1. Introduction
Climate change-related devastation is still progressing, even though the economy has slowed down because of the COVID-19 pandemic and its aftermath. Emissions temporarily decreased as a result of a reduction in human activity during the pandemic. Around 95% of pollution emissions come from greenhouse gases that are generated by humans, which condense in the atmosphere [
1] As sustainable development aims to meet “the needs of the present without comprising the ability of future generations to meet their needs”, it is a critical global concern. According to the 17 sustainable development goals (SDGs) set out by the United Nations (UN) as part of the 2030 agenda, a better world must be created. The primary focus of all 17 objectives is prosperity and well-being, with 169 targets and subgoals set out to achieve these objectives. The UN SDGs demand significant action in all spheres of life, including all possible applications of technological innovation [
2]. The other objectives cannot be attained without industry, innovation, and infrastructure, which are emphasized in SDG 9. Similarly, the Paris Agreement clarifies how crucial cutting-edge climate technology is to a sustainable future. A solution to climate change that might aid in promoting economic growth and easing environmental burdens is to accelerate and encourage innovation; however, it is difficult to achieve sustainable development in the early stages of growth and development. When meeting basic human needs is prioritized over the environment, there appears to be a clear tradeoff between economic development and environmental security.
Ref. [
3] explained the fourth industrial revolution, in which technological dependence is crucial. Still, it also requires a dual shift to digital and green practices. This dual shift will impact every facet of people’s lives. For instance, to promote growth and development, industries with low energy efficiency must increasingly rely on green energy and energy-efficient technologies, as detailed by [
4]. Given the essential roles that green growth, connectivity, infrastructure, digitalization, and the Internet of Things play in the twin transition, this shift is key to decarbonizing the economy. In recent years, researchers have advanced the research in this field, adding a new Industry 5.0 phase centered on sustainability, the green economy, and the human–technology partnership [
5]. One study explored the concept of Industry 5.0, which connects environmentally friendly practices and sustainability. According to the authors, collaboration between many economic sectors should be improved for the greater good [
6].
Ref. [
7] stated that green trade and investment are essential to supporting successful energy transitions and the implementation of nationally determined contributions (NDCs) in developing countries. The increasing need for energy has created a problematic tradeoff between environmental security and economic development. The pursuit of carbon neutrality exacerbates environmental corrosion and climate change. Greenhouse gas emissions (GHGs) and energy preservation are only two of the difficulties posed by this exceptional situation. Therefore, most recent energy- and environment-related studies aim to examine the connection between CO
2 emissions, environmental quality and advanced technology.
Since the Industrial Revolution, human activity has increased the quantity of greenhouse gases in the atmosphere and has caused significant global warming. Computer technology has been steadily improving since the 1990s, and numerous new economic models, including the digital economy, have been made possible by advances in artificial intelligence, blockchain technology, and 5G technology. In a digital economy, massive amounts of data are created, selected, filtered, stored, and used in a way that quickly and optimally allocates and regenerates resources, leading to high-quality economic development [
6].
The current study adds fresh information that bridges separate streams of thought in the existing literature. In particular, CO
2 emissions, AI, EPU, and RENE are all investigated. As noted by [
8], enhancing domestic energy-saving and emissions-reducing technologies depends on highly trained human resources. Developed countries with high levels of human capital are more likely to create cutting-edge technology, as detailed by [
8].
A weak economy caused by EPU encourages companies to use more conventional, polluting, and less-expensive energy sources for production, such as coal and oil, which increases CO
2 emissions. Ref. [
9] used U.S. sector data to conduct a new parametric test involving Granger causality, which was used to investigate the effect of EPU on CO
2 emissions; they determined the Granger causality between the two variables. In their study, ref. Ref. [
10] used a bootstrap panel Granger causality test to examine the causative connection between EPU and both energy consumption and CO
2 emissions in the G7 countries. They stated that EPU had negative impacts on reducing emissions and conserving energy. Furthermore, ref. [
11] reported strong correlations among geopolitical risk, economic policy uncertainty, energy consumption, economic growth, and CO
2 emissions in the long term, based on data from nations that are wealthy in resources yet prone to crises. These results show that higher EPU harms carbon abatement. This observation aligns with the outcome reported by [
12]. Meanwhile, ref. [
13] concluded that EPU reduces China’s CO
2 emissions economically. Ref. [
14] proposed that the degree of economic policy uncertainty in China’s provinces substantially affects the carbon emission intensity of manufacturing enterprises. The second research stream indicates that EPU has a mitigating effect on CO
2 emissions.
