Next Article in Journal
How Do Performance Shortfalls Shape on Entrepreneurial Orientation? The Role of Managerial Overconfidence and Myopia
Previous Article in Journal
Black Soldier Fly Frass Fertilizer Outperforms Traditional Fertilizers in Terms of Plant Growth in Restoration in Madagascar
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Fintech or Government Effectiveness? Renewable Energy Transition in Asia

1
School of Economic and Management, Taiyuan University of Technology, Taiyuan 030024, China
2
Shanxi Key Laboratory of Data Element Innovation and Economic Decision Analysis, Taiyuan 030024, China
*
Author to whom correspondence should be addressed.
Sustainability 2025, 17(15), 7153; https://doi.org/10.3390/su17157153
Submission received: 6 July 2025 / Revised: 2 August 2025 / Accepted: 4 August 2025 / Published: 7 August 2025

Abstract

Fintech and government effectiveness are encouraged to be considered in the campaign towards renewable energy transition. However, the literature on these factors is tilted towards their impact on carbon emissions and less on fintech and energy transition. To address this significant gap in the literature, this current study employs the Cross-Sectional Autoregressive Distributed Lag (CS-ARDL) to estimate the influence of fintech and government effectiveness on renewable energy transition and carbon emissions in selected Asian countries. The results reveal that in the long and short terms, government effectiveness encourages the transition to renewable energy; however, government effectiveness effect on carbon emissions is insignificant in both terms. Nevertheless, fintech is statistically not significant in affecting the renewable energy transition and carbon emissions. Based on the study findings, it is recommended that a strong governance system is required to achieve a clean energy transition.

1. Introduction

To provide a practical foundation for this study, it is essential to acknowledge existing efforts in specific sectors. For instance, the “Green Credit Guidelines” under the China Banking Regulatory Commission and the Indian National Electric Mobility Mission are government-led programs that incentivize clean technology by leveraging financial innovation. Private sector efforts—for instance, through Ant Financial’s “Ant Forest” app— demonstrate how fintech can be leveraged to support green programs through personal carbon-reduction incentives. These illustrations highlight the greater potential of fintech and underscore the crucial role of sound governance in promoting environmental sustainability in Asia, providing reassurance about the effectiveness of these initiatives. Notwithstanding the need for a sustainable economic environment globally to ensure the continuity of the environment and the ecosystem in developing and developed countries, achieving economic prosperity and environmental sustainability has been a massive challenge [1]. The over-dependence on fossil fuels to drive economic activities and political agendas by countries has threatened the quality of the environment due to the carbon emissions from these sources [2]. These activities have led to the deterioration of the ecosystem and have significantly threatened human life [3]. The increasing release of GHG emissions is causing the rise in the earth’s temperature [4]. Between 2030 and 2050, it is projected that global warming is expected to reach 1.5 degrees Celsius due to the high carbon emissions globally. There is a need to promote the consumption of renewable energies to mitigate the environmental impact of fossil fuels, ensuring a sustainable economy and environment [5].
Recently, the issue of environmental degradation resulting from global warming has become a serious global concern. Various economies are seeking the most effective ways to mitigate the impact of global warming within their countries. GHG emissions contribute to climate change, primarily resulting from the burning of fossil fuels. The carbon dioxide and methane released into the atmosphere as a result of fossil fuel combustion not only contaminate the environment but also the air and water bodies [6]. Several efforts by international concern bodies to address the effects of global warming on the environment have faced various ups and downs, making most of these efforts ineffective [7]. Researchers, as a way of contributing to the solution of this problem, have provided empirical evidence to support a sustainable pathway to reduce the harm caused by carbon emissions. In addition, researchers have recommended the implementation and enforcement of suitable and rigid policies to protect the environment and the ecosystem [8].
Economic and environmental policies in the fight against global warming cannot be overlooked. Government effectiveness is required to ensure economic prosperity and the effective management of natural resources [9]. However, issues related to climate change and corruption have made it difficult for most countries to achieve the Sustainable Development Goals. It is believed that a decrease in corruption would significantly lessen the harmful influence of energy use on environmental deterioration. According to the statistics from the Corruption Perceptions Index, it was observed that between 2012 and 2020, China’s corruption perception index increased from 39 to 42, India’s rose from 36 to 40, and Pakistan’s rose from 27 to 31. However, there was a decrease in Sri Lanka’s corruption perceptions index from 40 to 38 [10]. Considering this, it is important to implement policies that control corruption and are paramount to achieving effective enforcement of energy regulations and consumption. In the view of Li and Tong [11], empowering transparency and accountability in the governance system is required to combat corruption and its impact on sustainable development. Good governance ensures the effective allocation of resources and the investment in clean technologies that are paramount to achieving environmental sustainability. It is argued that climate policy is required to control carbon emissions [12], and its impact on the environment. Additionally, laws addressing climate change are important for securing the ecosystem and controlling greenhouse gas emissions (GHG) to protect biodiversity [6]. Environmental regulators are encouraged to use renewable energy as they have the tendency to control emissions and are considered environmentally friendly [13]. Environmental regulation plays a crucial role in mitigating carbon emissions.
In the last few decades, financial technology has transformed the financial system. Financial technology (fintech) includes “mobile payments, banking online, blockchain technology, cryptocurrencies, and crowdfunding”. The development of fintech has significantly brought a relevant dimension to the area of financial development [9]. It has received much attention in the literature due to its ability to democratize fiscal service and promote financial inclusion; however, there are other environmental matters related to it that need to be explored [14]. However, the theoretical fintech drivers of environmental impacts remain underexplored, particularly when results vary from anticipation. The potential for fintech to create green effects is potentially hindered by policy limitations, constrained infrastructure, or perverse incentives, which require more emphasis. The promotion of green finance through fintech is a way it contributes to environmental quality. As green finance ensures loans for clean energy, fintech ensures the efficacy of clean energy. According to Muganyi et al. [15], fintech helps to maximize energy consumption with less pollution and waste. The growing attention of fintech globally over the years has caused researchers to make claims that the advancement of fintech directly or indirectly affects the adoption of renewable energies, which is the right path towards a clean energy transition. The development of fintech is seen as a sustainable pathway to move away from the over-reliance on natural resources that deteriorate the environment like coal, oil, and gas. According to Tao et al. [16], the potential of fintech to address global warming and to ensure smooth renewable energy trade alongside facilitating environmental finances contributes significantly to the establishment of the low-economy economic system. In this regard, the development and implementation of fintech will reduce countries’ dependency on fossil fuels for economic activities to sustainable energy. According to the study of Fareed and Pata [17], the authors stated that financial technology innovation helps to minimize energy consumption and carbon emissions. Similarly, the study by An et al. [18] established the impact that financial technology innovation has on carbon emissions.
Asia is well known globally because of its population, and most of the countries on the continent are well known. Asia accounts for more than half of the global population, making it a focal region for environmental and energy-related research. Asia is selected for the study due to its large population and high energy consumption levels. Despite the development and growth of most countries on the continent and their commitment to a renewable energy transition, the continent holds the largest use of coal, which accounts for around 53% [5]. The continent is considered the highest GHG emitter globally. Most countries on the continent emit more emissions because of industrial development on the continent. For example, China is the largest global GHG emitter. Furthermore, over the past three decades, countries such as China, Japan, and India have experienced a significant rise in energy consumption, leading to high emissions [19]. Therefore, it is necessary to examine whether fintech and government effectiveness can promote renewable energy transition and reduce carbon emissions on the continent. Can the continent’s adoption of fintech significantly reduce its reliance on fossil fuels? Government effectiveness is also important to regulate, implement, and enforce energy policies to ensure a smooth renewable energy transition on the continent and the globe at large. Again, the continent plays a crucial role in the global financial system because of its population and foreign reserves [20].
To better understand the contributions of Asian countries to the renewable energy transition and carbon emissions mitigation, we have derived data from the World Bank Indicators (WDI) on the ten largest economies in China based on reports from the IMF and IEA 2023. The data covers their emissions levels, renewable energy use percentage, and percentage of their population with access to clean fuels and technologies for cooking. The information presented in Figure 1 shows the total carbon emissions per capita without Land Use Change Land Use and Forestry. It can be seen from Figure 1 that Saudi Arabia, Korea, and China emit the most carbon emissions. Figure 2 shows the percentage of the total population with access to clean fuels and technologies for cooking. This is important as it increases household use of renewable energies. The information presented in Figure 2 shows that Japan, Saudi Arabia, Israel, and Korea have achieved 100% access to clean fuels and technologies for cooking for their populations from 2000 to 2020. Figure 3 shows the percentage of total renewable energy use in these countries. The data is from 1990 to 2020, and the percentage has been decreasing for many countries.
The impact of fintech on the environment can come from different directions; however, the impact of fintech on the renewable energy transition in Asia remains to be explored. According to Jie et al. [21], the investigation of the impact of financial technology innovation on the environment is solely on carbon and GHG emissions. This has limited the scope and the impact of fintech on the environment. For example, the study of Li et al. [4] focused on fintech and carbon emissions; Zhuang [22] focused on fintech, economic growth, and environmental sustainability; Zhang et al. [20] focused on fintech and economic growth; Li et al. [23] focused on fintech and economic growth; and Aziz et al. [24] focused on fintech and green growth. With the government effectiveness, most studies have used some government indicators to investigate their effect on energy transition. For example, in Africa, Amoah et al. [25] have investigated the effect of corruption on energy transition; in the MENA countries Saadaoui [26] has investigated the effect of political and institutional quality on energy transition; Ullah et al. [27] investigated the impact of the government on energy transition in belt and road initiative countries; Akhtar et al. [28] focused on governance indicators and urbanization, but the impact of government effectiveness on renewable energy transition is yet to be explored among Asian countries.
The discussion above has identified a significant gap in the literature that needs to be addressed, and this study addresses this gap and contributes to the existing literature as follows: (1) this current study evaluates the influence fintech has on renewable energy transition in Asia. This will make a significant contribution to the existing literature as it will highlight how the adoption of fintech will shape the energy sector and reduce reliance on fossil fuels. Financial technology innovation plays a crucial role in determining the type of energy a country consumes. In the literature, it has been established that fintech has a significant impact on the environment due to its effect on carbon emissions. Since energy use also has an impact on carbon emissions, it is important to analyze the type of energy that fintech promotes to fully understand its impact on the environment. (2) The study investigates the impact of government effectiveness on renewable energy transition. The study will further highlight the importance of effectively formulating and implementing renewable energy policies and the significant role of government in the transition. Government effectiveness ensures well-established and clear rules and regulations, transparency and accountability, rights and freedoms, checks and balances, all of which are essential qualities needed to champion renewable projects. Although other government indicators have been investigated, the relevance of government effectiveness remains unaddressed and needs to be explored. (3) The study considers Asian countries, which broadens the scope of the literature. The study, moreover, contributes to the existing literature by utilizing panel data that covers one of the world’s most promising continents. This will serve as a case study for both developing and developed countries. Asia is always a continent of interest because of its population and economic might, so considering Asia for the study would make the policies of the study more applicable to other continents. (4) The study further broadens the scope by investigating the impact of government effectiveness and fintech on carbon emissions. To make the study more useful in the field, the impact of the various variables on carbon emissions is assessed to make a comparative analysis. It is equally important to understand how these variables impact the environment from both energy consumption and carbon emissions perspectives.

