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A Q-Learning Method for Scheduling Shared EVs Under Uncertain User Demand and Wind Power Supply

机译:不确定用户需求和风电供应下共享电动汽车的Q学习方法

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The last few years have witnessed the fast rise of sharing economy around the world. Thanks to the rapid development of electric vehicle industry and its higher market share, the business of shared electric vehicles (EVs) gains the opportunity to expand. With the improvements in charging facilities, wind power generation of high-rise buildings is expected to be a major technology to utilize renewable energy in cities. While the intermittence of wind power makes it hard to be used. Shared EVs are the perfect users of wind power for their flexibilities in using and charging. However, the scheduling of shared EVs is highly challenging because of the randomness both in wind power supply and the user demand. We address this important problem in this paper. We formulate the scheduling of shared EVs in the framework of Markov decision process. An agent-based state is defined, based on which a distributed optimization algorithm can be applied. We propose a Q-learning algorithm to solve the problem of scheduling shared EVs to maximize the global daily income. Both the users' uncertain demand and stochastic wind power supply are considered. The performance of the proposed algorithm is illustrated by numerical experiments.
机译:最近几年见证了全球共享经济的快速崛起。得益于电动汽车行业的快速发展和更高的市场份额,共享电动汽车(EV)的业务获得了扩展的机会。随着充电设施的改进,高层建筑的风力发电有望成为城市利用可再生能源的主要技术。尽管风力的间歇性使其难以使用。共享电动汽车因其使用和充电的灵活性而成为风力发电的理想用户。然而,由于风电供应和用户需求的随机性,共享电动汽车的调度具有很高的挑战性。我们在本文中解决了这个重要问题。我们在马尔可夫决策过程的框架内制定共享电动汽车的调度。定义了基于代理的状态,基于该状态可以应用分布式优化算法。我们提出了一种Q学习算法来解决调度共享电动汽车以最大化全球日收入的问题。既考虑了用户的不确定需求,又考虑了随机的风电供应。数值实验说明了该算法的性能。

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