According to the economic growth model proposed in Solow’s foundational 1956 book, technological advancement comes from outside the economy. Ref. [
15] created a growth model to supplement natural technical progress. Romer’s model states that creating new goods through research and development by profit-maximizing corporate firms drives technological evolution. Various ideas and metrics have been used to assess the effects of globalization and technological advancements. Ref. [
16] stated that technology is the repeatable use of scientific knowledge to achieve concrete goals. Finding knowledge outside of a company and incorporating it into the open innovation framework is one tactic that can lead to increased success. It may be possible to reduce barriers to the circular economy through open innovation. At the same time, we need to improve our understanding of how these fields may collaborate or how open innovation can contribute to developing a more sustainable economy. As noted previously, studies benefit from adopting multiple methodologies and ways of studying these issues. Nevertheless, more research is needed that investigates the connections among CO
2 emissions, cutting-edge (AI) technological adaptation, economic policy uncertainty, and renewable energy consumption in East Asian and Pacific countries. The literature indicates that there are relatively few studies on the effects of AI on the intensity of pollution emissions, suggesting that studies need to discuss the specific mechanisms and heterogeneity in AI’s impact on pollution emission intensity. With its capacity for deep learning, AI can be rapidly and broadly applied across various economic and social fields [
17]. This capability can alter traditional production models, unlock economic growth potential, promote industrial structure upgrades, produce systemic effects on the economic system, and create new opportunities to overcome the bottleneck in emissions reduction.
This study investigates the extent of AI’s impact on CO
2 emission intensity and its mechanism of action by conducting a theoretical analysis and empirical tests. The significance and novelty of this article are as follows. First, this study uses East Asia and the Pacific as a case study to examine the impact of AI on carbon emissions intensity, based on the rapid growth of the intelligent market and the demand for green transformation. This serves as a model for developing green economies in other nations. Second, based on the fundamental properties of AI, this study provides an economic framework for analyzing the effects of artificial intelligence on CO
2 emissions. Third, this study improves the mechanism underlying the effect of economic policy uncertainty (EPU) on CO
2 emissions in the selected sample of countries. As noted in earlier studies, higher levels of EPU affect various macroeconomic indicators, including innovations, financial development, capital investment at the company level, the tourism sector, economic growth, and working capital and profits [
3]. By analyzing the correlations between the two, this study concludes that renewable energy is the best method to combat environmental deterioration and increasing CO
2 emissions.
The rest of this paper is structured as follows.
Section 2 provides an overview of the existing literature and a detailed study of the relevant theoretical concepts.
Section 3 and
Section 4 describes the data sources and the specific methodologies employed in this study.
Section 5, represent the empirical results and discussion.
Section 6 concludes the results of this study.
4. Data Analysis
This study investigated the impact of AI, economic policy uncertainty, and renewable energy use on environmental quality in a panel of 14 East Asian and Pacific economies from 2000 to 2023. The summary statistics and correlation matrix are presented in
Table 1 and
Table 2.
This study incorporated various variables. As the summary statistics indicate, all variables exhibit significant variability in their minimum and maximum values. Similarly, the matrix reveals a negative association between renewable energy and economic policy uncertainty and a positive correlation between the dimensions of AI and CO2 emissions.
Before examining the presence of unit root and cointegration among the variables, we assessed the cross-sectional dependence among the nations included in the sample with the rise of liberalization and globalization. During this period, there has been growing economic and social interconnectedness across nations. Consequently, the actions implemented in one country can have an impact on another nation as well. Following [
56], the cross-sectional dependence test was utilized to ascertain the presence of CD within the chosen East Asia and Pacific countries. The findings displayed in
Table 3 validate the presence of a correlation among CO
2 emissions, AI, renewable energy consumption, time, and economic policy uncertainty in the sample nations. This suggests that any alteration in these factors in East Asian–Pacific countries can also impact the other Asian andPacific countries.
Table 3 presents the findings of the slope homogeneity test introduced by [
56] for all three regression models in this study.
Both the constant term only and constant term and trend term versions of the three-unit root test techniques used in this study are shown in
Table 4. Except for the LLC trial, every one of the discovered variables in the five trials rejected the null hypothesis at the 1% significance level. As a result, we examined the data using a first-order differential. We found that at the crucial 1% level, no hypotheses were rejected for each variable’s unit root. However, this indicates the possibility of spurious regression; thus, the KAO test for cointegration is required.
Table 5 presents the findings of the cointegration test for CO
2 emissions, AI, economic policy uncertainty, and renewable energy. All three model groups rejected the initial hypothesis, suggesting that the panel data exhibit a cointegration relationship. The findings validate the existence of a long-term equilibrium cause-and-effect association among the variables, thus facilitating further investigation of this relationship.
