Accelerated Computation and Tracking of AC Optimal Power Flow Solutions Using GPUs

Youngdae Kim, Kibaek Kim
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引用次数: 9

Abstract

We present a scalable solution method based on an alternating direction method of multipliers and graphics processing units (GPUs) for rapidly computing and tracking a solution of alternating current optimal power flow (ACOPF) problem. Such a fast computation is particularly useful for mitigating the negative impact of frequent load and generation fluctuations on the optimal operation of a large electrical grid. To this end, we decompose a given ACOPF problem by grid components, resulting in a large number of small independent nonlinear nonconvex optimization subproblems. The computation time of these subproblems is significantly accelerated by employing the massive parallel computing capability of GPUs. In addition, the warm-start ability of our method leads to faster convergence, making the method particularly suitable for fast tracking of optimal solutions. We demonstrate the performance of our method on a 70,000 bus system by solving associated optimal power flow problems with both cold start and warm start.
基于gpu的交流最优潮流加速计算与跟踪
提出了一种基于乘法器和图形处理单元(gpu)交替方向法的可扩展求解方法,用于快速计算和跟踪交流最优潮流(ACOPF)问题的解。这种快速计算对于减轻频繁负荷和发电波动对大型电网最佳运行的负面影响特别有用。为此,我们将给定的ACOPF问题按网格分量分解,得到大量独立的小的非线性非凸优化子问题。利用gpu的大规模并行计算能力,大大加快了这些子问题的计算速度。此外,我们的方法的热启动能力导致更快的收敛,使该方法特别适合于最优解的快速跟踪。通过解决冷启动和热启动相关的最优潮流问题,我们在一个70000总线系统上证明了该方法的性能。
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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