GPU-Based Batch LU-Factorization Solver for Concurrent Analysis of Massive Power Flows

In many power system applications, such as N–x static security analysis and Monte-Carlo-simulation-based probabilistic power flow (PF) analysis, it is a very time-consuming task to analyze massive number of PFs on identical or similar network topology. This letter presents a novel GPU-accelerated batch LU-factorization solver that achieves higher level of parallelism and better memory-access efficiency through packaging massive number of LU-factorization tasks to formulate a new larger-scale problem. The proposed solver can achieve up to 76 times speedup when compared to KLU library and lays a critical foundation for massive-PFs-solving applications.

[1]  Yu Wang,et al.  Sparse LU factorization for parallel circuit simulation on GPU , 2012, DAC Design Automation Conference 2012.

[2]  Yu Wang,et al.  GPU-Accelerated Sparse LU Factorization for Circuit Simulation with Performance Modeling , 2015, IEEE Transactions on Parallel and Distributed Systems.

[3]  Gan Zhou,et al.  GPU-Accelerated Batch-ACPF Solution for N-1 Static Security Analysis , 2017, IEEE Transactions on Smart Grid.