基于CPU-GPU平台的预处理GMRES求解器并行电网分析

Xuexin Liu, Hai Wang, S. Tan
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引用次数: 19

摘要

在本文中,我们提出了一个高效的并行动态线性求解器,称为GPU-GMRES,用于大型电网的暂态分析。该方法基于在异构CPU-GPU平台上实现的预条件广义最小残差(GMRES)迭代方法。新的求解器非常健壮,可以应用于不同结构的电网和热分析等其他应用。所提出的GPU-GMRES解算器采用了非常通用且鲁棒的基于不完全逻辑单元(ILU)的预调节器。我们表明,通过在不完整的LU因子中选择适当的填充量,可以在GPU效率和GMRES收敛率之间实现良好的权衡,以获得最佳的整体性能。这种可调特性使该算法对不同的问题具有很强的适应性。此外,我们对GMRES求解器中的主要计算任务进行了合理的划分,使CPU和GPU之间的数据流量最小化,进一步提高了算法的性能。在已发表的IBM基准电路集和网格结构电网网络上的实验结果表明,GPU-GMRES求解器比直接LU求解器UMFPACK提供了数量级的加速。GPU-GMRES还可以提供3-10倍的加速比CPU实现相同的GMRES方法在瞬态分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel power grid analysis using preconditioned GMRES solver on CPU-GPU platforms
In this paper, we propose an efficient parallel dynamic linear solver, called GPU-GMRES, for transient analysis of large power grid networks. The new method is based on the preconditioned generalized minimum residual (GMRES) iterative method implemented on heterogeneous CPU-GPU platforms. The new solver is very robust and can be applied to power grids with different structures and other applications like thermal analysis. The proposed GPU-GMRES solver adopts the very general and robust incomplete LU (ILU) based preconditioner. We show that by properly selecting the right amount of fill-ins in the incomplete LU factors, a good trade-off between GPU efficiency and GMRES convergence rate can be achieved for the best overall performance. Such a tunable feature makes this algorithm very adaptive to different problems. Furthermore, we properly partition the major computing tasks in GMRES solver to minimize the data traffic between CPU and GPU, which further boosts performance of the proposed method. Experimental results on the set of published IBM benchmark circuits and mesh-structured power grid networks show that the GPU-GMRES solver can deliver order of magnitudes speedup over the direct LU solver UMFPACK. GPU-GMRES can also deliver 3-10× speedup over the CPU implementation of the same GMRES method on transient analysis.
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