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Development of energy consumption optimization model for the electric vehicle routing problem with time windows

机译:有时间窗的电动汽车路径问题能耗优化模型的建立

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Electric vehicles (EVs) are promising transportation tools for supporting green supply chain and cleaner production. In contrast to traditional fossil fuel-powered vehicles, which usually have a short range at lower speeds, EVs have a much longer (even double) range when traveling at lower speeds than high speeds. This feature has a major impact to the vehicle routing problem when EVs are used in the fleet. This study investigated the electric vehicle routing problem with time window (EVRPTW) considering the energy/electricity consumption rate (ECR) per unit of distance traveled by an EV as a function of the speed and load, referred to as EVRPTW-ECR for simplicity. As a consequence, the maximum range of an EV is estimated dynamically according to its speeds and loads along the route. A mixed-integer linear programming (MILP) model was developed for EVRPTW-ECR, where the EV's speed was treated as a continuous decision variable and the battery capacity, instead of a constant distance, was taken as the range restriction. Two linearization methods, i.e., the inner approximation and outer approximation, were introduced to handle the nonlinear relationship between the traveling speed and travel time with a given parameter epsilon to control the maximum permissible error. Computational experiments were carried out based on Solomon's instances to test the efficiency and effectiveness of the proposed model and methods, thereby demonstrating that the MILP model can be solved optimally for up to 25 customers by the CPLEX solver and partially optimized for large instances of up to 100 customers by using a heuristic approach. (C) 2019 Elsevier Ltd. All rights reserved.
机译:电动汽车(EV)是支持绿色供应链和清洁生产的有前途的运输工具。与传统的以化石燃料为动力的车辆相比,它们通常在低速行驶时的续航里程短,而与低速行驶相比,电动汽车的续航里程要长得多(甚至两倍)。当在车队中使用电动汽车时,此功能对车辆路线问题产生重大影响。这项研究研究了具有时间窗(EVRPTW)的电动汽车路线问题,考虑了电动汽车行驶的每单位距离的能量/电力消耗率(ECR)与速度和负载的关系,为简单起见,称为EVRPTW-ECR。因此,EV的最大范围会根据其沿路线的速度和负载动态估算。为EVRPTW-ECR开发了混合整数线性规划(MILP)模型,其中将EV的速度视为一个连续的决策变量,并将电池容量(而不是恒定距离)作为范围限制。引入了两种线性化方法,即内逼近法和外逼近法,以给定参数ε处理行进速度和行进时间之间的非线性关系,以控制最大允许误差。基于Solomon的实例进行了计算实验,以测试所提出的模型和方法的效率和有效性,从而证明了CPLEX求解器可以针对多达25个客户最优地求解MILP模型,并针对高达2,000的大型实例进行了部分优化。使用启发式方法的100个客户。 (C)2019 Elsevier Ltd.保留所有权利。

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