基于小波机器学习的三相输电线路故障分类与定位

Chew Kia Yuan Zerahny, L. Yun, W. Raymond, K. Mei
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引用次数: 1

摘要

模拟长传输线,从线路一端采集故障数据,是一种经济有效的方法。利用离散小波变换(DWT)可以提取故障类型及其位置的基本特征。比较了12种分解等级最高达9级的母小波,发现Haar小波最适合。结果输出被用作特征来训练几个机器学习模型,用于故障的定位和分类。利用提取的特征进行故障估计。依靠故障估计,可以缩小故障的搜索区域,从而减少定位实际故障所需的时间。人工神经网络(ANN)在故障分类方面表现良好,准确率高达100%。另一种人工神经网络用于断层带定位,准确率为95.9%。其他机器学习模型的表现略差于人工神经网络,但在故障定位和分类方面具有可接受的准确性。所得结果考虑了单相对地、两相、两相对地和三相对地故障。断层发生在不同的断层起始角度。故障还包括低故障阻抗和高故障阻抗。结果表明,该方法仅使用一端测量的数据,就能以合理的精度检测和定位长传输线模型的断裂带。
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Fault Classification and Location in Three-Phase Transmission Lines Using Wavelet-based Machine Learning
A long transmission line was simulated to collect fault data from one end of the line, which makes it a cost-efficient approach. Using Discrete Wavelet Transform (DWT), the essential characteristics of the fault type and its location can be extracted. Twelve types of mother wavelets with decomposition levels up to level 9 were compared and Haar wavelet was found to be most suitable. The resulting output was used as features to train several machine learning models for location and classification of faults. Fault estimation was carried out using the features extracted. By relying on the fault estimation, the search area for the fault can be reduced, thus decreasing the time needed to locate the actual fault. The artificial neural network (ANN) performed very well for fault classification having up to 100% accuracy. Another ANN was used for fault zone location and the accuracy obtained was 95.9%. Other machine learning models perform slightly poorer than ANN but had acceptable accuracy for fault location and classification. The results obtained considered single-phase to ground, two-phase, two-phase to ground and three-phase to ground faults. The faults occurred at various fault inception angles. The faults also included low and high fault impedances. The results indicate that this approach managed to detect and locate the fault zone with reasonable accuracy on a long transmission line model using data measured from one end only.
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