2. Literature

Global warming’s impact on environmental sustainability is one of the most pressing problems the world is currently facing. The effect of global warming is deteriorating the quality of the ecosystem [6]. Since the beginning of modernization and industrial development, the global climate has transformed rapidly [29]. The literature has assessed the impact of several factors on carbon emissions mitigation (environmental quality), and has recorded different empirical evidence based on the methodology used, geographical area, data availability, and other factors. Zhang et al. [30] investigated some of the factors that affect the environment through carbon emissions and found that green innovation has a direct and significant influence on carbon emissions while economic growth has a negative impact. Similarly, the study of Maulidar et al. [31] analyzed some of the factors that affect carbon emissions in Indonesia and recorded that capital formation negatively influences carbon emissions while agriculture and economic growth have a distracting influence on carbon emissions. The study specifically focuses on the role of fintech and government effectiveness in promoting renewable energy transition and reducing carbon emissions. Hence, the literature review is structured to critically examine how previous studies have linked these variables to environmental outcomes and where gaps still exist.

2.1. Fintech and Environmental Sustainability

Over the past few decades, the global financial market has undergone a significant transformation, marked by the introduction of numerous products and services. This transformation is mostly influenced by fintech, which has emerged as a key player in financial innovation and inclusion [9]. This has raised the interest of researchers to investigate the impact of fintech advancements on sustainable economy, global warming, and energy consumption [32]. Historical evidence has proven fintech to have a significant effect on environmental sustainability, with the recorded results showing either positive or negative effects. According to Li et al. [33], fintech has made it possible for organizations to obtain compensation for embarking on projects that help in carbon mitigation to ensure a sustainable environment. As a way of contributing to the literature, Croutzet and Dabbous [34] investigated the relationship between fintech, clean energy investment, saving, and consumption. Their findings revealed that fintech has a potential impact on the variables in OECD economies. Similarly, the study of Ramzan et al. [35] showed that fintech has a negative and significant impact on environmental quality in 35 selected countries within the OECD. In addition, the results further recorded a significant effect of financial technology innovation on environmental quality and are perceived to facilitate the achievement of Sustainable Development Goals. Again, a study on financial technology innovation and environmental sustainability in Asian economies revealed that financial technology innovation significantly improves environmental sustainability. The study further highlighted that financial technology innovation in Bangladesh has set the country on the road to achieving the SDGs as it promotes environmental sustainability [36]. The study by Razzaq et al. [37] also revealed a significant correlation between fintech and renewable energy utilization. However, a study by Teng and Shen [38] on the Chinese economy revealed that fintech escalates carbon emissions in the country.
Although, overall positive results are achieved, the conceptual mechanisms by which fintech impacts environmental performance are still evolving. The heterogeneous results, varying from positive to negative or statistically nonsignificant, imply that fintech’s impact may depend on institutional quality, policy enforcement, and technological readiness. For example, fintech instruments can trigger green finance, but in the absence of effective regulation, their environmental impacts cannot be fully realized. This leads to additional research on moderating variables, such as governance and infrastructure.

2.2. Governance and Environmental Sustainability

Government effectiveness has to do with governance without corruption, respect for human rights, respect for the rule of law, as well as checks and balance [39]. It is the reflection of the country’s governance and institutions. Weak governance system promotes corruption [40]. According to Akalin and Erdogan [41], through the institutions of a country, the government is able to regulate emissions levels through democratic and equitable restrictions. In the work of Amoah et al. [25], they investigated how corruption affects energy transition in 36 African countries. The study findings revealed that corruption is irrelevant to renewable energy in these countries. Furthermore, Saadaoui’s [26] study on MENA countries to investigate how political and institutional quality influence energy transition revealed that these factors encourage energy transition. Edomah [42] highlighted that government has a significant role to play in the energy transition. In addition. The study of Egbetokun et al. [43] recorded that government effectiveness has a significant impact on environmental quality. This implies that the presence of government effectiveness promotes environmental sustainability. In the same way, the study of Irfan et al. [44] showed a significant and negative effect of government effectiveness on carbon emissions.
However, most of these analyses utilize broader governance indicators, such as corruption, institutional quality, or political stability, instead of directly isolating government effectiveness as a distinct variable. The originality of this study lies in its focus on government effectiveness, a more dynamic and active construct that captures the manner in which policies are formulated and implemented. This can provide us with better information on how state capability affects energy and environmental outcomes.

