gpu -多核混合平台上大型线性动态网络的暂态分析

Xuexin Liu, S. Tan, Zao Liu, Hai Wang, Tailong Xu
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引用次数: 4

摘要

针对片上电网等一般线性动态网络,提出了一种基于混合gpu多核平台的暂态分析方法。新方法称为ETBR-GPU,首先对原始电路矩阵进行类似采样的缩减,从而可以在多核CPU上并行计算不同频率点的频域响应。简化后的电路矩阵在GPU上进行了仿真,简化后的电路矩阵密度大,适合GPU的数据并行计算。这种基于约简的仿真技术非常适合多核和GPU混合平台上的并行化,其中可以同时利用粗粒度任务级和细粒度轻线程级并行性。所提出的方法具有很强的通用性,因为它可以分析任何具有复杂结构和宏观模型的线性网络,并且不需要像许多迭代求解器那样假设某些结构属性来构建特定于问题的前置条件。在最近发表的IBM电网基准电路上进行的实验表明,与一般基于逻辑单元的仿真方法相比,新方法的速度提高了一到两个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transient analysis of large linear dynamic networks on hybrid GPU-multicore platforms
A new transient analysis method is proposed for general linear dynamic networks, such as on-chip power grid networks, using hybrid GPU-based multicore platform. The new method, called ETBR-GPU, first performs sampling-like reduction on the original circuit matrices where the frequency domain responses at different frequency points can be calculated in parallel on multicore CPU. After the reduction, the reduced circuit matrices, which are dense but well suitable for GPU's data parallel computing, are simulated on GPU. Such reduction based simulation technique is very amenable for parallelization on the hybrid multicore and GPU platforms, where coarse-grained task-level and fine-grained lightweight-thread level parallelism can be both exploited. The proposed method is very general, since it can analyze any linear networks with complicated structures and macromodels, and it does not assume some structure properties in order to build problem-specific preconditioners, as many iterative solvers do. Experiments show that the new method achieves about one or two orders of magnitude speedup when compared to the general LU-based simulation method on some recently published IBM power grid benchmark circuits.
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