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A Network Design Framework for Siting Electric Vehicle Charging Stations in an Urban Network with Demand Uncertainty

机译:具有需求不确定性的城市网络中电动汽车充电站选址的网络设计框架

摘要

We consider a facility location problem with uncertainty flow customers' demands, which we refer to as stochastic flow capturing location allocation problem (SFCLAP). Potential applications include siting farmers' market, emergency shelters, convenience stores, advertising boards and so on. For this dissertation, electric vehicle charging stations siting with maximum accessibility at lowest cost would be studied. We start with placing charging stations under the assumptions of pre-determined demands and uniform candidate facilities. After this model fails to deal with different scenarios of customers' demands, a two stage flow capturing location allocation programming framework is constructed to incorporate demand uncertainty as SFCLAP. Several extensions are built for various situations, such as secondary coverage and viewing facility's capacity as variables. And then, more capacitated stochastic programming models are considered as systems optimal and user oriented optimal cases. Systems optimal models are introduced with variations which include outsourcing the overflow and alliance within the system. User oriented optimal models incorporate users' choices with system's objectives. After the introduction of various models, an approximation method for the boundary of the problem and also the exact solution method, the L-Shaped method, are presented. As the computation time in the user oriented case surges with the expansion of the network, scenario reduction method is introduced to get similar optimal results within a reasonable time. And then, several cases including testing with different number of scenarios and different sample generating methods are operated for model validation. In the last part, simulation method is operated on the authentic network of the state of Arizona to evaluate the performance of this proposed framework.
机译:我们考虑具有不确定流量客户需求的设施位置问题,我们将其称为随机流量捕获位置分配问题(SFCLAP)。潜在的应用包括选址农贸市场,紧急避难所,便利店,广告板等。为此,将研究以最低的成本获得最大可达性的电动汽车充电站。我们从在预定需求和统一候选设施的假设下放置充电站开始。在此模型无法处理客户需求的不同情况之后,构建了一个两阶段流程捕获位置分配编程框架,以将需求不确定性纳入SFCLAP。针对各种情况构建了多个扩展,例如辅助覆盖和将设施的容量视为变量。然后,更多容量的随机编程模型被认为是系统最优和面向用户的最优案例。引入了系统优化模型,其中包括将系统内的溢出和联盟外包的变型。面向用户的最佳模型将用户的选择与系统目标结合在一起。在介绍了各种模型之后,提出了问题边界的近似方法以及精确解法(L形方法)。由于面向用户的情况下的计算时间随着网络的扩展而激增,因此引入了场景减少方法以在合理的时间内获得相似的最佳结果。然后,对几种情况进行操作,包括使用不同数量的场景进行测试以及使用不同的样本生成方法进行模型验证。在最后一部分中,在亚利桑那州的真实网络上运行了仿真方法,以评估该提议框架的性能。

著录项

  • 作者

    Tan Jingzi;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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