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An Adaptive Clustering Algorithm with High Performance Computing Application to Power System Transient Stability Simulation

机译:高性能计算的自适应聚类算法在电力系统暂态仿真中的应用

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This paper presents an adaptive clustering algorithm based on power system network topology, initial power flow and given architecture. The sizes of the small cliques are derived using multl-constraint and multi-objective graph partitioning theory. The vertices of the graph represent units of computation, and the edges encode data dependencies. Tests for a 39-bus network,a 1 056-bus network, a 3 872-bus network and a 10 188-bus network are reported, and the results show that the cluster-based partitioning produces smaller hyper-edge cut size and higher speedup than the traditional direct partitioning. An application to 3 872bus network shows that by the improved tree-based partitioning the speedup is improved by up to 51% compared to the traditional tree-based approach. Moreover, the results show that the partitioning results of improved tree-based partitioning algorithm and improved graph-based one are comparable. These results suggest that adaptive architecture-aware clustering algorithm can be combined with heterogeneous and changing computing resources.
机译:本文提出了一种基于电力系统网络拓扑,初始潮流和给定架构的自适应聚类算法。使用多重约束和多目标图划分理论得出小集团的大小。图的顶点表示计算单位,边编码数据依赖性。报告了对39总线网络,1056总线网络,3872总线网络和10188总线网络的测试,结果表明,基于集群的分区产生的超边缘切割尺寸较小,而更高速度比传统的直接分区更快。在3 872总线网络上的应用表明,与传统的基于树的方法相比,通过改进的基于树的分区,速度提高了51%。而且,结果表明,改进的基于树的划分算法和改进的基于图的划分算法的划分结果是可比的。这些结果表明,可将自适应体系结构感知的聚类算法与异构和不断变化的计算资源结合使用。

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