2.3. Policy Implications Across Regions

Asia is the highest emitter continent in the world followed by North America. This high emission is driven by high levels of production and the use of high-emission technologies in the production process. This condition affects low-emit regions like West Africa and Africa as a whole. Due to low technology and production in these regions, the amount of emissions they release is nearly insignificant compared to the high-tech and production regions. To ensure a sustainable environment, various companies across regions should be forced to abide by the carbon pricing and market mechanisms like carbon taxes and periodic reporting of carbon footprint. In support of this, the study of Mehboob et al. [45] revealed that environmental tax significantly reduces consumption-based carbon emissions. In addition, high emitters like China should improve on consuming more renewable energy like solar and wind forms of electricity to reduce the dependency on coal [46]. Moreover, these countries can form trade agreements to encourage the trade of renewable energy technologies to reduce the dependency on high-emission technologies in production. Since fintech ensures smooth investment in renewable and energy-efficiency technologies, continents like Asia and North America can develop fintech as one of the measures of controlling carbon footprint through renewable energy development. In support of this, the study of Zhao et al. [47] indicated that financial structure has a significant role in reducing carbon emissions in high-polluted Asian countries. This measure will further be relevant in countries with low-impact fintech like West Africa, as the study of Nwigwe et al. [48] revealed that fintech is insignificant in West Africa, and the study of Gyimah and Bonzo [49] revealed that fintech reduces the consumption of renewable energy in Africa.
Given the regional disparities in emission levels and technological capacity across Asia, tailored strategies are essential for achieving effective carbon mitigation and renewable energy transition. In China and India, the high-emission nations, policies should focus on the strict enforcement of environmental regulations, the phased elimination of coal-based power generation, and the promotion of investment in wind and solar power. These policies, including carbon pricing, emissions trading systems, and renewable energy subsidies, have been effective in such instances [50,51]. In addition, they need to improve environmental governance through institutional capacity development, public–private partnerships, and green finance instruments that decrease dependence on fossil fuels [52].
For advanced and high-tech Asian economies, such as South Korea, Singapore, and Japan, strategic initiatives must focus on leveraging innovative technologies and green digital finance. These countries can drive innovation in clean energy storage, electric vehicles, AI energy efficiency technology, and the application of blockchain in green finance [53,54]. Policy-makers in these nations need to give higher priority to cross-sector coordination and exportation of green technology to low-technology developing Asian nations. Development banks, multilateral agencies, and international donors should help facilitate technology transfer and infrastructure enhancement to enable equitable access to clean energy [55,56].
Clear and transparent regulatory systems, along with accountability mechanisms and participatory energy policy-making, are pivotal for the rollout of renewable energy and climate resilience [57]. The rule of law needs to be reinforced by the government through the enforcement of rules, stakeholder engagement, and the use of digital governance, which can streamline regulatory processes and enhance transparency. This regional policy context highlights that a one-size-fits-all approach is insufficient. Instead, differentiated strategies based on technological capability, emission profile, and governance maturity are needed to drive Asia’s clean energy transformation and environmental sustainability.

2.4. Gap in the Literature

The existing literature on fintech and the environment primarily focuses on carbon emissions, without considering its impact on renewable energy adoption, energy efficiency, or behavioral change. This has made the scope small as other factors influence the environment. In addition, the government’s effectiveness impact on the environment is also limited mainly to its impact on carbon emissions. Although some researchers have investigated the impact of some of the government indicators, like corruption and institutional quality, on energy transition, the impact of government effectiveness is missing. Despite the relevance of these two variables to the environment, the existing literature has limited their impact on the environment. In this case, we have expanded the literature by investigating the effects of these two variables on the environment through their impact on renewable energy consumption and carbon emissions. Since renewable energy is the most promising substitute for fossil fuels, it is crucial to examine how these variables influence the transition to renewable energy.

3. Methodology

To avoid biases in the outcome of our study, we have employed a rigorous step to examine the variables and provided unbiased results for the study. The rigorous step involves preliminary steps and the main model. The preliminary tests involve a homogeneity test, a cross-sectional dependency test, and panel unit root test. We used the CS-ARDL test, which was introduced in 2015 in the literature [58] to investigate the long-term and short-term effects. The systematic flow chart of the various processes involving the preliminary tests and the main test is presented in Figure 4.
Based on the existing literature, Equations (1)–(4) have been developed to well explain the effects this study seeks to investigate. Equation (1) investigates the impact of government effectiveness and control variables on the renewable energy transition. Equation (2) investigates the effect of government effectiveness and the control variables on carbon emissions. Equation (3) investigates the impact of fintech and the control variables on the renewable energy transition. Lastly, Equation (4) investigates the influence of fintech and the control variables on carbon emissions. In the equations, ln g o v is government effectiveness, ln f n t is fintech, ln c o is carbon emissions, ln r e c is a renewable energy transition, ln e c o is economic growth, ln f d i is foreign direct investment, ln t r d is trade openness, ln p o p is population growth, and ε is the error term.
ln r e c i t = β 0 + β 1 ln g o v i t + β 2 ln e c o i t + β 3 f d i i t + β 4 ln t r d i t + β 5 ln p o p i t + ε i t
ln c o i t = β 0 + β 1 ln g o v i t + β 2 ln e c o i t + β 3 f d i i t + β 4 ln t r d i t + β 5 ln p o p i t + ε i t
ln r e c i t = β 0 + β 1 ln f n t i t + β 2 ln e c o i t + β 3 f d i i t + β 4 ln t r d i t + β 5 ln p o p i t + ε i t
ln c o i t = β 0 + β 1 ln f n t i t + β 2 ln e c o i t + β 3 f d i i t + β 4 ln t r d i t + β 5 ln p o p i t + ε i t

3.1. Slope Homogeneity Test

To achieve a reliable outcome without any bias, this research employed various statistical estimators as preliminary tests to identify the various estimation challenges that might arise in the estimation and employed a model that would help to address those challenges. Since the data is panel, it is prone to demographic homogeneity, so slope homogeneity test is conducted. This test in a way has increased the statistical complexity of the work; it is of utmost importance to address the issue of slope homogeneity when dealing with panel data [22]. The assumption is that there is the presence of homogeneity among the data, and it is our responsibility to establish the degree of this homogeneity. The test is presented in Equations (5) and (6). The Δ ¯ S H T is the slope homogeneity and has to do with the modifications and adjustments that are perceived to occur during estimations. The Δ ¯ A S H T is the adjusted slope homogeneity, the modifications and the adjustments perceived to occur during estimations.
Δ ¯ S H T = ( N ) 1 2 ( 2 P ) 1 2 ( 1 N S ¯ V )
Δ ¯ A S H T = ( N ) 1 2 ( 2 P ( T P 1 ) T + 1 ) 1 2 ( 1 N S ¯ 2 P )

3.2. Cross-Sectional Dependency Test

To examine the existence of cross-sectional dependence among the variables, the cross-sectional dependency test is employed [59]. The hypotheses that govern the test are that when there is no cross-section among the variables, we accept the null hypothesis; if there is a cross-section among the variables, we reject the null hypothesis and accept the alternative hypothesis, indicating there is a cross-section among the variables. The test is presented in Equations (7) and (8). The δ ¯ ij 2 is the sample of the correlational coefficient among the units i and j .
C S D = 2 T N ( N 1 ) ( i = 1 N 1 j = i + 1 N δ ¯ ) N ( 0 , 1 ) i , j
C S D = 2 T N ( N 1 ) ( i = 1 N 1 j = i + 1 N δ ¯ ) ( T V ) δ ¯ ij 2 Q ( T V ) δ ¯ ij 2 V a r ( T V ) δ ¯ ij 2

3.3. Panel Unit Root Test

The Im et al. [60] and Levin et al. [61] are used to check the stationarity of the variables. The condition is that the variables must not be stationary at levels and must be stationary at first difference. The test is presented in Equations (9)–(11).
Δ X i , t = ϕ i + ϕ i W i , t 1 + ϕ i V ¯ t 1 + i = 0 ρ λ i t Δ V ¯ t 1 + i = 0 ρ λ i t Δ X i , t 1 + ε i t
X i t = λ 1 C S D ¯ i t + λ 2 r e c ¯ i t + λ 3 c o ¯ i t + λ 4 g o v ¯ i t + λ 5 f n t ¯ i t + λ 6 e c o ¯ i t + λ 7 f d i ¯ i t + λ 8 t r d ¯ i t + λ 9 p o p ¯ i t
C I P S ^ = 1 N i = 1 n C D F i

3.4. CS-ARDL Estimation

The CS-ARDL estimator is employed to analyze the long-term and short-term effects of the independent and control variables on the dependent variables. The CS-ARDL is adopted because of its ability to produce reliable outcomes notwithstanding whether there is cointegration among the variables or not [62]. The model combines cointegration, ARDL, and structural breaks. The CS-ARDL test is represented in Equation (12).
r e c t = β 0 + i = 1 ρ φ i t r e c i , t η α + η μ i j + i = 1 ρ i t ϖ ¯ i , t + ε
where ϖ t ¯ = ( r e c t , X i t ) , X i t = ( g o v i t , f n t i t , e c o i t , f d i i t , t r d i t , p o p i t ) .

