Reinforcement learning applications in environmental sustainability: a review

被引:0
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作者
Maddalena Zuccotto
Alberto Castellini
Davide La Torre
Lapo Mola
Alessandro Farinelli
机构
[1] University of Verona,Department of Computer Science
[2] Université Côte d’Azur,SKEMA Business School
[3] University of Verona,Department of Management
[4] Université Côte d’Azur (GREDEG),SKEMA Business School
关键词
Reinforcement learning; Environmental sustainability; Reinforcement learning applications; Sustainable development; Artificial intelligence;
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摘要
Environmental sustainability is a worldwide key challenge attracting increasing attention due to climate change, pollution, and biodiversity decline. Reinforcement learning, initially employed in gaming contexts, has been recently applied to real-world domains, including the environmental sustainability realm, where uncertainty challenges strategy learning and adaptation. In this work, we survey the literature to identify the main applications of reinforcement learning in environmental sustainability and the predominant methods employed to address these challenges. We analyzed 181 papers and answered seven research questions, e.g., “How many academic studies have been published from 2003 to 2023 about RL for environmental sustainability?” and “What were the application domains and the methodologies used?”. Our analysis reveals an exponential growth in this field over the past two decades, with a rate of 0.42 in the number of publications (from 2 papers in 2007 to 53 in 2022), a strong interest in sustainability issues related to energy fields, and a preference for single-agent RL approaches to deal with sustainability. Finally, this work provides practitioners with a clear overview of the main challenges and open problems that should be tackled in future research.
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