可再生能源转型中增强城市能源系统弹性:一种基于双机器学习的新方法

IF 9.2 2区 经济学 Q1 ECONOMICS
Shu Mo , Xinghua Liu
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引用次数: 0

摘要

可再生能源转型可以充分发挥变革潜力,为提高城市能源系统的韧性提供动力。本研究以中国《清洁能源适应规划》为准自然实验,采用双机器学习模型探讨可再生能源转型对城市能源系统弹性的影响及其机制。它还审查了这一过渡的区域协调效应。研究结果表明,可再生能源转型显著增强了城市能源系统的弹性。异质性分析进一步表明,在经济发达地区、北方城市和高碳排放地区,转型对能源系统弹性的正向影响更为显著。机制分析表明,可再生能源转型增强弹性主要通过四个渠道:提高低碳意识、降低气候风险、提高能源效率和提高市场化程度。此外,这一转变削弱了传统的地理优势,有助于缩小国家、地区和省级能源系统弹性的差异,从而显示出显著的区域协调效应。本研究为更深入地理解可再生能源转型的价值和探索增强城市能源系统弹性的方法提供了重要见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strengthening the resilience of urban energy systems amid renewable energy transition: A new method based on double machine learning
Renewable energy transition can fully leverage transformative potential and provide impetus for improving the resilience of urban energy systems. This study takes China's Plan on Clean Energy Accommodation as a quasi-natural experiment and employs a dual machine learning model to explore the impact of the renewable energy transition on the resilience of urban energy systems, as well as the underlying mechanisms. It also examines the regional coordination effects of this transition. The findings reveal that the renewable energy transition significantly strengthens the resilience of urban energy systems. A heterogeneity analysis further shows that the transition has a more pronounced positive influence on energy system resilience in economically developed regions, northern cities, and those with high carbon emissions. Mechanism analysis indicates that the renewable energy transition enhances resilience through four main channels: promoting low-carbon awareness, reducing climate risks, improving energy efficiency, and increasing marketization. Additionally, the transition diminishes traditional geographical advantages, helping to narrow disparities in energy system resilience at the national, regional, and provincial levels, thereby demonstrating notable regional coordination effects. This study offers important insights for a deeper comprehension of the value of the renewable energy transition and for exploring ways to enhance urban energy system resilience.
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来源期刊
Energy Policy
Energy Policy 管理科学-环境科学
CiteScore
17.30
自引率
5.60%
发文量
540
审稿时长
7.9 months
期刊介绍: Energy policy is the manner in which a given entity (often governmental) has decided to address issues of energy development including energy conversion, distribution and use as well as reduction of greenhouse gas emissions in order to contribute to climate change mitigation. The attributes of energy policy may include legislation, international treaties, incentives to investment, guidelines for energy conservation, taxation and other public policy techniques. Energy policy is closely related to climate change policy because totalled worldwide the energy sector emits more greenhouse gas than other sectors.
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