The estimation results for the FMOLS and DOLS panel models are presented in
Table 6. According to the parameters, DOLS provides a more accurate match. It may be inferred that a 1% increase in AI is associated with a corresponding 0.1665% increase in CO
2 emissions. Likewise, a 1% rise in economic policy uncertainty will result in a 0.237% increase in CO
2 emissions, leading to environmental damage. Additionally, CO
2 emissions will fall by −0.3658 if renewable energy usage increases. Policy ambiguity and adopting digitalization/AI will generally impact environmental degradation, but renewable energy consumption will exacerbate the ecological situation. Similarly, to check the robustness of the data, we incorporated the Hausman fixed effect and generalized method of moment to confirm the relationship.
Table 7 and
Table 8 show the results of the Hausman test and GMM. The relationship between CO
2 emissions and AI and economic policy uncertainty was positive, whereas the result for renewable energy consumption was the opposite. This means that a unit increase in AI adoption and monetary policy uncertainty will contribute 1.316 and 0.867% to environmental degradation, respectively. The same results were found in the GMM.
Impulse response and variance decomposition
Before analyzing the pulse effect and variance decomposition as endogenous variables in VAR systems, defining the best lag order for mechanization, rainfall, and agricultural carbon emissions is recommended. This study presents the following five approaches for comprehensive judgment: the LR test statistic (LR), Final Prediction Error (FPE), Akaike Information Criterion (AIC), Schwarz Information Criterion (SIC), and Hannan–Quinn Information Criterion (HQ). We found that lag order 2 is the best lag term, as indicated in
Table 9.
Figure 2 was created following this order, which clearly shows that all the roots fall inside the unit circle, meaning this VAR model meets the requirements for variance decomposition and impulse response analysis.
The VAR model of a standard deviation of the random disturbance impact on the trajectories of other variables and the influence of current and future values may be visually represented using the impulse response function. Thus, using an impulse response function diagram, we further examined how AI and EXP affect the other CO
2 emissions [
29]. We set a reaction time of twenty years. In
Figure 3, the range of the potential impulse response is indicated by dotted lines on either side of the solid lines; the abscissa shows the lag length of the effect, and the longitudinal coordinates show the degree of reaction.
Table 9 shows the optimal lag period selection.
Table 10 represents the results of the variance decomposition analysis of CO
2 emissions, AI, and exports. The results show that the variation in CO
2 emissions is self-generated in the short term. Similarly, in the short term, AI adoption has minimal impact on variations in CO
2 emissions. Our study’s results align with the previous research conducted by [
60], and we can see that the value for period 20 is 5.208, compared with 94.751. This minimal variation is because AI is an emerging cutting-edge technology, and most countries are in line to adopt it. It is also the case that AI has not yet been embraced fully.
Figure 3 shows the impulse response between AI and CO
2 emission. In addition, the environmental concerns of AI are relatively understudied at present, compared to other phenomena.
Figure 4 and
Figure 5 represent the impulse response of the relationship between CO
2 emissions and economic policy uncertainty (EPU). The graph shows that the reaction of CO
2 to CO
2 declines over a certain period, while, in the second graph, the relationship between CO
2 emissions and EPU is initially positive. In contrast, in the later stages, it becomes damaging.
Table 11 shows the variance decomposition between CO
2 emissions and EPU. In the short term, the variation in CO
2 is self-generated while, in the long term, the variation in CO
2 arises from EPU. The results show that the value of EPU in year 20 was recorded at 65.2376, which is higher than 34.3352. Our study’s results support those of [
61].
Table 12 reports the variance decomposition results between CO
2 emissions and renewable energy. The variation in CO
2 emissions in the case of renewable energy consumption is slightly different from the relationship with AI. The variation in the short-term is totally self-generated while, in the long-term, the variance decomposition for CO
2 arises from renewable energy consumption. As noted in an earlier study by [
62], adopting renewable energy production and consumption sources will decrease CO
2 emissions in East Asia and Pacific countries.
Figure 6 shows the CO
2 emission trend in the selected countries.