3.5. Data

The data of the study, which includes the proxies for fintech, is from the World Development Indicators (WDI). The data span from 2002 to 2021, covering two decades. The study considers twenty Asian countries based on data availability. The variables of the study are renewable energy transition, carbon emissions, government effectiveness, fintech, economic growth, foreign direct investment, trade openness, and population growth. Fintech is measured by the sum of fixed broadband, individual using the internet, and mobile cellular subscription. These three indicators are correlated as they are connected to technological innovation. The unit of measurement of each variable is presented in Table 1. We have two dependent variables for the study, carbon emissions and renewable energy transitions. Similarly, we have two independent variables for the study, namely, government effectiveness and fintech. The control variables are economic growth, FDI, trade openness, and population growth. The descriptive statistics of the variables are presented in Table 2, which provides the mean, median, maximum and minimum values, and standard deviation of the values. In addition, the correlation between the variables is investigated and presented in Table 3.

4. Results

4.1. Slope Homogeneity Test

The slope heterogeneity of the variables is tested, and the findings are presented in Table 4. The test has its framework established in Swamy’s test [63]. The hypothesis of the test explains that if the outcome of the test is insignificant—that is, above 5%—the slopes are homogeneous. However, since the outcome of our test is less than 1% significance, we conclude that the existing slopes are heterogeneous.

4.2. Cross-Sectional Dependency Test

The next test is the cross-sectional dependency test, the outcome of which is presented in Table 5. The assumption of the test is that there is no cross-sectional dependency when the outcome is insignificant thus more than 5% significance. However, the outcome of the test reveals that all the variables are significant under 1% significance except renewable energy transition and carbon emissions. Although they are insignificant, considering the significance of other variables, we conclude that there is existence of cross-sectional dependency among the variables.

4.3. Unit Root Test Estimation

The values presented in Table 6 are the outcome of the unit root test. The results indicate that although some of the variables are significant at the level, most of the variables are insignificant at the level (not stationary) and significant at first difference (stationary).

4.4. Long- and Short-Term Estimation of Government Effectiveness on Renewable Energy Transition

After the preliminary tests and after the various statistical challenges have been identified from the outcome of the preliminary test, the CS-ARDL estimation is employed for the analysis. This model is employed due to its ability to address the challenges encountered in the data. The model gives the outcome in two forms, thus the long-term and short-term effects. The results presented in Table 7 show the effect of governance effectiveness on renewable energy as presented in Equation (1). The findings reveal that governance effectiveness in the short and long terms at 5% significance positively influences renewable energy transition in the selected Asian countries. However, economic growth is perceived to influence energy use, and the Environmental Kuznets Curve hypothesis has been employed to analyze whether this impact is significant in affecting renewable energy transition in both the short and long terms. Nevertheless, the findings reveal an insignificant effect of economic growth on renewable energy transition in both short and long terms. In addition, foreign direct investment has no significant effect on renewable energy transition in both the short and long terms. Although the pollution halo and haven hypotheses are used to establish the impact of FDI on the environment based on the type of energy it supports, our findings revealed otherwise, as it has no effect on renewable energy transition in both short and long terms. Moreover, trade openness is insignificant in affecting renewable energy transition in the selected countries in Asia in both short and long terms. However, population growth significantly and positively affects the transition to renewable energy as at 1% significance, population growth increases the use of renewable energy in both short and long terms.

4.5. Long- and Short-Term Estimation of Government Effectiveness on Carbon Emissions

This section investigates the effect of governance effectiveness on carbon emissions in the selected Asian countries. This investigation is presented in Equation (2). The results presented in Table 8 indicate that in both the short and long terms, governance effectiveness has no significant effect on carbon emissions. In addition, economic growth is insignificant in affecting carbon emissions in both the short and long terms. However, FDI significantly and positively affects carbon emissions in both short and long terms at 5% significance. The pollution haven hypothesis is confirmed for this outcome. The hypothesis explains that FDI causes environmental degradation in the hosting countries through the transfer of high-emissions technologies as a result of weak environmental regulations. The results further reveal that trade openness is not significant enough to influence carbon emissions in either the short or long term. Similarly, population growth is not significant enough to influence carbon emissions in both the short and long terms.

4.6. Long and Short Terms Estimation of Fintech on Renewable Energy Transition

This section examines the impact of fintech on the renewable energy transition in the selected Asian countries, and the results are presented in Equation (3). The outcome presented in Table 9 reveals that not all the variables are significant in influencing renewable energy transition in the selected Asian countries. There has been a massive improvement of fintech in Asia as the continent continues to strive to promote a clean environment. However, because of the level of industrial growth and production, most of the high-producing countries in the continent still depend largely on traditional ways of production. Irrespective of the high level of technology in countries like China, Japan, South Korea, and the others, traditional ways that affect the environment are still in their system. This has resulted in the insignificant effect of fintech on renewable energy transition in both short and long terms. To address this problem, collaboration among countries in the continent should be encouraged so that the highly advanced countries rich in financial technology would carry the emerging economies along. Although population growth is significant under governance effectiveness, it is insignificant in the presence of fintech. Fintech is perceived to be a great step towards the transition to clean energy due to its significant impact on the financial system and technology as a whole. With economic growth, FDI, and trade openness, these factors are all insignificant to affect renewable energy transition in the presence of fintech. Despite the comprehensive literature to support these variables’ impact on renewable energy, this study reveals otherwise under the influence of fintech.

4.7. Long- and Short-Terms Estimation of Fintech on Carbon Emissions

This section analyzes the impact of fintech on carbon emissions as presented in Equation (4). The results presented in Table 10 indicate that none of the variables have a significant impact on carbon emissions under the influence of fintech. Most of the countries in Asia largely depend on fossil fuels for production. China and USA are the two highest emitters in the world. This highlights why fintech is not able to mitigate carbon emissions on this continent. The production level on this continent is high and the level of fintech acceptance is not able to influence the emissions. In addressing this problem, a standard rule should be set to regulate the activities of high-technology countries on continents like China, South Korea, Japan, and the rest. Under the influence of government effectiveness, FDI has a significant and positive effect on carbon emissions in both the short and long terms; this effect is not observed under the influence of fintech. Despite the various hypotheses that have been used to explain some of the variables and their impact on the environment through carbon emissions, our findings reveal an insignificant effect.

