基于分时电价的电动汽车集群最优调度

Abhishek Jain, Bhavana Jangid, Chandra Prakash Barala, R. Bhakar, Parul Mathuria
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引用次数: 1

摘要

电动汽车(ev)的广泛采用及其不协调的同时充电给电网带来了额外的压力,因为峰值负荷的增加。EV Aggregator (EVA)可以通过适当的价格信号来协调电动汽车的充电计划。提出了一种基于分时电价的电动汽车集群最优调度框架。首先,EVA利用聚类算法对车辆到达和离开时间对应的总需求进行聚合,进行最优功率调度;基于聚类的聚类精度至关重要,因此本研究采用先进的聚类技术——谱聚类算法,对电动汽车进行准确聚类。然而,最优的电动汽车调度是由实时价格(RTP)和使用时间(TOU)等动态价格驱动的,但由于RTP的高度波动性,其接受率相当低。因此,本文主要研究基于分时电价的电动汽车集群最优调度问题。为此,采用分层聚类的方法考虑了分时电价设计中rtp的历史数据。在案例研究中,使用谱聚类方法对500辆电动汽车进行聚类,并与传统的k-means进行比较。利用主成分分析法(PCA)对聚合结果进行分析;突出显示了聚合在时间方面的准确性。基于所提出的定价策略和聚合策略,实现了电动汽车集群的最优调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TOU Price based Optimal Scheduling of EV Clusters
The widespread adoption of Electric Vehicles (EVs) and their uncoordinated simultaneous charging puts additional stress on the grid due to an increase in peak load. The charging schedule of EVs can be coordinated by an EV Aggregator (EVA) through appropriate price signals. This paper presents an optimal scheduling framework for EV clusters using Time-of-use (TOU) price. Firstly, the EVA aggregates the total demand corresponding to the vehicle's arrival and departure times for optimal power scheduling using clustering algorithms. The accuracy of cluster-based aggregation plays a vital role, hence this study adopts the advanced clustering technique: spectral clustering algorithm, to accurately cluster the EVs. However, the optimal EV scheduling is motivated by dynamic prices like Real-Time Price (RTP) and Time of Use (TOU) but the acceptance rate of RTP is quite less due to its highly volatile nature. Hence, the proposed work focuses on the optimal scheduling of EV clusters based on TOU prices. For this, the historical data of RTPs are considered for TOU price design using hierarchical clustering. For the case study, 500 EVs are aggregated using spectral clustering and compared with the traditional k-means. The aggregation results are analyzed using Principal Component Analysis (PCA) decomposition; highlighting the increased accuracy of aggregation in terms of time. Further, the optimal scheduling of EV clusters is achieved based on the proposed pricing and aggregation strategies.
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