将用户偏好与外部奖励相结合,实现以驾驶员为中心和资源感知的电动汽车充电建议

Chengyin Li, Zheng Dong, N. Fisher, D. Zhu
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引用次数: 2

摘要

同时兼顾用户偏好和适应不断变化的外部环境的电动汽车充电建议是缓解私人电动汽车驾驶者里程焦虑的一种经济有效的策略。以往的研究主要集中在集中策略上,以实现资源的优化配置,尤其适用于隐私无关的出租车车队和固定路线的公共交通。然而,私人电动汽车司机寻求更加个性化和资源意识的充电建议,既要满足用户的偏好(充电时间和地点),又要充分适应充电供需之间的时空不匹配。本文提出了一种新的正则化行为批评家(RAC)充电推荐方法,该方法允许每个电动汽车驾驶员在用户偏好(历史充电模式)和外部奖励(行驶距离和等待时间)之间取得最佳平衡。在两个真实数据集上的实验结果表明,我们的方法与竞争方法相比具有独特的特点和优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coupling User Preference with External Rewards to Enable Driver-centered and Resource-aware EV Charging Recommendation
Electric Vehicle (EV) charging recommendation that both accommodates user preference and adapts to the ever-changing external environment arises as a cost-effective strategy to alleviate the range anxiety of private EV drivers. Previous studies focus on centralized strategies to achieve optimized resource allocation, particularly useful for privacy-indifferent taxi fleets and fixed-route public transits. However, private EV driver seeks a more personalized and resource-aware charging recommendation that is tailor-made to accommodate the user preference (when and where to charge) yet sufficiently adaptive to the spatiotemporal mismatch between charging supply and demand. Here we propose a novel Regularized Actor-Critic (RAC) charging recommendation approach that would allow each EV driver to strike an optimal balance between the user preference (historical charging pattern) and the external reward (driving distance and wait time). Experimental results on two real-world datasets demonstrate the unique features and superior performance of our approach to the competing methods.
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