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Fast Parallel Stochastic Subspace Algorithms for Large-Scale Ambient Oscillation Monitoring

机译:用于大规模环境振荡监测的快速并行随机子空间算法

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With the installation of synchrophasors widely across the power grid, measurement-based oscillation monitoring algorithms are becoming increasingly useful in identifying the real-time oscillatory modal properties in power systems. When the number of phasor measurement unit (PMU) channels grows, the computational time of many PMU data based algorithms is dominated by the computational burden in processing large-scale dense matrices. In order to overcome this limitation, this paper presents new formulations and computational strategies for speeding up an ambient oscillation monitoring algorithm, namely, stochastic subspace identification (SSI). Based on previous work, two fast singular value decomposition (SVD) approaches are first applied to the SVD evaluation within the SSI algorithm. Next, block structures are exploited so that the large-scale dense matrix computations can be processed in parallel. This helps in memory savings as well as in overall computational time. Experimental results from three sets of archived data of the western interconnection demonstrate that the new approaches can provide significant speedups while retaining modal estimation accuracy. With proposed fast parallel algorithms, the real-time oscillation monitoring of the large-scale system using hundreds of PMU measurements becomes feasible.
机译:随着在电网中广泛安装同步相量,基于测量的振荡监控算法在识别电力系统中的实时振荡模态特性方面变得越来越有用。当相量测量单元(PMU)通道的数量增加时,许多基于PMU数据的算法的计算时间就受到处理大规模密集矩阵的计算量的支配。为了克服这一限制,本文提出了新的公式和计算策略,以加快环境振荡监测算法,即随机子空间识别(SSI)。在先前的工作基础上,首先将两种快速奇异值分解(SVD)方法应用于SSI算法中的SVD评估。接下来,利用块结构,以便可以并行处理大规模密集矩阵计算。这有助于节省内存以及总体计算时间。来自西方互连的三组存档数据的实验结果表明,新方法可以在保持模态估计精度的同时,显着提高速度。利用提出的快速并行算法,使用数百个PMU测量值对大型系统进行实时振荡监视变得可行。

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