1. Introduction
Climate change is one of the most pressing global challenges, with far-reaching consequences for human well-being and environmental and economic stability. This phenomenon can be attributed to unsustainable human activities, particularly linked with deforestation, industrialization, and the usage of fossil fuels. According to GFN [
1], humanity is currently depleting nature 1.7 times faster than the pace at which the ecosystems of our world can replenish themselves. As a result, to address the increasingly pressing climatic and environmental concerns, both developed and developing nations worldwide have implemented various policies, including expediting energy transitions, preserving natural resources, and curbing industrial emissions to achieve sustainable development.
The advent of AI has had multifaceted impacts on industries and human life, with its applications expanding into healthcare, finance, logistics, energy, and manufacturing, among others. According to Forbes [
2], the AI market is anticipated to accomplish an unprecedented USD 407 billion by 2027, a significant growth from its USD 86.9 billion revenue in 2022. AI, particularly through industrial robotics, can pose a favorable and unfavorable impact on the environment. On the negative side, industrial robotics require more energy to maintain and operate, which can lead to higher emissions, especially if the power is sourced from fossil fuels. The fast-evolving nature of technological change in robotics and AI may eventually lead to frequent replacement and upgradation, consequently resulting in electronic waste. On the other hand, AI-based automation can help the manufacturing industry at large in optimizing resources, minimalizing waste generation, and enhancing overall efficiency. The application of industrial robots encourages technological development in manufacturing, which is a significant path toward achieving energy efficiency and emission reduction [
3].
Resource efficiency can help to alleviate the EF, considering how growth in the global population and consumption pattern goes beyond the unprecedented pressure faced by the Earth through its finite resources and fragile ecosystems. Kirikkaleli and Ali [
4] suggest that resource efficiency is one of the viable approaches that can decouple economic development from environmental degradation by considering material, energy, and water use within cycles of production and consumption. It also entails several strategies, including circular economy principles, transition to renewable energy, the reduction of waste, and environmentally friendly technologies that enable more sustainable means of production. In light of the urgent need for a shift toward sustainability, resource efficiency has emerged as one of the most critical factors that can help balance human development with environmental stewardship.
Energy is considered an indispensable pillar of economic and human development. Fossil fuel energy consumption is the prime source of environmental deprivation, responsible for approximately 75% of global greenhouse gas emissions. Nonetheless, nations rely on fossil fuels such as coal, oil, and gas to meet their energy needs, further exacerbating environmental degradation. Therefore, achieving SDG-13 necessitates the simultaneous fulfillment of SDG-7, which is access to clean and affordable energy. Addressing the current climate crisis requires transitioning from conventional energy sources to renewable and clean alternatives. This shift is widely recognized as a critical component of effective climate change mitigation strategies. The International Energy Agency projected that to keep global warming to 1.5 °C, the world will need triple the amount of renewable energy capacity by 2030—that is, at least 11,000 GW—and double the average annual rate of improvement in energy efficiency worldwide from about 2% to over 4% until 2030 [
5]. Renewable energy transition requires significant financial resources along with consistent government policies.
Geopolitical risk plays a critical role in shaping global economic and environmental outcomes. Geopolitical risk can influence the EF in several ways. First, political instability and disputes between countries can disrupt energy markets. Supply chain disruption and price volatility may, therefore, compel countries to opt for fossil fuel energy at the expense of long-term green transition in energy. Second, geopolitical conflict diverts funds and investment meant for projects on the mitigation of climate change to defense and security sectors. Third, geopolitical issues can disrupt the supply chain for renewable energy technologies, thereby hindering the nation’s efforts toward energy transition. According to Pata et al. [
6], geopolitical risk is often perceived as unfavorable. However, it can inadvertently improve environmental quality since it may disrupt economic activities or energy consumption, lowering emissions. Furthermore, as countries face economic sanctions related to the import of fossil fuels, it may accelerate the transition to green energy sources [
7].
The G7 is an economic bloc comprising seven of the world’s advanced economies, which have contributed much to the world, particularly in aspects of economic development, trade, global governance frameworks, technological advancement, and leading on the fronts of climate change mitigation and low-carbon transitioning. They collectively contributed 25.8% of the global GDP in 2023. In 2023, these countries consumed 158.6 exajoules of primary energy consumption, which is 25.6% of the global energy consumption of 620 exajoules. These countries jointly emitted 7626.2 million tons of carbon dioxide, which accounted for 21.71% of the global total emissions. The G7 countries are committed to reducing emissions by 19–33% by 2030 compared to 2019 levels and achieving carbon neutrality (‘net zero’) by 2050. As highlighted at the IEA 2024 Ministerial, the G7 must also emphasize that energy security and climate security are inherently interconnected and stress that clean energy transitions are essential for ensuring energy security. The COP28 agreement to double energy efficiency rates and triple renewable energy capacity by the end of this decade has the potential to achieve 85% of the reductions in unabated fossil fuel use needed by 2030. However, despite these efforts, their EF in 2022 reached 5.04 gha per person, which is considerably higher than the world average of 2.58 gha per person. Furthermore, climate analysis reports reveal that none of the G7 members are currently on track to meet their existing 2030 emission reduction targets, which remain misaligned with the 1.5 °C pathway [
8]. In summary, these arguments underscore the necessity for redesigning their climate mitigation policy framework, particularly in light of challenges posed by geopolitical risks.
