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Optimizing nonlinear charging times of electric vehicle routing with genetic algorithm

机译:用遗传算法优化电动汽车路由的非线性充电时间

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With the rising share of electric vehicles used in the service industry, the optimization of their specific constraints is gaining importance. Lowering energy consumption, time of charging and the strain on the electric grid are just some of the issues that must be tackled, to ensure a cleaner and more efficient industry. This paper presents a Two-Layer Genetic Algorithm (TLGA) for solving the capacitated Multi-Depot Vehicle Routing Problem with Time Windows (MDVRPTW) and Electric Vehicles (EV) with partial nonlinear recharging times (NL) - E-MDVRPTW-NL. Here, the optimization goal is to minimize driving times, number of stops at electric charging stations and time of recharging while taking the nonlinear recharging times into account. This routing problem closes the gap between electric vehicle routing problem research on the one hand and its applications to several problems with numerous real-world constraints of electric vehicles on the other. Next to the definition and the formulation of the E-MDVRPTW-NL, this paper presents the evolutionary method for solving this problem using the Genetic Algorithm (GA), where a novel two-layer genotype with multiple crossover operators is considered. This allows the GA to not only solve the order of the routes but also the visits to electric charging stations and the electric battery recharging times. Various settings of the proposed method are presented, tested and compared to competing meta-heuristics using well-known benchmarks with the addition of charging stations.
机译:随着服务业中使用的电动汽车份额的上升,其特定约束的优化是越来越重要的。降低能耗,充电时间和电网的应变只是必须解决的一些问题,以确保更清洁和更高效的行业。本文介绍了一种双层遗传算法(TLGA),用于用时间窗口(MDVRPTW)和电动车辆(EV)用部分非线性充电时间(NL) - E-MDVRPTW-NL求解电容多仓车辆路由问题。这里,优化目标是最小化驾驶时间,电荷电动机站的停止数和在考虑非线性充电时间的同时再充电的时间。这种路由问题缩短了电动车辆路径问题研究的差距,一方面及其应用于对另一方的众多真实世界的若干问题的应用。邻近E-MDVRPTW-NL的定义和配方,本文介绍了使用遗传算法(GA)解决该问题的进化方法,其中考虑了具有多个交叉算子的新型双层基因型。这允许GA不仅可以解决路线的顺序,还允许对电荷电台和电池充电时间的访问。呈现,测试和比较使用众所周知的基准,并使用众所周知的基准来呈现,测试和比较的各种设置。

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