal to one standard deviation for the next 18 periods for MICs and HICs, respectively.The changes in GDP in response to the RES shock in MICs were unchanged until the first period and since then it has shown a positive response; this positive response is not only a f luctuating state, but it continues until the end of the period and also shows an increasing trend.This was consistent with the results of Wang and Wang's [44] findings.The positive response in HICs is constant and does not increase (Figure 2a).In the final estimate, the response of the changes to the GDP shock in MICs is estimated to be positive.
Figures 1b and 2b show the effect of GDP shock and the response of CO2 changes to this shock in up to 18 periods in MICs and HICs, respectively.In MICs and HICs, changes in GDPdid not change in the beginning until the second period,  In Figure 3, the RES shock effect on CO2 changes up to 18 periods is shown.This and the shock will continue to do so until the end of the period.This was equal in MICs and HICs; however, this shock has more effect on the In Figure 3, the RES shock effect on CO2 changes up to 18 periods is shown.This Figure shows that up to the first time period, CO2 did not show any response to the RES shock, and from the first period to the third period, it has an upward trend.From this stage onwards, it shows an increasing trend, and the shock will continue to do so until the end of the period.This was equal in MICs and HICs; however, this shock has more effect on the CO2 in MICs than HICs.In the final estimate, as shown, the response of CO2 changes to the RES shock in MICs is estimated to be positive.Instantaneous feedback functions are used to check the sign and how each variable changes due to different structural shocks; however, each of the shocks in the fluctuations of the variables have a different degree of importance.Therefore, in order to compare the importance of each of the shocks, the method of variance analysis can be used.This method explains the contribution of each of the structural shocks in the variance of the variables Sustainability 2023, 15, x FOR PEER REVIEW in the short term and the long term.It can be concluded to what extent the forecast error variance in the two variables, GDP and CO2, is explained by the shocks imposed on the variables in the model for MICs and HICs (Figure 4).Based on this, it is observed that during this 18-year period, the shock of real production makes the largest No 197 contribution to its fluctuations.The CO2 shock provided a higher explanatory power compared with other shocks, and GDP and RES shocks are in the following ranks, so that during this 18-year period, the contribution of GDP explanation is always higher than RESs.As a result, it will also have a higher contribution.

Conclusions
In recent years, concerns about the depletion of nonrenewable energy resources and the pollution caused by the consumption of these types of resources have led many countries to consider RESs.For this reason, extensive studies have been conducted in relation to RESs and the methods of obtaining them, which has led to an increase in the production of renewable energy in developed and developing countries.For this purpose, our goal was to analyze the effect that increasing the share of renewable energy sources in the production of electricity can have on gross domestic product and the emission of In recent years, concerns about the depletion of non-renewable energy resources and the pollution caused by the consumption of these types of resources have led many countries to consider RESs.For this reason, extensive studies have been conducted in relation to RESs and the methods of obtaining them , which has led to an increase in the production of renewable energy in developed and developing countries.For this purpose, our goal was to analyze the effect that increasing the share of renewable energy sources in the pro duction of electricity can have on gross domestic product and the emission of greenhouse gases.In order to analyze the problem, we used several methods, including the SVAR method because this method pays attention to the interrelationships of all variables and is able to predict the effects of policies and important economic changes.Thus, in this study, a three-variable SVAR model (RESs, GDP, CO2) was formed for MICs and HICs.In future research, this issue will be investigated using this model alongside instantaneous reaction functions and variance analysis.greenhouse gases.In order to analyze the problem, we used several methods, including the SVAR method because this method pays attention to the interrelationships of all variables and is able to predict the effects of policies and important economic changes.Thus, in this study, a threevariable SVAR model (RESs, GDP, CO2) was formed for MICs and HICs.In future research, this issue will be investigated using this model alongside instantaneous reaction functions and variance analysis.
The results of estimating the structural model of GDP and CO2 show an effect on the autocorrelation vector that a positive shock in RESs has a positive effect on changes in economic growth.Since energy is a driving force in economic growth and development, it is expected that a positive relationship will be established.However, contrary to expectations, The results of estimating the structural model of GDP and CO2 show an effect on the autocorrelation vector that a positive shock in RESs has a positive effect on changes in economic growth.Since energy is a driving force in economic growth and development, it is expected that a positive relationship will be established.However, contrary to expectations, it was observed that the positive participation in RESs has a positive effect on CO2 emissions, and we can see that in the economy of MICs the use of renewable energy has not reduced CO2 emissions; the reason for this can be attributed to the low share of this type of energy in the total energy portfolio of the country searched so that despite the high capacity of RESs in MICs, very limited use of this energy source has been made.On the other hand, weak and old technology in the domestic production process has led to more CO2 emissions and more energy use.This can become an 197 important factor in neutralizing the positive effect of using RESs.In addition, variance analysis shows that the contribution of RESs in explaining the variance of GDP and CO2 prediction error is at a low level.it was observed that the positive participation in RESshasapositiveeffectonCO2 emissions, and we can see that in the economy of MICs the use of renewable energy has not reduced CO2 emissions; the reason for this can be attributed to the low share of this type of energy in the total energy portfolio of the country searched so that despite the high capacity of RESs in MICs, very limited use of this energy source has been made.On the other hand, weak and old technology in the domestic production process has led to more CO2 emissions and more energy use.This can become an important factor in neutralizing the positive effect of using RESs.In addition, variance analysis shows that the contribution of RESs in explaining the variance of GDP and CO2 prediction error is at a low level.
Based on the obtained results, it is recommended that increasing the share of renewable energy fromthetotalenergyproducedshouldbeontheworkhorizonofpolitici ans.Despite the high initial cost of renewable energy production, the jump in the GDP as a result of using this energy is obtained, and it can compensate the initial costs and bring more stable and reliable economic growth due to the stable nature of renewable energy.Regardless of economic fluctuations, it is important to use energy in the direction of growth and provide economic development.In addition to increasing energy security by increasing diversity in the country's energy portfolio, this will lead to improved population health due to its compatibility with the environment.
Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of Sweden No 197 Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of Sweden No 197 This work is distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International License (https://creativecommons.org/licenses/by-sa/4.0/).Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of Sweden No 197 This work is distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International License (https://creativecommons.org/licenses/by-sa/4.0/).Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of SwedenNo 197and in the third period, it shows a positive change.This response has also fluctuated, and its effect continues even until the end of the 18th period.A positive value has also been evaluated in the estimation of the relationship between GDP changes and RES.This shock for HICs has a positive change in the first period.However, it was constant in the other periods.

Figure 1 AnalysisFigure 2
Figure 1 Analysis of the instantaneous response of (a) LGDP to the LRES shock, and (b) LCO2 to the LGDP shock for MICs.LGDP shock for MICs Figure shows that up to the first time period, CO2 did not show any response to the RES shock, and from the first period to the third period, it has an upward trend.From this stage onwards, it shows an increasing trend, This work is distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International License (https://creativecommons.org/licenses/by-sa/4.0/).Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of Sweden No 197

Figure 3
Figure 3 Analysis of the instantaneous response of LCO2 to the LRES shock for (a) MICs and (b) HICs

Figure 4 Variance
Figure 4 Variance analysis of (a) MICs and (b) HICs forecast error This work is distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International License (https://creativecommons.org/licenses/by-sa/4.0/).Proceedings of the 7th International Scientific and Practical Conference «Scientific Trends and Trends in the Context of Globalization» (April 19-20, 2024).Umeå, Kingdom of Sweden No 197

Table 2 F-limmer test result
This work is distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International License (https://creativecommons.org/licenses/by-sa/4.0/).