5. Discussion

The adoption of renewable energy is perceived as promoting green economy and a sustainable environment, as it is believed that replacing fossil fuels with renewable energy would make the energy cleaner [64]. Increasing the use of renewable energy resources would ensure a reduction in carbon emissions, as there has been empirical evidence to support the claim that renewable energy has the potential to reduce GHG emissions. In addition, the impact of governance on the type of energy to use and its impact on the environment is worth analyzing. The findings of our study reveal that government effectiveness promotes the transition to renewable energy in the selected Asian countries in both the short and long terms. However, government effectiveness has no significant effect on carbon emissions in both the short and long terms. Song et al. [65] highlighted in their study that good governance ensures institutional quality and enhances green growth by directly affecting carbon productivity levels. In the view of Qiu et al. [66], to ensure green growth, there should be a promotion of good governance. In support of our findings, the study of Khan et al. [67] revealed that government effectiveness significantly reduces carbon emissions. However, the finding of Tarverdi’s [68] study contradicts our findings as the authors’ findings revealed that governance deteriorates environmental quality as it is associated with an increase in carbon emissions. Similarly, the study of Yang et al. [69] revealed that good governance system promotes carbon emissions in G7 countries, and it is insignificant in BRICS.
Mitigating climate change to ensure a sustainable environment requires the efforts of financial institutions [70]. Incorporating financial technology into the already existing financial sector leads to a reduction in carbon emissions [71]. However, our findings reveal that fintech has no significant influence on the renewable energy transition and carbon emissions in both the short and long terms. Kihombo et al.’s [72] study revealed that financial development deteriorates the environment. However, Ali and Mujahid’s [73] study revealed that technological innovation improves environmental sustainability. Similarly, the study of Kakar et al. [74] revealed that fintech encourages carbon emissions mitigation.
The Environmental Kuznets Curve has been used to explain the relationship between economic growth and environmental impact. Our study revealed that in the presence of government effectiveness and fintech, economic growth has no significant influence on the renewable energy transition and carbon emissions in both the short and long terms. However, Shahbaz et al.’s [75] study indicated that economic growth increases carbon emissions. The study of Shahbaz and Patel [76] revealed a significant and positive association between economic growth and carbon emissions. The impact of foreign direct investment on environmental sustainability has been explored and investigated in many regions, countries, and continents. Different findings have been recorded in the literature by Kaushal et al. [77], either in support of the pollution halo or the pollution haven hypotheses. Pao and Tsai’s [78] study confirmed the pollution halo hypothesis indicating the positive impact of FDI on the environment. Our findings revealed that in the presence of government effectiveness, FDI has no effect on renewable energy but increases carbon emissions in both short and long terms. However, FDI is insignificant in affecting carbon emissions and renewable energy transition in the presence of fintech. In support of our findings, the study of Abdouli and Hammami [79] revealed a positive influence of FDI on carbon emissions.
Our findings revealed that in the presence of government effectiveness, population growth in the long and short terms positively affects renewable energy transition, and it has an insignificant effect on carbon emissions. However, in the presence of fintech, population growth is insignificant in affecting renewable energy transition and carbon emissions in both the short and long terms. However, Ehrlich and Holdren’s [80] study indicated that population growth contributes to environmental deterioration. The findings of our study revealed that trade openness in the presence of fintech and government effectiveness has no effect on renewable energy transition and carbon emissions in both the short and long terms. However, the study of Li and Haneklaus [81] revealed that trade openness has an adverse impact on carbon emissions.

6. Conclusions and Policy Implications

6.1. Conclusions

The need to control carbon emissions and break away from climate change to protect the environment has called for the need for a renewable energy transition. Although the literature has explored the various factors and their effects on carbon emissions, there is a significant gap that needs to be addressed. In addressing this gap, we have employed CS-ARDL estimator to investigate the effect of fintech and government effectiveness on carbon emissions and renewable energy transition. The study’s findings reveal that government effectiveness promotes the transition to renewable energy but has no significant impact on carbon emissions. Fintech is insignificant in affecting carbon emissions and renewable energy transition. In addition, economic growth has no significant effect on carbon emissions and the transition to renewable energy in the presence of government effectiveness and fintech. FDI has no effect on renewable energy transition but positively and significantly affects carbon emissions in the presence of government effectiveness. However, it has no significant impact on carbon emissions and the transition to renewable energy in the presence of fintech. Trade openness has an insignificant effect on the renewable energy transition and carbon emissions, particularly in the presence of fintech and effective government. Population growth promotes the transition to renewable energy but has no significant effect on carbon emissions in the presence of effective government policies. Population growth does not significantly affect carbon emissions and the transition to renewable energy in the presence of fintech.

6.2. Policy Implications

The findings of our study suggest that government effectiveness fosters a renewable energy transition. Based on this result, we have made a few recommendations that would help to ensure smooth transition to renewable energy. To begin with, countries are encouraged to form an institution that will effectively formulate and implement renewable energy policies. The body should have a centralized authority to enforce policies like incentives to foreign investors who invest in firms that use renewable technologies and high taxes on firms that use high-emission technologies. Additionally, there should be a long-term plan for the transition that the institution must strictly follow without deviation. Moreover, the institution must carry the people along in the transition process through education and public awareness. Since fintech is insignificant, we encourage the various institutions in charge of financial technology to educate the masses and carry them along the transition.

Author Contributions

W.Z.: Conceptualization, Supervision, Funding acquisition, Formal analysis, Project administration, Writing—review and editing. J.G.: Writing—Original draft. X.Y.: Methodology, Resources, Supervision. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the Humanities and Social Science Fund of Ministry of Education of China (No. 23YJCZH315), and Natural Science Foundation for Young Scientists of Shanxi Province (No. 202303021212076).

Data Availability Statement

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Conflicts of Interest

The authors declare no conflicts of interest to disclose.

