Robust Abnormal Detection in Large-scale Power Systems with Unknown Noise Statistics

Yi Ma, Fangrong Zhou, G. Wen, H. Gen, Ran Huang, Ling Pei
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引用次数: 0

Abstract

Recent years have witnessed the broad deployment of phase measurement units (PMUs), enabling intelligent control of power systems, i.e., accurate abnormal detection. However, it is challenging to implement a model-driven indicator of the unbearable complexity in solving the high-dimensional power flow equations. In this paper, based on high dimensional statistics, we first propose a novel data-driven abnormal detection method for large-scale power systems with unknown information of noise, which relieves the pain of thick assumptions needed in classical data-driven methods. Furthermore, we propose to employ the Eigen-inference theory to estimate the unknown parameters in the noise model. Lastly, comprehensive experiments are carried out to verify the superiority of the proposed method over different scale benchmarks.
具有未知噪声统计量的大型电力系统鲁棒异常检测
近年来,相位测量单元(pmu)的广泛部署,使电力系统的智能控制成为可能,即准确的异常检测。然而,在求解高维潮流方程时,由于难以忍受的复杂性,实现模型驱动的指标是一项挑战。本文基于高维统计,首次提出了一种基于数据驱动的噪声信息未知的大型电力系统异常检测方法,消除了经典数据驱动方法中粗大假设的痛苦。在此基础上,提出利用特征推理理论对噪声模型中的未知参数进行估计。最后,进行了综合实验,验证了该方法在不同尺度基准上的优越性。
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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