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The Location of Electric Vehicle Charging Stations based on FRLM with Robust Optimization

机译:基于FRLM的电动车充电站具有鲁棒优化的位置

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摘要

It is very important for the application of artificial intelligence to accurately and quickly help the electric vehicles to find matching charging facilities. The site selection for electric vehicle charging station (EVCS) is a new field of artificial intelligence application, using artificial intelligence to analyze the current complex urban electric vehicle driving path, and then determining the location of charging stations. This paper proposes a novel hybrid model to decide the location of EVCS. First of all, this paper carries out the flow-refueling location model (FRLM) based on path requirement to determine the site selection of EVCS. Secondly, robust optimization algorithm is used to resolve the location model considering the uncertainty of charging demand. Then, queuing theory, which takes the charging load as a constraint in the location model, is integrated into the model. Last, but not the least, a case is conducted to verify the validity of the proposed model when dealing with location problem. As a result of the above analysis, it is effective to apply robust optimization algorithm and to determine the location of EVCSs effectively when charging demand generated on the path is uncertain. At the same time, queuing theory can help to determine the optimal number of EVCSs effectively, and reduce the cost of building EVCSs.
机译:对人工智能进行准确且快速帮助电动车辆寻找匹配充电设施是非常重要的。电动车辆充电站(EVC)的站点选择是人工智能应用的新领域,使用人工智能分析当前复杂的城市电动车辆行驶路径,然后确定充电站的位置。本文提出了一种决定EVC的位置的新型混合模型。首先,本文基于路径要求执行流动加油位置模型(FRLM),以确定EVC的站点选择。其次,鲁棒优化算法用于解决考虑收费需求的不确定性的位置模型。然后,将充电负载作为位置模型中的约束的排队理论集成到模型中。最后,但不是最少的,案件是在处理位置问题时验证所提出的模型的有效性。由于上述分析,应用鲁棒优化算法是有效的,并在路径上产生的充电需求时有效地确定EVC的位置是不确定的。与此同时,排队理论有助于有效地确定EVCS的最佳数量,并降低建立EVCS的成本。

著录项

  • 来源
  • 作者单位

    North China Elect Power Univ Dept Econ & Management 689 Huadian Rd Baoding 071003 Peoples R China;

    North China Elect Power Univ Dept Econ & Management 689 Huadian Rd Baoding 071003 Peoples R China|Guizhou Inst Technol Sch Elect & Informat Engn 1 Caiguan Rd Guiyang 550003 Guizhou Peoples R China;

    North China Elect Power Univ Dept Econ & Management 689 Huadian Rd Baoding 071003 Peoples R China;

    North China Elect Power Univ Dept Econ & Management 689 Huadian Rd Baoding 071003 Peoples R China;

    Hebei Agr Univ Inst Technol 1 Bohai Rd Huanghua 061100 Peoples R China;

    China Southern Power Grid Co Ltd Guiyang Power Supply Co 186 Zhonghua North Rd Guiyang 550001 Guizhou Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Site selection; electric vehicle charging station (EVCS); robust optimization algorithm;

    机译:网站选择;电动车充电站(EVC);鲁棒优化算法;

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