Bilayer Collaborative Optimization Method of “Source-network-load-storage” Based on Multi Agent Algorithm

Junhua Wu, Jian Chen, Jiayong Zhong, Yigang Zhao, Peng Gao
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Abstract

Aiming at the problem that most optimization methods can't give consideration to the economy and environmental protection of the “source-network-load-storage” (SNLS) system, a bilayer collaborative optimization method of SNLS based on multi-agent algorithm is proposed. Firstly, a multi-agent system model of SNLS is constructed based on the distributed characteristics of multi-agent algorithm and system photovoltaic power generation cluster. Then, the system objective function and constraint conditions are set, that is, the optimization objective is to minimize the system operation cost and the amount of light discarded. Finally, based on the double-layer nested optimization structure, the objective is solved, and the improved grey wolf optimization algorithm is used to solve the single objective, so as to obtain the best optimization scheme of the system. The experimental results based on the IEEE33 node system platform show that the system operation cost and light rejection of the proposed method are about 383600 yuan and 0.895MW, respectively, and the energy use effect in the network is ideal.
基于多智能体算法的“源-网-存”双层协同优化方法
针对大多数优化方法不能兼顾“源-网-负荷-存储”(SNLS)系统的经济性和环保性的问题,提出了一种基于多智能体算法的SNLS双层协同优化方法。首先,基于多智能体算法的分布式特点,结合系统光伏发电集群,构建了SNLS的多智能体系统模型;然后,设置系统目标函数和约束条件,即优化目标是使系统运行成本和弃光量最小。最后,基于双层嵌套优化结构对目标进行求解,并利用改进的灰狼优化算法对单目标进行求解,从而得到系统的最佳优化方案。基于IEEE33节点系统平台的实验结果表明,该方法的系统运行成本约为383600元,弃光量约为0.895MW,在网络中的能源利用效果理想。
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