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Pareto efficient allocation of an in-motion wireless charging infrastructure for electric vehicles in a multipath network

机译:Pareto高效分配多径网络中电动车辆的动作无线充电基础设施

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Electric vehicles (EV) use an eco-friendly technology that limits the greenhouse gas emissions of the transport sector, but the limited battery capacity and the density of the battery are the major barriers to the widespread adoption of EV. To mitigate this, a good method seems to be the innovative wireless charging technology called 'On-Line EV (OLEV)', which is a contactless electric power transfer technology. This EV technology has the potential to charge the vehicle's battery dynamically while the vehicle is in motion. This system helps to reduce not only the size of the battery but also its cost, and it also contributes to extending the driving range before the EV has to stop. The high cost of this technology requires an optimal location of the infrastructure along the route. For this reason, the objective of this paper is to study the problem of the location of the wireless charging infrastructure in a transport network composed of multiple routes between the origin and the destination. To find a strategic solution to this problem, we first and foremost propose a nonlinear integer programming solution to reach a compromise between the cost of the battery, which is related to its capacity, and the cost of installing the power transmitters, while maintaining the quality of the vehicle's routing. Second, we adapt the multi-objective particle swarm optimization (MPSO) approach to our problem, as the particles were robust in solving nonlinear optimization problems. Since we have a multi-objective problem with two binary variables, we combine the binary and discrete versions of the particle swarm optimization approach with the multi-objective one. The port of Le Havre is presented as a case study to illustrate the proposed methodology. The results are analyzed and discussed in order to point out the efficiency of our resolution method.
机译:电动车(EV)使用环保技术限制了运输部门的温室气体排放,但电池容量有限,电池的密度是广泛采用EV的主要障碍。为了缓解这一点,良好的方法似乎是名为“在线EV(OLEV)”的创新无线充电技术,这是一种非接触式电力传输技术。该EV技术的电源有可能在车辆运动中动态充电。该系统不仅有助于减少电池的大小,也有助于其成本,并且在EV必须停止之前,它也有助于扩展驾驶范围。该技术的高成本需要沿着路线的基础设施的最佳位置。因此,本文的目的是研究由原点和目的地之间的多个路线组成的传输网络中无线充电基础设施的位置的问题。要找到解决此问题的战略解决方案,我们首先提出了一个非线性整数编程解决方案,以达到电池成本之间的折衷,与其容量有关,以及安装功率发射器的成本,同时保持质量车辆的路线。其次,随着颗粒在解决非线性优化问题方面是稳健的,我们适应我们的问题的多目标粒子群优化(MPSO)方法。由于我们有两个二进制变量的多目标问题,因此我们将二进制和离散版本的粒子群优化方法与多目标一体相结合。 Le Havre的港口被呈现为案例研究来说明所提出的方法。分析并讨论了结果,以指出我们分辨率方法的效率。

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