Dorokhova Marina, Ballif Christophe, Wyrsch Nicolas
Photovoltaics and Thin Film Electronics Laboratory (PV-Lab), Institute of Microengineering (IMT), École Polytechnique Fédérale de Lausanne (EPFL), Neuchâtel, Switzerland.
Front Big Data. 2021 May 26;4:586481. doi: 10.3389/fdata.2021.586481. eCollection 2021.
In the past few years, the importance of electric mobility has increased in response to growing concerns about climate change. However, limited cruising range and sparse charging infrastructure could restrain a massive deployment of electric vehicles (EVs). To mitigate the problem, the need for optimal route planning algorithms emerged. In this paper, we propose a mathematical formulation of the EV-specific routing problem in a graph-theoretical context, which incorporates the ability of EVs to recuperate energy. Furthermore, we consider a possibility to recharge on the way using intermediary charging stations. As a possible solution method, we present an off-policy model-free reinforcement learning approach that aims to generate energy feasible paths for EV from source to target. The algorithm was implemented and tested on a case study of a road network in Switzerland. The training procedure requires low computing and memory demands and is suitable for online applications. The results achieved demonstrate the algorithm's capability to take recharging decisions and produce desired energy feasible paths.
在过去几年中,随着对气候变化的担忧日益增加,电动出行的重要性也不断提高。然而,有限的续航里程和稀疏的充电基础设施可能会限制电动汽车(EV)的大规模部署。为缓解这一问题,出现了对最优路线规划算法的需求。在本文中,我们在图论背景下提出了电动汽车特定路由问题的数学公式,其中纳入了电动汽车能量回收的能力。此外,我们考虑了使用中间充电站进行途中充电的可能性。作为一种可能的解决方法,我们提出了一种离策略无模型强化学习方法,旨在为电动汽车生成从源到目标的能量可行路径。该算法在瑞士道路网络的案例研究中得到了实现和测试。训练过程所需的计算和内存需求较低,适用于在线应用。所取得的结果证明了该算法做出充电决策并生成所需能量可行路径的能力。