References

  1. Jan, N.; Waheed, H.A. An unexplored Nexus of Political freedom, Economic Growth, Economic conditions and CO2 emission in Asian Country. Asian Bull. Contemp. Issues Econ. Finance 2024, 4, 1–14. [Google Scholar] [CrossRef]
  2. Shang, Y.; Bi, C.; Wei, X.; Jiang, D.; Taghizadeh-Hesary, F.; Rasoulinezhad, E. Eco-tourism, climate change, and environmental policies: Empirical evidence from developing economies. Humanit. Soc. Sci. Commun. 2023, 10, 275. [Google Scholar] [CrossRef]
  3. Xu, J.; Zhao, J.; Liu, W. A comparative study of renewable and fossil fuels energy impacts on green development in Asian countries with divergent income inequality. Resour. Policy 2023, 85, 104035. [Google Scholar] [CrossRef]
  4. Li, B.; Wang, J.; Wang, M. Pursuit of sustainable environment; Quantifying the role of fintech, natural resources and energy efficiency in carbon neutrality in top six manufacturing nations. Resour. Policy 2024, 97, 105247. [Google Scholar] [CrossRef]
  5. Hou, Y.; Li, X.; Wang, H.; Yunusova, R. Focusing on energy efficiency: The convergence of green financing, FinTech, financial inclusion, and natural resource rents for a greener Asia. Resour. Policy 2024, 93, 105052. [Google Scholar] [CrossRef]
  6. Dong, Z.; Zhou, Z.; Ananzeh, M.; Hoang, K.N.; Shamansurova, Z.; Luong, T.A. Exploring the asymmetric association between fintech, clean energy, climate policy, natural resource conservations and environmental quality. A post-COVID perspective from Asian countries. Resour. Policy 2024, 88, 104489. [Google Scholar] [CrossRef]
  7. Ye, X.; Rasoulinezhad, E. Assessment of impacts of green bonds on renewable energy utilization efficiency. Renew. Energy 2023, 202, 626–633. [Google Scholar] [CrossRef]
  8. Lidskog, R.; Elander, I.; Standring, A. COVID-19, the Climate, and Transformative Change: Comparing the Social Anatomies of Crises and Their Regulatory Responses. Sustainability 2020, 12, 6337. [Google Scholar] [CrossRef]
  9. Wang, J.; Zhu, G.; Chang, T.-C. Unveiling the relationship between institutional quality, fintech, financial inclusion, human capital development and mineral resource abundance. An Asian perspective. Resour. Policy 2024, 89, 104521. [Google Scholar] [CrossRef]
  10. Ahmad, M.; Jan, D.; Ali, S.; Khan, U.U. Empowering Asia’s sustainable future: Unraveling renewable energy dynamics with trade, carbon emission, governance, and innovative interactions. Renew. Energy 2024, 229, 120716. [Google Scholar] [CrossRef]
  11. Li, X.; Tong, X. Fostering green growth in Asian developing economies: The role of good governance in mitigating the resource curse. Resour. Policy 2024, 90, 104724. [Google Scholar] [CrossRef]
  12. Danish Ulucak, R.; Khan, S.U.-D.; Baloch, M.A.; Li, N. Mitigation pathways toward sustainable development: Is there any trade-off between environmental regulation and carbon emissions reduction? Sustain. Dev. 2020, 28, 813–822. [Google Scholar] [CrossRef]
  13. Wu, H.; Xu, L.; Ren, S.; Hao, Y.; Yan, G. How do energy consumption and environmental regulation affect carbon emissions in China? New evidence from a dynamic threshold panel model. Resour. Policy 2020, 67, 101678. [Google Scholar] [CrossRef]
  14. Puschmann, T. Fintech. Bus. Inf. Syst. Eng. 2017, 59, 69–76. [Google Scholar] [CrossRef]
  15. Muganyi, T.; Yan, L.; Sun, H.P. Green finance, fintech and environmental protection: Evidence from China. Environ. Sci. Ecotechnol. 2021, 7, 100107. [Google Scholar] [CrossRef] [PubMed]
  16. Tao, R.; Su, C.-W.; Naqvi, B.; Rizvi, S.K.A. Can Fintech development pave the way for a transition towards low-carbon economy: A global perspective. Technol. Forecast. Soc. Change 2022, 174, 121278. [Google Scholar] [CrossRef]
  17. Fareed, Z.; Pata, U.K. Renewable, non-renewable energy consumption and income in top ten renewable energy-consuming countries: Advanced Fourier based panel data approaches. Renew. Energy 2022, 194, 805–821. [Google Scholar] [CrossRef]
  18. An, X.; Li, S.; Hao, X.; Xie, Z.; Du, X.; Wang, Z.; Hao, X.; Abudula, A.; Guan, G. Common strategies for improving the performances of tin and bismuth-based catalysts in the electrocatalytic reduction of CO2 to formic acid/formate. Renew. Sustain. Energy Rev. 2021, 143, 110952. [Google Scholar] [CrossRef]
  19. Wenlong, Z.; Tien, N.H.; Sibghatullah, A.; Asih, D.; Soelton, M.; Ramli, Y. Impact of energy efficiency, technology innovation, institutional quality, and trade openness on greenhouse gas emissions in ten Asian economies. Environ. Sci. Pollut. Res. Int. 2023, 30, 43024–43039. [Google Scholar] [CrossRef]
  20. Zhang, L.; Wong, W.-K.; Liu, L.; Al Shraah, A.; Albasher, B.; Shamansurova, Z. Balancing environmental sustainability through fintech, green finance natural resource, and economic growth in Asian economies—A Cup-FM and Cup-BC study. Resour. Policy 2024, 98, 105294. [Google Scholar] [CrossRef]
  21. Jie, Y.; Rasool, Z.; Nassani, A.A.; Mattayaphutron, S.; Murad, M. Sustainable Central Asia: Impact of fintech, natural resources, renewable energy, and financial inclusion to combat environmental degradation and achieving sustainable development goals. Resour. Policy 2024, 95, 105138. [Google Scholar] [CrossRef]
  22. Zhuang, T. Appraising sustainability and economic growth through Fintech, green finance and natural resource in Asian economies: A CS-ARDL study. Resour. Policy 2024, 97, 105276. [Google Scholar] [CrossRef]
  23. Li, P.; Liu, T.; Li, J.; Ling, F.K.; Li, Z. Exploring the impact of fintech, natural resources, energy consumption, and international trade on economic growth in China: A dynamic ARDL approach. Resour. Policy 2024, 98, 105310. [Google Scholar] [CrossRef]
  24. Aziz, G.; Sarwar, S.; Waheed, R.; Anwar, H.; Saeed Khan, M. Relevance of fintech and energy transition to green growth: Empirical evidence from China. Heliyon 2024, 10, e33315. [Google Scholar] [CrossRef] [PubMed]
  25. Amoah, A.; Asiama, R.K.; Korle, K.; Kwablah, E. Corruption: Is it a bane to renewable energy consumption in Africa? Energy Policy 2022, 163, 112854. [Google Scholar] [CrossRef]
  26. Saadaoui, H. The impact of financial development on renewable energy development in the MENA region: The role of institutional and political factors. Environ. Sci. Pollut. Res. Int. 2022, 29, 39461–39472. [Google Scholar] [CrossRef] [PubMed]
  27. Ullah, A.; Ullah, S.; Pinglu, C.; Khan, S. Impact of FinTech, governance and environmental taxes on energy transition: Pre-post COVID-19 analysis of belt and road initiative countries. Resour. Policy 2023, 85, 103734. [Google Scholar] [CrossRef]
  28. Akhtar, M.Z.; Zaman, K.; Khan, M.A. The impact of governance indicators, renewable energy demand, industrialization, and travel & transportation on urbanization: A panel study of selected Asian economies. Cities 2024, 151, 105131. [Google Scholar] [CrossRef]
  29. Arora, N.K. Impact of climate change on agriculture production and its sustainable solutions. Environ. Sustain. 2019, 2, 95–96. [Google Scholar] [CrossRef]
  30. Zhang, X.; Hasan, M.M.; Waris, U. Assessing the nexus between natural resources and government effectiveness: Role of green innovation in shaping environmental sustainability of BRICS nations. Resour. Policy 2024, 93, 105024. [Google Scholar] [CrossRef]
  31. Maulidar, P.; Fitriyani, F.; Sasmita, N.R.; Hardi, I.; Idroes, G.M. Exploring Indonesia’s CO2 Emissions: The Impact of Agriculture, Economic Growth, Capital and Labor. Grimsa J. Bus. Econ. Stud. 2024, 1, 43–55. [Google Scholar] [CrossRef]
  32. Chau, K.Y.; Sadiq, M.; Chien, F. The role of natural resources and eco-financing in producing renewable energy and carbon neutrality: Evidence from ten Asian countries. Resour. Policy 2023, 85, 103846. [Google Scholar] [CrossRef]
  33. Li, Y.; Liu, C.Y.N.; Lao, U.; Dang, J. Navigating the path to environmental sustainability: Exploring the role of fintech, natural resources and green energy in Belt and Road countries. Resour. Policy 2024, 88, 104485. [Google Scholar] [CrossRef]
  34. Croutzet, A.; Dabbous, A. Do FinTech trigger renewable energy use? Evidence from OECD countries. Renew. Energy 2021, 179, 1608–1617. [Google Scholar] [CrossRef]
