基于图分割聚类的时空负荷预测配电网拓扑规划

S. Zambrano-Asanza, Diego J. Cando, Freddy H. Chuqui, Juan Sanango, J. Franco
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引用次数: 0

摘要

规划配电网络的扩展和新的拓扑结构需要了解负载的位置和特征以及其未来的增长。空间负荷预测是这项任务的关键工具,它提供了高空间分辨率和足够的时间粒度。在分布式能源渗透、多种微网并网策略以及自愈保护方案实施的今天,有必要通过识别负载块来规划新的主动网络架构。基于空间负荷预测信息,提出了一种在配电网馈线中建立负荷簇的图划分技术。通过考虑邻接关系的最小生成树构造加权图。在实际配电网中进行的仿真结果证明了所提方法的有效性。
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Graph Partitioning-Based Clustering for the Planning of Distribution Network Topology using Spatial- Temporal Load Forecasting
Planning the expansion and the new topology of distribution networks requires knowing the location and characterization of the load as well as its future growth. Spatial load forecasting is a key tool in this task, providing high spatial resolution and adequate temporal granularity. Nowadays, with the penetration of distributed energy resources, multiple microgrid connection strategies, and implementation of self-healing and protection schemes, it is necessary to identify load blocks to plan the new active network architecture. Based on spatial load forecasting information, this paper proposes a graph partitioning technique to create load clusters in the distribution feeders. A weighted graph is constructed by means of a minimum spanning tree that allows to consider adjacency relations. The results of the simulation, carried out in a real distribution network, have demonstrated the effectiveness of the proposed method.
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