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.
翻译:电动车辆(EV)计费建议既考虑到用户的偏好,又适应不断变化的外部环境,这是一项具有成本效益的战略,可以缓解私人EV驱动者的广泛焦虑。以前的研究侧重于实现优化资源分配的集中战略,对于隐私不相干的出租车车队和固定路线的公共中转特别有用。然而,私人EV驱动者寻求一项更个性化和资源认知收费建议,该建议是量身定制的,既适合用户的偏好(收费时间和地点),又充分适应收费供求之间的时空错配。我们在此提出一个新的正规化的Actor-C(RAC)计费方法,使每个EV驱动者都能在用户偏好(历史收费模式)和外部奖励(行走距离和等待时间)之间取得最佳平衡。两个真实世界数据集的实验结果显示了我们处理竞争方法的方法的独特性和优异性。