  35. Ramzan, M.; Razi, U.; Quddoos, M.U.; Adebayo, T.S. Do green innovation and financial globalization contribute to the ecological sustainability and energy transition in the United Kingdom? Policy insights from a bootstrap rolling window approach. Sustain. Dev. 2023, 31, 393–414. [Google Scholar] [CrossRef]
  36. Li, H.; Qin, W.; Li, J.; Tian, Z.; Jiao, F.; Yang, C. Tracing the global tin flow network: Highly concentrated production and consumption. Resour. Conserv. Recycl. 2021, 169, 105495. [Google Scholar] [CrossRef]
  37. Razzaq, A.; Sharif, A.; Ozturk, I.; Skare, M. Asymmetric influence of digital finance, and renewable energy technology innovation on green growth in China. Renew. Energy 2023, 202, 310–319. [Google Scholar] [CrossRef]
  38. Teng, M.; Shen, M. The impact of fintech on carbon efficiency: Evidence from Chinese cities. J. Clean. Prod. 2023, 425, 138984. [Google Scholar] [CrossRef]
  39. Godil, D.I.; Sharif, A.; Ali, M.I.; Ozturk, I.; Usman, R. The role of financial development, R&D expenditure, globalization and institutional quality in energy consumption in India: New evidence from the QARDL approach. J. Environ. Manag. 2021, 285, 112208. [Google Scholar] [CrossRef]
  40. Qiang, Q.; Jian, C. Natural resource endowment, institutional quality and China’s regional economic growth. Resour. Policy 2020, 66, 101644. [Google Scholar] [CrossRef]
  41. Akalin, G.; Erdogan, S. Does democracy help reduce environmental degradation? Environ. Sci. Pollut. Res. Int. 2021, 28, 7226–7235. [Google Scholar] [CrossRef]
  42. Edomah, N. The governance of energy transition: Lessons from the Nigerian electricity sector. Energy Sustain. Soc. 2021, 11, 40. [Google Scholar] [CrossRef]
  43. Egbetokun, S.; Osabuohien, E.S.; Akinbobola, T.; Onanuga, O.; Gershon, O.; Okafor, V. Environmental Pollution, Economic Growth and Institutional Quality: Exploring the Nexus in Nigeria; Research Africa Network; African Governance and Development Institute (AGDI): Yaoundé, Cameroon, 2019. [Google Scholar]
  44. Irfan, M.; Quddus, A.; Shahzad, F.; Wang, Y. Do ICT trade balances and natural resources foster carbon emissions? The role of government effectiveness and green technology innovation. Struct. Change Econ. Dyn. 2025, 72, 320–329. [Google Scholar] [CrossRef]
  45. Mehboob, M.Y.; Ma, B.; Sadiq, M.; Zhang, Y. Does nuclear energy reduce consumption-based carbon emissions: The role of environmental taxes and trade globalization in highest carbon emitting countries. Nucl. Eng. Technol. 2024, 56, 180–188. [Google Scholar] [CrossRef]
  46. Zhao, W.; Gyimah, J.; Yao, X.; Ismaail, M.G.A. Investigating the role of good governance system in renewable energy transition in China and USA. Sustain. Futures 2025, 10, 100943. [Google Scholar] [CrossRef]
  47. Zhao, S.; Ozturk, I.; Hafeez, M.; Ashraf, M.U. Financial structure and CO2 emissions in Asian high-polluted countries: Does digital infrastructure matter? Environ. Technol. Innov. 2023, 32, 103348. [Google Scholar] [CrossRef]
  48. Nwigwe, U.A.; Gyimah, J.; Bonzo, J.K.; Li, J. Fintech’s role in addressing climate change: Insights from the COP28 global stocktake. Environ. Dev. Sustain. 2024. [Google Scholar] [CrossRef]
  49. Gyimah, J.; Bonzo, J.K. Financial technology and renewable energy transition in Africa. Results Eng. 2025, 27, 106311. [Google Scholar] [CrossRef]
  50. Sheng, S.; Li, Y.; Zhao, Z. How does regional policy coordination help achieve the low-carbon development?: A study of theoretical mechanisms and empirical analysis from China. Environ. Dev. Sustain. 2024, 1–33. [Google Scholar] [CrossRef]
  51. Wei, Y.; Zhao, T.; Zhang, X.; Tian, Q.; Zhang, F. Exploring the role of energy transition in shaping the CO2 emissions pattern in China’s power sector. Sci. Rep. 2025, 15, 18794. [Google Scholar] [CrossRef] [PubMed]
  52. Hou, X.; Li, W.; Li, D.; Peng, J. Public–private partnerships and carbon reduction targets: Evidence from PPP investments in energy and environmental protection in China. Environ. Dev. Sustain. 2025, 27, 6567–6597. [Google Scholar] [CrossRef]
  53. Khatoon, U.T.; Velidandi, A. An overview on the role of government initiatives in nanotechnology innovation for sustainable economic development and research progress. Sustainability 2025, 17, 1250. [Google Scholar] [CrossRef]
  54. Dzienis, A.M.; Mccaleb, A. Digital and Green Transitions and Automotive Industry Reconfiguration: Evidence From Japan and China. J. Contemp. Asia 2024, 55, 1–27. [Google Scholar] [CrossRef]
  55. Chu, C.; Gupta, A.; Schmidt, F.; Row, N. Improving Commercialization of Publicly-Funded Research: Singapore; Report for Securing Australia’s Future Project “Translating Research for Economic and Social Benefit: Country Comparisons”; Eden Strategy Institute: Singapore, 2015. [Google Scholar]
  56. UN; ESCAP. Climate Champions’ Extended Compendium of Climate Related Initiatives: Regional Project List for Asia and the Pacific; ESCAP: Bangkok, Thailand, 2022. [Google Scholar]
  57. Mutanga, C. De-Risking Renewable Energy Investment Towards a Low Carbon Development Pathway: The Case of South Africa: University of South Africa (South Africa). Master’s Thesis, University of South Africa, Pretoria, South Africa, 2023. [Google Scholar]
  58. Chudik, A.; Pesaran, M.H. Common correlated effects estimation of heterogeneous dynamic panel data models with weakly exogenous regressors. J. Econom. 2015, 188, 393–420. [Google Scholar] [CrossRef]
  59. Khan, Z.; Ali, S.; Dong, K.; Li, R.Y.M. How does fiscal decentralization affect CO2 emissions? The roles of institutions and human capital. Energy Econ. 2021, 94, 105060. [Google Scholar] [CrossRef]
  60. Im, K.S.; Pesaran, M.H.; Shin, Y. Testing for unit roots in heterogeneous panels. J. Econom. 2003, 115, 53–74. [Google Scholar] [CrossRef]
  61. Levin, A.; Lin, C.-F.; Chu, C.-S.J. Unit root tests in panel data: Asymptotic and finite-sample properties. J. Econom. 2002, 108, 1–24. [Google Scholar] [CrossRef]
  62. Zeraibi, A.; Radulescu, M.; Dembińska, I.; Necati Çoban, M. The impact of China’s booming tech sector on environmental sustainability: An analysis through comprehensive CS-ARDL approach. Gondwana Res. 2024, 134, 245–261. [Google Scholar] [CrossRef]
  63. Swamy, P.A.V.B. Efficient Inference in a Random Coefficient Regression Model. Econometrica 1970, 38, 311–323. [Google Scholar] [CrossRef]
  64. Teske, S.; Pregger, T.; Simon, S.; Naegler, T. High renewable energy penetration scenarios and their implications for urban energy and transport systems. Curr. Opin. Environ. Sustain. 2018, 30, 89–102. [Google Scholar] [CrossRef]
  65. Song, Y.; Wang, C.; Wang, Z. Climate risk, institutional quality, and total factor productivity. Technol. Forecast. Soc. Change 2023, 189, 122365. [Google Scholar] [CrossRef]
  66. Qiu, W.; Zhang, J.; Wu, H.; Irfan, M.; Ahmad, M. The role of innovation investment and institutional quality on green total factor productivity: Evidence from 46 countries along the “Belt and Road”. Environ. Sci. Pollut. Res. Int. 2022, 29, 16597–16611. [Google Scholar] [CrossRef]
  67. Khan, H.; Weili, L.; Khan, I. Environmental innovation, trade openness and quality institutions: An integrated investigation about environmental sustainability. Environ. Dev. Sustain. 2021, 24, 3832–3862. [Google Scholar] [CrossRef]
  68. Tarverdi, Y. Aspects of Governance and CO2 Emissions: A Non-linear Panel Data Analysis. Environ. Resour. Econ. 2018, 69, 167–194. [Google Scholar] [CrossRef]
  69. Yang, T.; Gyimah, J.; Nwigwe, U.A.; Yao, X. The pursuit of net-zero carbon in G7 and BRICS: The impact of good governance system. Sustain. Futures 2025, 9, 100415. [Google Scholar] [CrossRef]
  70. Lee, C.-C.; Wang, C.-S. Does natural resources matter for sustainable energy development in China: The role of technological progress. Resour. Policy 2022, 79, 103077. [Google Scholar] [CrossRef]
  71. Li, H.; Luo, F.; Hao, J.; Li, J.; Guo, L. How does fintech affect energy transition: Evidence from Chinese industrial firms. Environ. Impact Assess. Rev. 2023, 102, 107181. [Google Scholar] [CrossRef]
