Electric Vehicle Optimal Scheduling Method Considering Charging Piles Matching Based on Edge Intelligence

iEnergy Pub Date : 2024-09-01 DOI:10.23919/IEN.2024.0022
Ning Guo;Tuo Ji;Xiaolong Xiao;Tiankui Sun;Jinming Chen;Xiaoxing Lu;Xinyi Zheng;Shufeng Dong
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Abstract

To adress the problems of insufficient consideration of charging pile resource limitations, discrete-time scheduling methods that do not meet the actual demand and insufficient descriptions of peak-shaving response capability in current electric vehicle (EV) optimization scheduling, edge intelligence-oriented electric vehicle optimization scheduling and charging station peak-shaving response capability assessment methods are proposed on the basis of the consideration of electric vehicle and charging pile matching. First, an edge-intelligence-oriented electric vehicle regulation frame for charging stations is proposed. Second, continuous time variables are used to represent the available charging periods, establish the charging station controllable EV load model and the future available charging pile mathematical model, and establish the EV and charging pile matching matrix and constraints. Then, with the goal of maximizing the user charging demand and reducing the charging cost, the charging station EV optimal scheduling model is established, and the EV peak response capacity assessment model is further established by considering the EV load shifting constraints under different peak response capacities. Finally, a typical scenario of a real charging station is taken as an example for the analysis of optimal EV scheduling and peak shaving response capacity, and the proposed method is compared with the traditional method to verify the effectiveness and practicality of the proposed method.
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基于边缘智能的考虑充电桩匹配的电动汽车优化调度方法
针对目前电动汽车(EV)优化调度中存在的充电桩资源限制考虑不足、离散时间调度方法不符合实际需求、调峰响应能力描述不足等问题,在考虑电动汽车与充电桩匹配的基础上,提出了面向边缘智能的电动汽车优化调度和充电站调峰响应能力评估方法。首先,提出了面向边缘智能的充电站电动汽车调控框架。其次,用连续时间变量表示可用充电时段,建立充电站可控电动汽车负荷模型和未来可用充电桩数学模型,并建立电动汽车与充电桩匹配矩阵和约束条件。然后,以最大化用户充电需求和降低充电成本为目标,建立充电站电动汽车优化调度模型,并考虑不同峰值响应能力下的电动汽车负荷转移约束,进一步建立电动汽车峰值响应能力评估模型。最后,以实际充电站的典型场景为例,分析了电动汽车优化调度和削峰响应能力,并将所提方法与传统方法进行了比较,验证了所提方法的有效性和实用性。
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