利用临界慢化特征增强人工神经网络处理时域电力系统数据的性能

Austin Lassetter, E. Cotilla-Sánchez, Jinsub Kim
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引用次数: 1

摘要

本文探讨了基于实时电力系统数据的深度学习事件分类方法。我们使用统计方法来测量称为临界减速(CSD)的物理现象,并将其用作特征工程预处理框架,从大数据间隔中定位事件。以前的一些工作讨论了电力系统事件检测,包括统计方法,如相关、主成分分析(PCA)重建和局部离群因子搜索。这项工作旨在改进与高采样率时域事件检测相关的统计方法,然后将使用人工神经网络进行评估。为了评估CSD如何在高样本率时间序列数据中定位事件和非事件,我们使用Z-score函数来预测事件的时间,并提取以预测为中心的6秒间隔。然后使用两种人工神经网络架构:全卷积网络(FCN)和残差神经网络(ResNet)来比较应用csd的数据与原始数据的性能。这两种体系结构的结果都表明,对数据应用CSD可以显著改善更大数据间隔的事件定位,从而提高事件可检测性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Critical Slowing Down Features to Enhance Performance of Artificial Neural Networks for Time-Domain Power System Data
This paper explores deep learning approaches to event classification on real world time-domain power system data. We use a statistical method to measure a physical phenomenon known as critical slowing down (CSD) and use this as a feature engineering preprocessing framework to localize events from large intervals of data. Several previous works have discussed power system event detection, including statistical methods like correlation, Principal Component Analysis (PCA) reconstruction, and local outlier factor search. This work aims to improve upon the statistical methods that have been linked to high-sample rate time-domain event detection and then will be evaluated using artificial neural networks. To evaluate how well CSD localizes events from non-events in high sample rate time-series data, we used a Z-score function to predict the time of an event and extract a six second interval centered around the prediction. The performance of CSD-applied data against the raw data was then compared using two ANN architectures: the Fully Convolutional Network (FCN) and the Residual Neural Network (ResNet). The results of both architectures demonstrate that applying CSD to the data significantly improves event localization for larger data intervals, thus signifying an improvement in event detectability.
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