基于gpu并行计算的两阶段状态估计方法并行化

Cindy V. Zabala-Oseguera, A. Ramos-Paz, C. Fuerte-Esquivel
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引用次数: 2

摘要

本文提出了一种两阶段状态估计算法,该算法在CPU-GPU平台上执行。本工作中使用的状态估计器包括两个阶段:第一阶段,使用传统的加权最小二乘公式;最后,在第二阶段,使用PMU测量值和作为第一阶段结果的估计状态向量再次进行估计过程。利用基于图形处理器(gpu)的并行计算优化了两阶段状态估计算法的执行时间。通过这种方法,本文提出的并行算法比顺序算法快5.74倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallelization of The Two-Stage State Estimation Method Using GPU-Based Parallel Computing
In this paper, a two-stage state estimation algorithm is presented where operations are performed on a CPU-GPU platform. The state estimator used in this work consists of two stages: in a first stage, the conventional weighted least squares formulation is used and finally, in the second stage, the estimation process is carried out again with the PMU measurements and the vector of estimated states as a result of the first stage. The execution time of the two-stage state estimation algorithm is optimized through the use of parallel computing based on Graphics Processing Units (GPUs). From this approach, the parallel algorithm proposed in this work is 5.74 times faster than its sequential counterpart.
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