The impact of AI on carbon emissions: evidence from 66 countries
暂无分享,去创建一个
[1] Qiang Wang,et al. Revisiting the environmental kuznets curve hypothesis in 208 counties: The roles of trade openness, human capital, renewable energy and natural resource rent. , 2022, Environmental research.
[2] Qiang Wang,et al. Trade protectionism jeopardizes carbon neutrality – Decoupling and breakpoints roles of trade openness , 2022, Sustainable Production and Consumption.
[3] Qiang Wang,et al. Does income inequality reshape the environmental Kuznets curve (EKC) hypothesis? A nonlinear panel data analysis , 2022, Environmental Research.
[4] Zheng Ji,et al. Do Artificial Intelligence Applications Affect Carbon Emission Performance?—Evidence from Panel Data Analysis of Chinese Cities , 2022, Energies.
[5] Yaya Li,et al. Carbon emission reduction effects of industrial robot applications: Heterogeneity characteristics and influencing mechanisms , 2022, Technology in Society.
[6] Adnan Safi,et al. Role of institutional quality and renewable energy consumption in achieving carbon neutrality: Case study of G-7 economies. , 2022, The Science of the total environment.
[7] M. Mele,et al. Does Logistics Performance Trigger or Mitigate Oil Demand in the Transport Sector? An Application of ANNs Experiments to Europe , 2021, Structural Change and Economic Dynamics.
[8] M. Mele,et al. The nexus between information technology and environmental pollution: Application of a new machine learning algorithm to OECD countries , 2021 .
[9] Dequn Zhou,et al. Effects of trade openness on renewable energy consumption in OECD countries: New insights from panel smooth transition regression modelling , 2021, Energy Economics.
[10] Qiang Wang,et al. Does urbanization redefine the environmental Kuznets curve? An empirical analysis of 134 Countries , 2021, Sustainable Cities and Society.
[11] R. Jiang,et al. Per-capita carbon emissions in 147 countries: The effect of economic, energy, social, and trade structural changes , 2021, Sustainable Production and Consumption.
[12] Hidemichi Fujii,et al. Artificial intelligence and energy intensity in China’s industrial sector: Effect and transmission channel , 2021, Economic Analysis and Policy.
[13] Cosimo Magazzino,et al. Revisiting the dynamic interactions between economic growth and environmental pollution in Italy: evidence from a gradient descent algorithm , 2021, Environmental Science and Pollution Research.
[14] Yi-Ming Wei,et al. Impacts of urbanization on carbon emissions: An empirical analysis from OECD countries , 2021 .
[15] Qiang Wang,et al. The nonlinear effects of population aging, industrial structure, and urbanization on carbon emissions: A panel threshold regression analysis of 137 countries , 2021, Journal of Cleaner Production.
[16] Jun Liu,et al. The effect of artificial intelligence on carbon intensity: Evidence from China's industrial sector , 2021, Socio-Economic Planning Sciences.
[17] Payal Dhar,et al. The carbon impact of artificial intelligence , 2020, Nature Machine Intelligence.
[18] Cosimo Magazzino,et al. A Machine Learning analysis of the relationship among iron and steel industries, air pollution, and economic growth in China , 2020, Journal of Cleaner Production.
[19] Yacouba Kassouri,et al. Investigating the non-linear effects of globalization on material consumption in the EU countries: Evidence from PSTR estimation , 2020 .
[20] Rohit Nishant,et al. Artificial intelligence for sustainability: Challenges, opportunities, and a research agenda , 2020, Int. J. Inf. Manag..
[21] Kerui Du,et al. Does market-oriented reform increase energy rebound effect? Evidence from China's regional development , 2019, China Economic Review.
[22] Qunwei Wang,et al. How information and communication technology drives carbon emissions: A sector-level analysis for China , 2019, Energy Economics.
[23] Max Tegmark,et al. The role of artificial intelligence in achieving the Sustainable Development Goals , 2019, Nature Communications.
[24] Lingyun Huang,et al. Impact of financial development on trade-embodied carbon dioxide emissions: Evidence from 30 provinces in China , 2018, Journal of Cleaner Production.
[25] Thomas Niebel,et al. BIG data – BIG gains? Understanding the link between big data analytics and innovation , 2018, Economics of Innovation and New Technology.
[26] Manuel Trajtenberg,et al. Ai as the Next Gpt: A Political-Economy Perspective , 2018 .
[27] Mingquan Li,et al. Will technology advances alleviate climate change? Dual effects of technology change on aggregate carbon dioxide emissions , 2017 .
[28] Daron Acemoglu,et al. Robots and Jobs: Evidence from US Labor Markets , 2017, Journal of Political Economy.
[29] Yongtao Tan,et al. Identifying key impact factors on carbon emission: Evidences from panel and time-series data of 125 countries from 1990 to 2011 , 2017 .
[30] Huiming Zhu,et al. The effects of FDI, economic growth and energy consumption on carbon emissions in ASEAN-5: Evidence from panel quantile regression , 2016 .
[31] Tobias Menz,et al. Population aging and environmental quality in OECD countries: evidence from sulfur dioxide emissions data , 2011 .
[32] C. Rammer,et al. Artificial intelligence and industrial innovation: Evidence from German firm-level data , 2022, Research Policy.
[33] M. T. Ballestar,et al. Knowledge, robots and productivity in SMEs: Explaining the second digital wave , 2020 .
[34] Chaoyang Zhang,et al. Digital twin-driven carbon emission prediction and low-carbon control of intelligent manufacturing job-shop , 2019, Procedia CIRP.
[35] Yue‐Jun Zhang,et al. Energy rebound effect in China's Industry: An aggregate and disaggregate analysis , 2017 .
[36] D. Canning,et al. Implications of population ageing for economic growth , 2010 .
[37] Bruce Tonn,et al. The aging US population and residential energy demand , 2007 .