多智能体分布式控制拓扑下具有通信中断的互联系统的钉住决策

S. Yu, Tat Kei Chau
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引用次数: 1

摘要

在这项研究中,我们提出了一种针对随机通信中断的孤岛微电网中基于钉钉的分布式多智能体(PDMA)自动生成控制(AGC)的决策策略。目标微电网被解释为一个网络-物理系统,其中物理微电网被建模为具有详细系统动态公式的逆变器接口自治网格,通信网络拓扑被视为独立于其物理连接的网络系统。该方法的主要目标是在所有分布式发电机(dg)中确定要固定的发电机的最小数量及其身份。基于复杂网络理论,采用遗传算法(GA)进行固定决策,目的是在PDMA控制结构中同步和调节所有发电机母线的频率和电压,即不借助中央AGC代理。然后,利用深度学习(DL)技术构建网络系统拓扑和固定决策的映射,使得在随机通信中断后检测到新的网络系统拓扑几乎可以立即做出固定决策。通过时域仿真进行暂态稳定分析,验证了该决策方法的有效性。仿真结果表明,所提出的固定决策方法可以在最小的有源通信信道数量下实现鲁棒频率控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pinning Decision in Interconnected Systems with Communication Disruptions under Multi-Agent Distributed Control Topology
In this study, we propose a decision-making strategy for pinning-based distributed multi-agent (PDMA) automatic generation control (AGC) in islanded microgrids against stochastic communication disruptions. The target microgrid is construed as a cyber-physical system, wherein the physical microgrid is modeled as an inverter-interfaced autonomous grid with detailed system dynamic formulation, and the communication network topology is regarded as a cyber-system independent of its physical connection. The primal goal of the proposed method is to decide the minimum number of generators to be pinned and their identities amongst all distributed generators (DGs). The pinning-decisions are made based on complex network theories using the genetic algorithm (GA), for the purpose of synchronizing and regulating the frequencies and voltages of all generator bus-bars in a PDMA control structure, i.e., without resorting to a central AGC agent. Thereafter, the mapping of cyber-system topology and the pinning decision is constructed using deep-learning (DL) technique, so that the pinning-decision can be made nearly instantly upon detecting a new cyber-system topology after stochastic communication disruptions. The proposed decision-making approach is verified using a 10-generator, 38-bus microgrid through time-domain simulation for transient stability analysis. Simulations show that the proposed pinning decision making method can achieve robust frequency control with minimum number of active communication channels.
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