  72. Kihombo, S.; Ahmed, Z.; Chen, S.; Adebayo, T.S.; Kirikkaleli, D. Linking financial development, economic growth, and ecological footprint: What is the role of technological innovation? Environ. Sci. Pollut. Res. Int. 2021, 28, 61235–61245. [Google Scholar] [CrossRef]
  73. Ali, S.R.; Mujahid, N. Sectoral carbon dioxide emissions and environmental sustainability in Pakistan. Environ. Sustain. Indic. 2024, 23, 100448. [Google Scholar] [CrossRef]
  74. Kakar, S.K.; Ali, J.; Wang, J.; Wu, X.; Arshed, N.; Le Hien, T.T.; Yadav, R.S. Exploring the impact of industrialization and electricity use on carbon emissions: The role of green FinTech in Asian countries using an asymmetric panel quantile ARDL approach. J. Environ. Manag. 2024, 370, 122970. [Google Scholar] [CrossRef]
  75. Shahbaz, M.; Hye, Q.M.A.; Tiwari, A.K.; Leitão, N.C. Economic growth, energy consumption, financial development, international trade and CO2 emissions in Indonesia. Renew. Sustain. Energy Rev. 2013, 25, 109–121. [Google Scholar] [CrossRef]
  76. Shahbaz, M.; Patel, N. Sustainable development in a carbon-conscious world: Quantile regression insights into CO2 emission drivers. Nat. Resour. Forum 2025, 49, 1560–1583. [Google Scholar] [CrossRef]
  77. Kaushal, L.A.; Chauhan, A.S.; Dwivedi, A.; Bag, S. The governance factor: Mitigating carbon emissions through FDI and financial development in emerging Asian economies. J. Environ. Manag. 2024, 367, 121740. [Google Scholar] [CrossRef]
  78. Pao, H.-T.; Tsai, C.-M. CO2 emissions, energy consumption and economic growth in BRIC countries. Energy Policy 2010, 38, 7850–7860. [Google Scholar] [CrossRef]
  79. Abdouli, M.; Hammami, S. Investigating the causality links between environmental quality, foreign direct investment and economic growth in MENA countries. Int. Bus. Rev. 2017, 26, 264–278. [Google Scholar] [CrossRef]
  80. Ehrlich, P.R.; Holdren, J.P. Impact of Population Growth. Science 1971, 171, 1212–1217. [Google Scholar] [CrossRef] [PubMed]
  81. Li, B.; Haneklaus, N. The potential of India’s net-zero carbon emissions: Analyzing the effect of clean energy, coal, urbanization, and trade openness. Energy Rep. 2022, 8, 724–733. [Google Scholar] [CrossRef]
Figure 1. Carbon emissions levels in the largest economies in Asia.
Figure 1. Carbon emissions levels in the largest economies in Asia.
Sustainability 17 07153 g001
Figure 2. Access to clean fuels and technologies in the largest economies in Asia.
Figure 2. Access to clean fuels and technologies in the largest economies in Asia.
Sustainability 17 07153 g002
Figure 3. Percentage of total renewable energy use in the largest economies in Asia.
Figure 3. Percentage of total renewable energy use in the largest economies in Asia.
Sustainability 17 07153 g003
Figure 4. The systematic flow chart.
Figure 4. The systematic flow chart.
Sustainability 17 07153 g004
Table 1. Sources and measurements of the variables.
Table 1. Sources and measurements of the variables.
Variables Measurement Source
Renewable energy transitionDependent variable ln r e c Total percentage of renewable energy useWDI
Carbon emissionsDependent variable ln c o t CO2e/capitaWDI
Government effectivenessIndependent variable ln g o v (Estimate 2.5 to −2.5) Quality of public services and civil service independence from political pressures, the quality of policy formulation and implementationWDI
FintechIndependent variable ln f n t Three proxies (fixed broadband subscriptions (high-speed access to public internet), individual using the internet (% of population), and mobile cellular subscriptions (public mobile telephone service))WDI
Economic growthControl variable ln e c o GDP per capita growth (annual percent) WDI
Foreign direct investment Control variable ln f d i Net inflow (percentage of GDP)WDI
Trade openness Control variable ln t r d Trade (percentage of GDP)WDI
Population growthControl variable ln p o p Annual percentage of population growthWDI
Table 2. Descriptive statistics.
Table 2. Descriptive statistics.
MeanMedianMaxMiniStd. Dev
ln r e c 1.74171.94594.5218−2.30261.8442
ln c o 1.66011.92063.9277−0.23750.9483
ln g o v −0.8221−0.60720.8787−4.28031.1996
ln f n t 16.9860417.39921.5410.51632.6328
ln e c o 1.19391.37542.6866−2.41530.8454
ln f d i 0.87880.93973.3933−2.27731.1220
ln t r d 4.52384.49356.05293.05990.6157
ln p o p 0.00220.20962.8847−4.66791.0697
Table 3. Correlation.
Table 3. Correlation.
ln rec ln co ln gov ln fnt ln eco ln fdi ln trd ln pop
ln r e c 1
ln c o −0.85941
ln g o v −0.53230.59871
ln f n t 0.03380.1422−0.22771
ln e c o 0.2343−0.1860−0.15470.09081
ln f d i −0.36600.20380.1606−0.0450−0.04041
ln t r d −0.44160.21750.3929−0.3620−0.17340.61701
ln p o p −0.23210.0069−0.0666−0.3499−0.06180.30900.28081
Table 4. Slope homogeneity.
Table 4. Slope homogeneity.
DeltaProbability
4.2950.000
adj.5.8100.000
Table 5. Cross-sectional dependency test.
Table 5. Cross-sectional dependency test.
CD TestProbabilityAverage Joint TMean ρ Mean Abs ( ρ )
ln r e c 0.9940.32019.900.020.49
ln c o −1.2990.19419.90−0.020.68
ln g o v 4.1390.00019.900.070.44
ln f n t 28.0060.00019.900.460.63
ln e c o 19.7590.00019.900.320.38
ln f d i 7.4260.00019.900.120.32
ln t r d 4.7560.00019.710.080.46
ln p o p 11.6530.00019.900.190.43
Table 6. Unit root test.
Table 6. Unit root test.
Levin, Lin & Chu t *Im, Pesaran, and Shin W-StatADF–Fisher Chi-Square
levels1st difflevels1st difflevels1st diff
ln r e c 0.1641−8.7294 *3.1549−8.0882 *26.357114.37 *
ln c o −6.9367 *−11.839 *−1.2209−10.893 *62.951182.76 *
ln g o v −1.9851−13.877 *−0.0959−5.9554 *52.764171.20 *
ln f n t −9.9653 *−30.211 *−3.5116 *−13.840 *57.087132.71 *
ln e c o −10.844 *−25.751 *−9.4648 *−17.272 *144.37 *221.42 *
ln f d i −7.9936 *−15.490 *−6.5247 *−11.826 *116.65 *193.96 *
ln t r d −2.3253 *−12.927 *−0.3761−10.758 *41.616178.65 *
ln p o p 4.1090−4.7057 *5.3211−3.4054 *29.443102.70 *
* denotes 1% significance.
Table 7. Effect of governance on renewable energy.
Table 7. Effect of governance on renewable energy.
Short TermLong Term
CoefficientZ-StatisticsCoefficientZ-Statistics
ln g o v 1.328285 **2.390.6629147 **2.31
ln e c o 0.05098950.880.02621640.91
ln f d i 0.12334951.230.07367111.31
ln t r d −0.0379606−0.960.0201956−1.05
ln p o p 1.465585 *2.880.277328 *2.94
* and ** denote 1% and 5%, respectively.
Table 8. Effect of governance on carbon emissions.
Table 8. Effect of governance on carbon emissions.
Short TermLong Term
CoefficientZ-StatisticsCoefficient Z-Statistics
ln g o v 0.55595511.030.31186311.09
ln e c o 0.03206750.810.01862540.93
ln f d i 0.1615139 **2.320.0806575 **2.29
ln t r d 0.03489541.040.01847091.03
ln p o p −0.2780243−0.74−0.11896120.1934504
** denote 5%.
Table 9. Effect of fintech on renewable energy.
Table 9. Effect of fintech on renewable energy.
Short TermLong Term
CoefficientZ-StatisticsCoefficientZ-Statistics
ln f n t 1.21 × 10−61.466.34 × 10−71.48
ln e c o 0.02747510.360.01527450.38
ln f d i −0.0254825−0.30−0.0020357−0.04
ln t r d −0.0433186−1.63−0.0202245−1.54
ln p o p 0.85382821.590.56067711.62
Table 10. Effective of fintech on carbon emissions.
Table 10. Effective of fintech on carbon emissions.
Short TermLong Term
CoefficientZ-StatisticsCoefficientZ-Statistics
ln f n t 1.66 × 10−60.948.51 × 10−70.93
ln e c o 0.04015461.330.0198851.28
ln f d i 0.1063071.290.04614131.19
ln t r d 0.02552171.350.01266231.34
ln p o p 1.498421.010.77810621.02
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Zhao, W.; Gyimah, J.; Yao, X. Fintech or Government Effectiveness? Renewable Energy Transition in Asia. Sustainability 2025, 17, 7153. https://doi.org/10.3390/su17157153

AMA Style

Zhao W, Gyimah J, Yao X. Fintech or Government Effectiveness? Renewable Energy Transition in Asia. Sustainability. 2025; 17(15):7153. https://doi.org/10.3390/su17157153

Chicago/Turabian Style

Zhao, Wenting, Justice Gyimah, and Xilong Yao. 2025. "Fintech or Government Effectiveness? Renewable Energy Transition in Asia" Sustainability 17, no. 15: 7153. https://doi.org/10.3390/su17157153

APA Style

Zhao, W., Gyimah, J., & Yao, X. (2025). Fintech or Government Effectiveness? Renewable Energy Transition in Asia. Sustainability, 17(15), 7153. https://doi.org/10.3390/su17157153

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop