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Optimal Design of Electric Vehicle Parking Lot based on Energy Management Considering Hydrogen Storage System and Demand Side Management

机译:基于能源管理的电动汽车停车场优化设计考虑储氢系统和需求侧管理

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摘要

Basically, a system is associated with uncertainty and it is the existence of such a factor which results in an uncertain planning and designing. In today's power system, these conditions are mostly reasoned through the uncertain performance of a number of parameters e.g. price, so the use of uncertainty modeling becomes necessary. In the present work, an optimization model, based on virus search colony, is used for the optimal performance of intelligent parking of electric vehicles in uncertainty situations caused by the price of the upstream grid in the demand response (DRP) program. It has been used to reduce the daily cost of performance by changing various parts of the load between peak and off-peak intervals. Virus Colony Search (VCS) method is a method based on the random-based population, which is also based on specific behaviors of the virus. Chaos theory has been used to develop this algorithm and improve local and global search. Moreover, the proposed multi-objective algorithm is a model based on non-dominated sorting model, variable detection, memory-based strategy selection and fuzzy theory to select the best Pareto from the answer set. Besides, it has a powerful function in solving the above problem. Regarding the mentioned techniques, the possibility of being in local points is reduced and the speed of convergence to the final response is increased. The proposed method was investigated on a sample system including, intelligent parking, local units, thermal and renewable plants in the proposed upstream grid price uncertainty technique. The obtained results show the efficiency of the suggested model. According to the compared results, under the demand response program, the average value of the smart parking cost is reduced about 4%.
机译:基本上,系统与不确定性相关,并且它存在这种因素,这导致了不确定的规划和设计。在当今的电力系统中,这些条件主要通过许多参数的不确定性能来推理。价格,所以使用不确定性建模是必要的。在目前的工作中,基于病毒搜索落地的优化模型用于电动车辆在需求响应(DRP)计划中上游网格价格造成的不确定性情况下的电动车辆智能停放的最佳性能。它已被用于通过改变峰值和非峰值间隔之间的各个部件来降低每日性能成本。病毒殖民地搜索(VCS)方法是一种基于随机基于随机群的方法,其也是基于病毒的特定行为。混沌理论已被用于开发这种算法并改善本地和全球搜索。此外,所提出的多目标算法是基于非主导排序模型,可变检测,基于存储器的策略选择和模糊理论的模型,以从答案集中选择最佳帕累托。此外,它在解决上述问题方面具有强大功能。关于提到的技术,减少了处于局部点的可能性,并且增加了对最终响应的收敛速度。在提出的上游网格价格不确定性技术中研究了所提出的方法,包括智能停车,局部单位,热和可再生工厂。所获得的结果表明了建议模型的效率。根据比较结果,在需求响应计划下,智能停车成本的平均值减少了约4%。

著录项

  • 来源
    《Journal of Energy Storage》 |2021年第10期|103045.1-103045.13|共13页
  • 作者单位

    Weifang Univ Sci & Technol Sch Architecture & Art Weifang 262700 Shandong Peoples R China|Weifang Key Lab Blockchain Agr Vegetables Weifang 262700 Shandong Peoples R China;

    Weifang Univ Sci & Technol Blockchain Lab Agr Vegetables Weifang 262700 Shandong Peoples R China|Weifang Key Lab Blockchain Agr Vegetables Weifang 262700 Shandong Peoples R China;

    Lebanese French Univ Coll Engn & Comp Sci Dept Comp Engn Erbil Iraq|Salahaddin Univ Erbil Dept Software & Informat Engn Erbil Iraq;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Smart Parking; Uncertainty Modeling; Virus Colony Search Optimization Method; Demand Side Management;

    机译:智能停车;不确定性建模;病毒殖民地搜索优化方法;需求方管理;

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