Optimal Planning of Distribution Network Based on K-means Clustering

Hongjun Gao, You-bo Liu, Zhenyu Liu, Song Xu, Renjun Wang, Enmin Xiang, Jie Yang, M. Qi, Yinbo Zhao, Hongjin Pan, Wang Ma
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Abstract

The reform of electricity marketization has bred multiple market agents. In order to maximize the total social benefits on the premise of ensuring the security of the system and taking into account the interests of multiple market agents, a bi-level optimal allocation model of distribution network with multiple agents participating is proposed. The upper level model considers the economic benefits of energy and service providers, which are mainly distributed power investors, energy storage operators and distribution companies. The lower level model considers end-user side economy and actively responds to demand management to ensure the highest user satisfaction. The K-means multi scenario analysis method is used to describe the time series characteristics of wind power, photovoltaic power and load. The particle swarm optimization (PSO) algorithm is used to solve the bi-level model, and IEEE33 node system is used to verify that the model can effectively consider the interests of multiple agents while ensuring the security of the system.
基于k均值聚类的配电网优化规划
电力市场化改革孕育了多种市场主体。为了在保证系统安全的前提下,兼顾多个市场主体的利益,使社会总效益最大化,提出了一个多主体参与的配电网双层最优分配模型。上层模型考虑能源和服务提供商的经济效益,主要是分布式电力投资者、储能运营商和配电公司。较低层次的模型考虑最终用户端的经济,并积极响应需求管理,以确保最高的用户满意度。采用k -均值多情景分析方法描述风电、光伏发电和负荷的时间序列特征。采用粒子群优化(PSO)算法求解双层模型,并采用IEEE33节点系统验证该模型能够在保证系统安全性的同时有效考虑多个智能体的利益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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