Consensus clustering for bi-objective power network partition
Yi Wang, Luzian Lebovitz, Kedi Zheng, Yao Zhou
Abstract
Partitioning the complex power network into a number of sub-zones helps realize a divide-and-conquer management structure for the whole system, such as voltage and reactive power control, coherency identification, power system restoration, etc. Extensive partitioning methods have been proposed by defining various distances, applying different clustering methods, or formulating varying optimization models for one specific objective. However, the power network partition may serve two or more objectives, where a trade-off among these objectives should be made. This paper proposes a novel weighted consensus clustering-based approach for bi-objective power network partition. By varying the weights of different partitions for different objectives, the Pareto improvement can be explored based on the node-based and subset-based consensus clustering methods. Case studies on the IEEE 300-bus test system are conducted to verify the effectiveness and superiority of our proposed method.