Applying high performance computing to probabilistic convex optimal power flow

Zhao Yuan, M. Hesamzadeh, Yue Cui, Lina Bertling Tjernberg
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引用次数: 5

Abstract

The issue of applying high performance computing (HPC) techniques to computation-intensive probabilistic optimal power flow has not been well discussed in literature. In this paper, the probabilistic convex AC OPF based on second order cone programming (P-SOCPF) is formulated. The application of P-SOCPF is demonstrated by accounting uncertainties of loads. To estimate the distributions of nodal prices calculated from P-SOCPF, two point estimation method (2PEM) is deployed. By comparing with Monte Carlo (MC) method, the accuracy of 2PEM is proved numerically. The computation efficiency of 2PEM outperforms MC significantly. In the context of large scale estimation, we propose to apply high performance computing (HPC) to P-SOCPF. The HPC accelerated P-SOCPF is implemented in GAMS grid computing environment. A flexible parallel management algorithm is designed to assign execution threads to different CPUs and then collect completed solutions. Numerical results from IEEE 118-bus and modified 1354pegase case network demonstrate that grid computing is effective means to speed up large scale P-SOCPF computation. The speed up of P-SOCPF computation is approximately equal to the number of cores in the computation node.
应用高性能计算求解概率凸最优潮流
将高性能计算(HPC)技术应用于计算密集型概率最优潮流的问题在文献中尚未得到很好的讨论。本文给出了基于二阶锥规划的概率凸AC OPF (P-SOCPF)。通过考虑荷载的不确定性,说明了P-SOCPF的应用。为了估计由P-SOCPF计算的节点价格的分布,采用两点估计方法(2PEM)。通过与蒙特卡罗(MC)方法的比较,数值验证了2PEM方法的准确性。2PEM的计算效率明显优于MC。在大规模估计的背景下,我们提出将高性能计算(HPC)应用于P-SOCPF。在GAMS网格计算环境下实现了HPC加速P-SOCPF。设计了一种灵活的并行管理算法,将执行线程分配到不同的cpu,然后收集完整的解决方案。基于IEEE 118总线和改进的1354pegase case网络的数值结果表明,网格计算是提高大规模P-SOCPF计算速度的有效手段。P-SOCPF的计算速度近似等于计算节点的核数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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