面向可再生能源的电力系统中电动汽车优化调度新技术:深度学习、深度强化学习和区块链技术综述

Wenshuai Ma, Junjie Hu, Li Yao, Zhuoming Fu, Hugo Morais, Mattia Marinelli
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引用次数: 1

摘要

随着全球对碳排放的关注,世界范围内可再生能源发电的比例越来越高,电力系统对灵活资源的需求越来越大。近年来,电动汽车作为一种清洁的交通工具,其数量不断增加,电动汽车的优化调度成为研究热点。人工智能、区块链等创新技术的兴起,丰富了电动汽车优化调度的研究内容。为了揭示电动汽车最优调度研究的最新进展,本文综述了深度学习、深度强化学习和区块链技术在电动汽车最优调度中的应用。此外,还突出了各种技术应用的优缺点。最后,针对上述三种技术的不足和应用发展现状,对未来的研究方向提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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New technologies for optimal scheduling of electric vehicles in renewable energy-oriented power systems: A review of deep learning, deep reinforcement learning and blockchain technology

With global concerns about carbon emissions, the proportion of renewable energy generation worldwide is increasing, and the demand for flexible resources in power systems is growing. In recent years, as a clean means of transportation, the number of electric vehicles has increased, and the optimal scheduling of electric vehicles has become a research hotspot. The rise of artificial intelligence, blockchain, and other innovative technologies has enriched research on optimal scheduling of electric vehicles. To reveal the latest developments in electric vehicle optimal scheduling studies, this paper summarises the application of state-of-the-art technologies, including deep learning, deep reinforcement learning, and blockchain technology in the optimal scheduling of electric vehicles. Moreover, the advantages and disadvantages of various technical applications are highlighted. Finally, considering the shortcomings and developmental status of applications of the above three technologies, some suggestions for future research directions are proposed.

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