基于分层时间记忆的机器学习在智能电网中的实时无监督异常检测:WiP

Anomadarshi Barua, Deepan Muthirayan, P. Khargonekar, M. A. Faruque
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引用次数: 13

摘要

智能电网中的微相量测量单元(μPMU)传感器可在微秒时间尺度上测量整个网络的电压和电流,对电网诊断具有巨大的潜在价值。在这项工作中,我们提出了一种新的基于分层时间记忆(HTM)的神经认知启发架构,用于使用μPMU数据实时检测智能电网中的异常。关键的技术思想是HTM学习序列数据的稀疏分布时间表示,这对于实时异常检测非常有用。我们的数值结果表明,所提出的HTM架构在三种不同的应用模式下,即标准、奖励少数假阳性、奖励少数假阴性,预测异常的准确率分别为96%、96%和98%。将HTM算法与三种最先进的实时异常检测算法进行了性能比较,HTM算法在μPMU数据的实时异常检测中表现出较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Temporal Memory Based Machine Learning for Real-Time, Unsupervised Anomaly Detection in Smart Grid: WiP Abstract
Micro-phasor measurement unit (μPMU) sensors in smart electric grids provide measurements of voltage and current at microsecond timescale across the network and have great potential value for grid diagnostics. In this work, we propose a novel neuro-cognitive inspired architecture based on Hierarchical Temporal Memory (HTM) for real-time anomaly detection in smart grid using μPMU data. The key technical idea is that the HTM learns a sparse distributed temporal representation of sequential data that turns out to be very useful for anomaly detection in real-time.Our numerical results show that the proposed HTM architecture can predict anomalies with 96%, 96%, and 98% accuracy for three different application profiles namely, Standard, Reward Few False Positive, Reward Few False Negative, respectively. The performance is compared with three state-of-the-art real-time anomaly detection algorithms and HTM demonstrates competitive score for real-time anomaly detection in μPMU data.
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