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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Identification of charging behavior characteristic for large-scale heterogeneous electric vehicle fleet
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Identification of charging behavior characteristic for large-scale heterogeneous electric vehicle fleet

机译:大型异构电动汽车舰队充电行为特征的识别

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This paper aims to accurately identify parameters of the natural charging behavior characteristic (NCBC) for plug-in electric vehicles (PEVs) without measuring any data regarding charging request information of PEVs. To this end, a data-mining method is first proposed to extract the data of natural aggregated charging load (ACL) from the big data of aggregated residential load. Then, a theoretical model of ACL is derived based on the linear convolution theory. The NCBC-parameters are identified by using the mined ACL data and theoretical ACL model via the derived identification model. The proposed methodology is cost-effective and will not expose the privacy of PEVs as it does not need to install sub-metering systems to gather charging request information of each PEV. It is promising in designing unidirectional smart charging schemes which are attractive to power utilities. Case studies verify the feasibility and effectiveness of the proposed methodology.
机译:本文旨在准确地识别用于插入电动车辆(PEV)的自然充电行为特征(NCBC)的参数,而不测量关于PEV的充电请求信息的任何数据。为此,首先提出数据挖掘方法以从聚合住宅负载的大数据中提取自然聚合充电负荷(ACL)的数据。然后,基于线性卷积理论导出ACL的理论模型。通过使用派生识别模型使用挖掘的ACL数据和理论ACL模型来识别NCBC参数。所提出的方法是具有成本效益的,并且不会暴露PEV的隐私,因为它不需要安装子计量系统以收集每个PEV的充电请求信息。它在设计与电力公用事业有吸引力的单向智能充电方案方面很有希望。案例研究验证了提出的方法的可行性和有效性。

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