The objective of this study is to examine the impact of industrial robotics, resource efficiency, energy transition, and geopolitical risk on environmental sustainability in G7 countries. This study addresses the following research questions: (i) What is the impact of industrial robotics on environmental quality in G7 countries? (ii) Does an increase in resource efficiency enhance environmental quality? (iii) Does accelerating the energy transition process help mitigate environmental degradation? (iv) What is the impact of geopolitical risk on environmental sustainability? This study makes three key contributions to the literature on environmental sustainability. First, it investigates the impact of industrial robotics on environmental quality in G7 countries, addressing a critical gap in the literature. While AI-based robotics are increasingly recognized for their transformative potential, there is limited empirical research on how AI-driven automation in manufacturing influences ecological outcomes, particularly in advanced economies. By focusing on G7 nations—global leaders in technology and environmental policy—this study provides novel insights into how AI-based industrial robotics can shape environmental sustainability. Second, the study uniquely integrates industrial robotics, resource efficiency, energy transition, and geopolitical risk within a single environmental policy framework. This holistic approach provides a more comprehensive understanding of the complex interplay between technological advancement, resource management, energy policies, and global political dynamics in shaping environmental outcomes. Third, the study employed advanced econometric techniques, including Kernel-based Regularized Least Squares (KRLS) and Artificial Neural Network (ANN) machine learning methods, allowing for a more nuanced and robust analysis. Lastly, by focusing on G7 countries, our research offers targeted policy recommendations for advanced economies striving to meet ambitious environmental targets, providing valuable insights for global leadership in tackling climate change and advancing SDGs.
The remainder of the study is structured as follows:
Section 2 presents the literature review, followed by the materials and methods in
Section 3.
Section 4 outlines the results and discussion, while
Section 5 concludes with policy implications.
5. Conclusions
This study explored the impact of industrial robotics, resource efficiency, ET, and the GPR on the EF of G7 nations from 1993 to 2021. The empirical outcomes reveal that industrial robotics significantly and negatively affects the EF, indicating that increased adoption of industrial robotics can help reduce environmental degradation. Moreover, resource efficiency also negatively impacts the EF, highlighting the importance of optimized resource use in advanced economies. Energy transition demonstrates a negative effect on the EF, suggesting that the shift to renewable energy sources effectively curbs environmental impact. Conversely, the GPR poses a significant positive impact on the EF. The positive association between the GPR and EF suggests that geopolitical instability can obstruct environmental progress. Heightened geopolitical tensions may divert policy priorities away from sustainability initiatives, delay green investments, and increase reliance on non-renewable energy sources due to supply chain disruptions. Economic growth shows a positive relationship with the EF, underscoring ongoing challenges in balancing development with ecological preservation.
Based on the study’s findings, several policy implications emerge to guide G7 countries in achieving environmental sustainability and advancing the SDGs: First, governments should incentivize the adoption of AI-based industrial robotics in manufacturing and other sectors by offering tax benefits, subsidies, or grants for companies investing in green automation technologies. Funding research and development in AI applications that enhance resource efficiency, reduce waste, and minimize environmental impact can further accelerate sustainable industrial practices. These measures align with SDG 9 and SDG 12. Second, policies should encourage circular economy principles, such as designing products for durability, repairability, and recyclability. Implementing extended producer responsibility (EPR) policies can ensure that manufacturers optimize resource use throughout product lifecycles, reducing waste and promoting sustainable consumption. These efforts support SDG 12 and SDG 13. Third, to achieve SDG 7, governments should increase funding for green energy infrastructure and research. Implementing carbon pricing mechanisms and phasing out fossil fuel subsidies can accelerate the transition to renewable energy sources. Additionally, investing in smart grid technologies can improve energy distribution efficiency and integrate renewable energy into national grids more effectively. Fourth, to address the adverse effects of geopolitical risks on environmental sustainability, G7 countries should foster international cooperation on climate and energy issues. Developing resilient supply chains for critical green technologies, such as solar panels and wind turbines, can minimize disruptions during geopolitical crises. These measures align with SDG 16 and SDG 17. Lastly, G7 countries should prioritize qualitative growth over quantitative expansion by promoting environmentally friendly manufacturing processes and sustainable business practices. Targeted policies and incentives can encourage industries to adopt low-carbon technologies and green innovations, contributing to SDG 8 and SDG 9. By implementing these policies, G7 countries can leverage their technological and economic advantages to lead global efforts in combating climate change, achieving environmental sustainability, and attaining the SDGs.
This study is limited to G7 countries, meaning its findings may not be directly applicable to other nations with different economic conditions and policy environments. Additionally, the analysis focuses specifically on industrial robotics, which is just one aspect of artificial intelligence (AI). Future research could expand the scope by incorporating other AI technologies, such as machine learning, deep learning, and automation, to provide a more comprehensive understanding of AI’s influence on green growth. Moreover, examining a broader range of countries, including developing and emerging economies, could offer deeper insights into the global implications of AI for sustainable development.