利用机器学习模型通过重新部署发电厂来减轻中国可再生能源发电的气候风险

IF 7.3 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES
Earths Future Pub Date : 2025-04-17 DOI:10.1029/2024EF005641
Lin Lv, Miaomiao Liu, Yuli Shan, Jinghang Xu, Jianxun Yang, Wen Fang, Zongwei Ma, Jun Bi
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引用次数: 0

摘要

重新部署工厂可以减轻气候风险,提高可再生能源发电。然而,在经济和社会因素的约束下,发电和气候变量之间缺乏电厂层面的响应,使得部署策略的设计变得复杂。在这里,我们开发了三个随机森林(RF)响应模型,该模型使用17年的历史数据集,准确地捕捉了可再生能源发电(水电、太阳能和风能)与工厂层面气候参数之间的非线性关系。这些RF模型能够在代表性浓度路径和共享社会经济路径(RCP-SSP)情景下预测现有和新建电厂的可再生能源发电量,以及部署策略。我们的分析显示,与2002年至2017年期间相比,2045年至2060年期间,现有工厂的可再生能源发电量预计将大幅减少6%-8%(57-72太瓦时)。气候变化对可再生能源发电的影响存在空间差异,表明优化新建电厂的部署可以缓解不利影响。与维持原有部署的战略相比,通过针对未来气候的优化部署,国家可再生能源发电量可增加24%-28%。优化后的部署可以使碳排放量减少25%-28%,空气污染物减少42%-97%。这些发现强调了在可再生能源系统的战略部署中考虑植物层面异质性和气候风险的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mitigating Climate Risk to China's Renewable Energy Generation by Power Plants Redeployment Using a Machine-Learning Model

Mitigating Climate Risk to China's Renewable Energy Generation by Power Plants Redeployment Using a Machine-Learning Model

Redeploying plants may mitigate climate risk and enhance renewable power generation. However, designing deployment strategies is complicated by the lack of plant-level response between power generation and climate variables with the constraint of economic and social factors. Here, we develop three random-forest (RF) response models that accurately capture the nonlinear relationship between renewable energy generation (hydro, solar, and wind power) and climate parameters at the plant level, using a 17-year historical data set. These RF models enable projections of renewable energy generation from both existing and newly built power plants under the Representative Concentration Pathways and the Shared Social-Economic Pathways (RCP-SSP) scenarios, as well as deployment strategies. Our analysis reveals that renewable energy generation from existing plants is projected to decrease significantly by 6%–8% (57–72 TWh) in 2045–2060 compared to the period 2002–2017. The impact of climate change on renewable energy generation varies spatially, suggesting optimizing the deployment of newly built power plants could mitigate adverse effects. Compared to the strategy maintaining the original deployment, national renewable energy generation can be increased by 24%–28% through optimized deployment tailored to future climate. The optimized deployment can lead to synergistic reductions in carbon emissions by 25%–28% and air pollutants by 42%–97%. These findings underscore the significance of considering plant-level heterogeneity and climate risk in the strategic deployment of renewable power systems.

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来源期刊
Earths Future
Earths Future ENVIRONMENTAL SCIENCESGEOSCIENCES, MULTIDI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
11.00
自引率
7.30%
发文量
260
审稿时长
16 weeks
期刊介绍: Earth’s Future: A transdisciplinary open access journal, Earth’s Future focuses on the state of the Earth and the prediction of the planet’s future. By publishing peer-reviewed articles as well as editorials, essays, reviews, and commentaries, this journal will be the preeminent scholarly resource on the Anthropocene. It will also help assess the risks and opportunities associated with environmental changes and challenges.
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