Strategic Leader Selection and Cluster Formation in Hierarchical Networked Microgrids
2024 IEEE Power & Energy Society General Meeting (PESGM)(2024)
Department of Electrical and Computer Engineering | UM-SJTU Joint Institute
Abstract
Due to growing energy resources (DERs) into the power grid. This paper presents a framework to organize a network along with leader selection using centrality measures to form a hierarchical structure in networked microgrids. These strategies enhance hierarchical decisions by identifying pivotal nodes and fine-tuning structures. Further, we use a weighted hierarchical distributed consensus-based method to solve the economic dispatch problem in example hierarchical distributed networked microgrid systems. The proposed approach is validated through extensive simulations to demonstrate the significance of optimizing network partitions and leader selection to effectively use the hierarchical distributed approach for energy management in networked microgrids.
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Key words
Centrality,Networked Microgrids,Energy Management System
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