5. Results and Discussion
Global warming is a serious environmental issue that affects every nation on the planet and is related to the long-term viability of human life. Furthermore, there is a strong link between agricultural carbon emissions and climate change. Thus, we sought to build an empirical framework to study the influences of AI, economic policy uncertainty, and renewable energy consumption on CO
2 emissions. Our approach produced empirical findings. First, the association among the variables was confirmed using a cross-sectional correlation test. We used the ADF, Im, Pesaran and Shin, and LLC tests to evaluate the stability of the unit root of panel data. According to the results, each variable is an integrated sequence of the same order and may be employed in the PVAR model. This also reveals that the variable after the first-order difference is stable. Additionally, we used the Kao test to confirm the long-term cointegration connection among the variables. The findings indicate that these three variables have a long-term integration connection. The link among the variables was then empirically studied using the Hausman test, the generalized method of moments, and VAR-based impulse response techniques. The findings demonstrate that the impulse response function more accurately captures the dynamic interaction among the examined factors. The FMOLS and DOLS test results confirm the robustness of the long-term findings. The causal link among the variables was also analyzed. We found that digitalization—for which we took AI as a proxy—showed a positive relationship with environmental degradation. Therefore, the more that AI is integrated into a country, the more vulnerable the environment is. It is worth noting that the impact of digitalization is twofold; on one hand, it can contribute to the economy by boosting production and the transparency of different projects, while, on the other hand, it can cause damage to the environment, leading to increases in CSR costs. Similarly, economic policy uncertainty also showed a positive relationship for the following reasons. First, the danger posed by EPU is uncertain because of its unexpected nature [
6,
63]. Second, since 1997, several financial crises have affected the world’s economies and financial markets [
64]. Regrettably, the size, rate of spread, and complexity of EPU have all risen with each global economic crisis. Thus, the literature has demonstrated that EPU is significantly correlated with economic recessions [
64], increased unemployment, and volatile exchange rates. On the other hand, it is unclear how EPU affects carbon emissions globally. Hence, an empirical study is necessary. Third, research indicates that a firm’s financial performance, investment choices, and business competitiveness are all impacted by EPU. Thus, we conclude that EPU impacts a firm’s carbon emissions. Real options and prospect theories provide the foundation of our argument. Fourth, earlier research indicated that the extraordinary global economic expansion over the last 25 years has come at the price of a clean and sustainable environment for future generations. The leading cause of environmental deterioration and the threat of climate change is global CO
2 emissions [
35]. Similarly, the relationship between renewable energy consumption and CO
2 emissions is harmful, as many earlier studies have pointed out. In their foundational study, ref. [
65] established what is now known as the Environmental Kuznets Curve (EKC) framework, which is the primary theory used to explain global CO
2 emissions trends over the long term. found a non-linear (inverted U-shaped) relationship between per capita GDP and environmental outcomes including CO
2 emissions. Multiple review studies have demonstrated the validity of the EKC hypothesis [
66,
67]. “Strong evidence in support of EKC” was found by [
68], who completed a revised meta-analysis of 101 papers. The results of our study align with previous studies in the case of East Asia and Pacific countries.
6. Conclusions and Recommendations
Global warming and climate change are global issues that have gained tremendous momentum in spheres ranging from politics to the public domain and academia. At the same time, uncertainty in the economy, the emergence of AI, and the demand for renewable energy exacerbate these environmental concerns. This study focused on the relationships among these factors. Notably, earlier studies have examined similar factors for different countries. A significant contributor to climate change is the human-caused emission of gases into the atmosphere, including carbon dioxide. Energy consumption from renewable sources, EPU, AI, and CO2 emissions are the subjects of this study’s dynamic interconnections. In this study, panel data for East Asian and Pacific nations from 2000 to 2023 were collected to facilitate an empirical analysis of the links among these factors. The variance decomposition test indicates that AI does not affect CO2 emissions, whereas the benchmark regression indicates a positive link between AI and CO2 emissions. To similar extents, the variance decomposition test and benchmark regression FE, RE, and GMM tests all demonstrate a robust positive correlation between economic policy uncertainty and CO2 emissions. Carbon dioxide emissions are positively affected by an increase in EPU. Renewable energy significantly reduces CO2 emissions in East Asian and Pacific nations. The findings show that a unit increase in the use of renewable energy results in a unit decrease in CO2 emissions.
Policy recommendations
Based on the results of this study and by investigating the components of environmental degradation via an increase in CO2 emissions, this study suggests the following policy recommendations, which will help to reduce CO2 emissions. The first concerns the use of fossil fuels and inducement towards renewables overall. The most effective, efficient, and cost-effective tool for encouraging investments in clean technology is carbon pricing laws, which include emission trading systems and carbon taxes. Investments in environmentally friendly goods, regulations that promote a greener economy, and sustainable development projects are also important factors. Second, machine learning researchers should be incentivized to create more effective machine learning (ML) models to disclose their energy use and carbon footprints. An innovative model that incorporates these aspects from the outset has the potential to decrease emissions.
Third, to help their customers understand and lower their energy usage and carbon footprint, data center providers should be incentivized to share information regarding data center efficiency and the cleanliness of the energy supply by location. Cloud data centers use 30% less energy than the typical local data centers, and they have cooling and power delivery overheads of less than 10%. Finally, experts in machine learning (ML) deserve recognition for training models in the most environmentally friendly data centers, which are now frequently located in the cloud. They can produce 5 to 10 times fewer emissions for the same work, even in the same place.