New quality productive forces driving green development under climate resilience regulation: an analysis of artificial intelligence enabled low-carbon energy transition
気候強靱性規制下での新たな質の生産力によるグリーン発展:人工知能が可能にする低炭素エネルギー転換の分析 (AI 翻訳)
Bo Shen, Zihao Wang, Gang Liu
🤖 gxceed AI 要約
日本語
本研究は、中国269都市のパネルデータを用いて、AI発展が低炭素エネルギー転換に及ぼす影響と、気候強靱性の調整効果を分析。AIは初期に抑制的、後に促進的に作用し、気候強靱性が高い地域ではその抑制期を早期に克服できることを発見。地域差も明らかにし、AI活用脱炭素のための政策的含意を提供。
English
Using panel data from 269 Chinese cities (2008–2022), this study examines how AI development affects low-carbon energy transition, moderated by climate resilience. AI shows a U-shaped effect: initially impeding then promoting decarbonization, with climate resilience shifting the inflection point earlier. Heterogeneity across regions provides policy guidance for differentiated AI-driven decarbonization strategies.
Unofficial AI-generated summary based on the public title and abstract. Not an official translation.
📝 gxceed 編集解説 — Why this matters
日本のGX文脈において
中国の都市データを用いた実証研究であり、日本とは直接関係しないが、AIと気候強靱性の相互作用がエネルギー転換に与える影響を示しており、日本のGX政策におけるAI活用や地域別戦略の参考になり得る。
In the global GX context
This paper contributes to global GX literature by providing empirical evidence on AI's dual role in energy transition and the moderating role of climate resilience. It offers insights for regions worldwide, including China's experience, on how to design smart, resilient decarbonization policies, relevant to ISSB and transition finance discussions.
👥 読者別の含意
🔬研究者:Provides robust empirical evidence on AI's non-linear effect on low-carbon transition and climate resilience as a moderator, opening avenues for further research on technology and ecological rationality.
🏢実務担当者:Highlights the need for climate resilience measures to mitigate negative AI externalities and accelerate decarbonization, offering a framework for corporate energy transition strategies.
🏛政策担当者:Emphasizes regionally differentiated policies for AI-driven decarbonization, suggesting that high-resilience regions can leverage AI earlier for green transformation.
📄 Abstract(原文)
Low-carbon energy transition is an inevitable requirement of the concept of green development, reflecting the imperative to rationalize the metabolic exchange between humanity and nature. As a driver of new quality productive forces, artificial intelligence (AI) propels the green transformation of energy systems yet also raises concerns over “technological alienation”. This reveals its dual potential within specific production relations. However, systematic evidence remains lacking on whether climate resilience can moderate this tension. Using panel data from 269 prefecture-level cities in China (2008–2022), this study constructs a panel fixed-effects model that incorporates a quadratic term for AI development level and its interaction term with climate resilience. The moderating effect model is employed to examine how climate resilience influences the relationship between AI development and the low-carbon energy transition. Findings reveal that AI development initially inhibits but later facilitates energy decarbonization, while climate resilience significantly shifts the inflection point leftward, enabling highly resilient regions to bypass the initial suppression phase earlier. This illustrates how adaptive production relations can steer productive forces toward ecologically rational outcomes. Heterogeneity analysis further indicates this moderating effect is more pronounced in non-eastern regions, areas outside the Yangtze River Economic Belt, old industrial base regions and the Yellow River basin, aligning with the law of uneven development. By integrating asset lifecycle theory with digital technology, this study underscores climate resilience’s vital function in mitigating negative technological externalities and facilitating the rationalization of human-nature material metabolism. The findings provide theoretical and policy guidance for leveraging technology to empower green transformation and formulating regionally differentiated strategies to advance AI-driven decarbonization.
🔗 Provenance — このレコードを発見したソース
- semanticscholar https://doi.org/10.3389/fenvs.2026.1765675first seen 2026-05-15 20:42:32
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gxceed は公開メタデータに基づく研究支援データセットです。要約・翻訳・解説は AI 支援で生成されています。 最終的な解釈・検証は利用者が原典資料に基づいて行うことを前提とします。