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Parallel Transient Stability-Constrained Optimal Power Flow Using GPU as Coprocessor

机译:使用GPU作为协处理器的并行暂态稳定约束最优功率流

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Graphics processing unit (GPU) has significantly increased the computing capacity of state-of-the-art high performance computing systems. This paper presents a novel GPU acceleration approach for transient stability-constrained optimal power flow (TSCOPF), which is one of the most computational challenging tasks in large-scale power system applications. Enabled by the revealed two-level decomposition parallelism in reduced-space interior point method, GPUs serve as plug-and-play coprocessors for time-consuming linear algebra operations in TSCOPF solving. Enhanced by multi-GPU processing and mixed-precision iterative refinement technique, the efficiency of solving TSCOPF is greatly improved without redesigning and reimplementing the existing algorithm framework. Numerical studies based on a series of test cases with up to 12 951 buses indicate the effectiveness of the proposed GPU-based approach for large-scale TSCOPF problems.
机译:图形处理单元(GPU)大大提高了最新的高性能计算系统的计算能力。本文提出了一种用于瞬态稳定性受限的最优潮流(TSCOPF)的新颖GPU加速方法,这是大规模电力系统应用中最具计算挑战性的任务之一。通过在缩减空间内点方法中揭示的两级分解并行性,GPU在TSCOPF解决方案中充当了耗时的线性代数运算的即插即用协处理器。通过多GPU处理和混合精度迭代优化技术的增强,无需重新设计和重新实现现有的算法框架,即可大大提高求解TSCOPF的效率。基于具有多达12 951条总线的一系列测试案例的数值研究表明,所提出的基于GPU的方法对于大规模TSCOPF问题的有效性。

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