MILP-Based Charging and Route Selection of Electric Vehicles in Smart Grid

A. Yadav, J. Mukherjee
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Abstract

Widely accepted as an eco-friendly alternative to conventional vehicles, electric vehicles (EVs), however, have a limitation, such as a charging schedule is necessary for its journey since overloading at a charging station may cause grid failure. Also, despite the current advancement in technology, the battery capacity of EVs is still limited, which affects the cruise range of the vehicles, and it can be solved by en route charging of EVs. However, the charging rate may vary across different public charging stations. This may motivate electric vehicle owners to follow a route that is different from the traditional shortest route. In this paper, we consider a joint charging and route optimization problem, where a transport operator has a number of EVs at a warehouse, and he/she is supposed to deliver certain goods or services to different delivery locations. We have proposed two mixed-integer linear programming (MILP) models, where the delivery locations are first distributed among the EVs, and second, routes for the EVs are determined that minimizes the total travel time, while charging on the route. We prove that the problem is NP-complete. Detailed simulation has been carried out on a realistic dataset [4][19], and solved using the commercial solver CPLEX, and IBM’s drop-solved platform. The results show that an even distribution of delivery locations among EVs along with their partial charging at different charging stations en route proves to be a useful model for fast delivery of services/goods while minimizing their total travel time.
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基于milp的智能电网电动汽车充电与路径选择
作为传统汽车的环保替代品,电动汽车(ev)被广泛接受,但它也有局限性,比如充电站超载可能导致电网故障,因此在行驶过程中必须有充电时间表。此外,尽管目前的技术进步,但电动汽车的电池容量仍然有限,这影响了汽车的巡航里程,这可以通过电动汽车的途中充电来解决。不过,不同公共充电站的充电速率可能有所不同。这可能会促使电动汽车车主选择一条与传统最短路线不同的路线。在本文中,我们考虑了一个联合充电和路线优化问题,其中运输运营商在仓库中有许多电动汽车,并且他/她应该将某些货物或服务交付到不同的交付地点。提出了两个混合整数线性规划(MILP)模型,首先在电动汽车之间分配配送地点,其次确定电动汽车的路线,使总行程时间最小化,同时在路线上充电。我们证明了这个问题是np完全的。在真实数据集上进行了详细的仿真[4][19],并使用商用求解器CPLEX和IBM的drop- solving平台进行了求解。结果表明,均匀分布配送地点并在不同的充电站进行部分充电是一种有效的配送模式,可以实现快速配送服务/货物,同时最大限度地减少总行程时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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