Dynamic grouping control of electric vehicles based on improved k-means algorithm for wind power fluctuations suppression

IF 1.9 Q4 ENERGY & FUELS Global Energy Interconnection Pub Date : 2023-10-01 DOI:10.1016/j.gloei.2023.10.003
Yang Yu , Mai Liu , Dongyang Chen , Yuhang Huo , Wentao Lu
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Abstract

To address the significant lifecycle degradation and inadequate state of charge (SOC) balance of electric vehicles (EVs) when mitigating wind power fluctuations, a dynamic grouping control strategy is proposed for EVs based on an improved k-means algorithm. First, a swing door trending (SDT) algorithm based on compression result feedback was designed to extract the feature data points of wind power. The gating coefficient of the SDT was adjusted based on the compression ratio and deviation, enabling the acquisition of grid-connected wind power signals through linear interpolation. Second, a novel algorithm called IDOA-KM is proposed, which utilizes the Improved Dingo Optimization Algorithm (IDOA) to optimize the clustering centers of the k-means algorithm, aiming to address its dependence and sensitivity on the initial centers. The EVs were categorized into priority charging, standby, and priority discharging groups using the IDOA-KM. Finally, an two-layer power distribution scheme for EVs was devised. The upper layer determines the charging/discharging sequences of the three EV groups and their corresponding power signals. The lower layer allocates power signals to each EV based on the maximum charging/discharging power or SOC equalization principles. The simulation results demonstrate the effectiveness of the proposed control strategy in accurately tracking grid power signals, smoothing wind power fluctuations, mitigating EV degradation, and enhancing the SOC balance.

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基于改进k-means算法的电动汽车动态分组控制风力波动抑制
为了解决电动汽车在缓解风电波动时生命周期显著退化和荷电状态(SOC)平衡不足的问题,提出了一种基于改进k-means算法的电动汽车动态分组控制策略。首先,设计了一种基于压缩结果反馈的摆动门趋势(SDT)算法来提取风电的特征数据点。SDT的选通系数根据压缩比和偏差进行调整,从而能够通过线性插值获取并网风电信号。其次,提出了一种新的算法IDOA-KM,该算法利用改进的Dingo优化算法(IDOA)来优化k-means算法的聚类中心,旨在解决其对初始中心的依赖性和敏感性。使用IDOA-KM将电动汽车分为优先充电组、备用组和优先放电组。最后,设计了一种电动汽车的双层配电方案。上层确定三个EV组的充电/放电顺序及其相应的功率信号。下层基于最大充电/放电功率或SOC均衡原理将功率信号分配给每个EV。仿真结果证明了所提出的控制策略在准确跟踪电网功率信号、平滑风电波动、缓解电动汽车退化和增强SOC平衡方面的有效性。
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来源期刊
Global Energy Interconnection
Global Energy Interconnection Engineering-Automotive Engineering
CiteScore
5.70
自引率
0.00%
发文量
985
审稿时长
15 weeks
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