数据驱动、以人为本的城市电动汽车充电推荐系统

Jingping Nie, S. Xia, Yanchen Liu, Shengxuan Ding, Lanxiang Hu, Minghui Zhao, Yuang Fan, M. Abdel-Aty, M. Preindl, Xiaofan Jiang
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引用次数: 1

摘要

近年来,电动汽车得到了广泛的普及,电动汽车充电的调度和路径问题影响到电动汽车驾驶员和电网的福利。在本文中,我们提出了一种基于深度强化学习(DRL)的实用的、数据驱动的、以人为中心的城市规模电动汽车充电推荐系统。该系统共同优化了电动汽车司机和电网的福利。我们以不同的格式和时间粒度增强和聚合来自各种来源的数据,包括公共数据、基于位置的数据公司和政府机构。这些数据包括电动汽车充电器信息、电网容量、电动汽车驾驶行为信息和城市规模的移动出行。我们创建了一个包含充电价格和电网容量的30天/分钟统一的电动汽车充电器信息数据集,以及一个包含位置和充电状态(SoC)信息的电动汽车驾驶行为数据集。我们对推荐系统的评估表明,它能够提供建议,减少司机到充电器的平均距离,并最大限度地减少充电器切换到不同司机的次数。我们为训练DRL代理准备的数据集,包括增强的电动汽车驾驶数据和充电站信息,将开源,以有利于未来的社区研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven and Human-Centric EV Charging Recommendation System at City-Scale
Electric vehicles (EVs) have gained widespread popularity in recent years, and the scheduling and routing of EV charging have impacted the welfare of both EV drivers and the grid. In this paper, we present a practical, data-driven, and human-centric EV charging recommendation system at the city-scale based on deep reinforcement learning (DRL). The system co-optimizes the welfare of both the EV drivers and the grid. We augmented and aggregated data from various sources, including public data, location-based data companies, and government authorities, with different formats and time granularities. The data includes EV charger information, grid capacity, EV driving behavior information, and city-scale mobility. We created a 30-day per-minute unified EV charger information dataset with charging prices and grid capacity, as well as an EV driving behavior dataset with location and State of Charge (SoC) information. Our evaluation of the recommendation system shows that it is able to provide recommendations that reduce the average driver-to-charger distance and minimize the number of times chargers switch to a different driver. The dataset we prepared for training the DRL agent, including augmented EV driving data and charging station information, will be open-sourced to benefit future research in the community.
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