带饱和约束的电力系统网络动态事件触发分布式优化的共识与聚类方法 Approche de consensus et de regroupement pour

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Canadian Journal of Electrical and Computer Engineering Pub Date : 2024-07-11 DOI:10.1109/ICJECE.2024.3402961
Ijaz Ahmed;Muhammad Rehan;Abdul Basit;Fahad Saleh Al-Ismail;Muhammad Khalid
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引用次数: 0

摘要

本研究提出了一种解决通过通信网络通信的发电机组经济调度(ED)问题的新方法。所建议的策略是一种基于共识的动态事件触发(ET)分布式优化方法。我们的方法考虑了发电机之间的局部信息共享及其凸成本函数,以解决总成本函数问题,并通过网络提供分散优化解决方案。建议的分布式方法通过考虑最优成本标准和提供高效通信来解决 ED 问题。根据发电运行限制(即总容量)对发电机组进行分组,并制定动态 ET 分布式协议,以确保在正常容量条件下运行的发电机组之间就成本变量达成共识。其余发电代理则根据其运行极限工作,通过切换机制共享标志信息将其隔离。因此,与现有方法不同的是,建议的协议允许节点根据电力供应情况分组运行,以应对 ED 的地理集群和容量限制,此外还能处理系统约束。此外,建议的技术还采用了动态触发方法来管理带宽,并保证消除 Zeno 行为。仿真结果验证了所提方法的有效性。
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Consensus and Clustering Approach for Dynamic Event-Triggered Distributed Optimization of Power System Networks With Saturation Constraint Approche de consensus et de regroupement pour
This study presents a novel approach for solving the economic dispatch (ED) problem in groups of generating units communicating through a communication network. The suggested strategy is a consensus-based dynamic event-triggered (ET) distributed optimization method. Our methodology considers the sharing of the local information between generators and their convex cost functions to address the total cost function and offers a decentralized optimization solution over a network. The proposed distributed method addresses the ED problem by considering the criterion of optimal cost and by offering efficient communication. Generating units are grouped according to their generation operational limits, that is, total capacity and dynamic ET distributed protocols are developed to ensure the consensus of cost variables among generating units, operating under normal capacity conditions. The remaining generating agents work on their operating limits, which are segregated through the sharing of flag information through a switching mechanism. Consequently, in contrast to the existing methods, the recommended protocol allows nodes to function in groups, based on the power supply, for ED with geographical clustering and capacity restrictions, in addition to handling the system constraints. Furthermore, the proposed technique employs a dynamic triggering method to manage bandwidth and guarantee the elimination of Zeno behavior. The simulation results validate the efficacy of the proposed approach.
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