基于知识的电能质量扰动分类神经网络

Harshal Jamode, Karthik Thirumala, Trapti Jain, A. Umarikar
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引用次数: 0

摘要

本文提出了一种基于知识的神经网络(KBNN)用于电能质量(PQ)扰动的分类。首先,采用可调q小波变换(TQWT)从具有任何类型干扰的电压信号中提取50 Hz分量。这是通过根据信号信息改变小波的质量因子来实现的。KBNN是神经网络和基于规则的方法的结合模型。本文探讨了KBNN对最常见的电能质量扰动进行分类的潜力。KBNN方法的有效性在具有噪声、基频偏差和信号参数变化的大范围时变信号上进行了评估。性能分析表明,利用KBNN分类器对正常和8个PQ干扰进行分类的方法具有效率和鲁棒性。
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Knowledge-based Neural Network for Classification of Power Quality Disturbances
This paper develops a knowledge-based neural network (KBNN) for the classification of power quality (PQ) disturbances. Initially, the tunable-q wavelet transform (TQWT) is employed for the extraction of the 50 Hz component from a voltage signal with any sort of disturbance. This is achieved by varying the quality factor of wavelet according to the signal information. The KBNN is a combined model of neural network and rule-based approach. This paper explores the potential of the KBNN for classification of the most common power quality disturbances. The efficacy of the KBNN approach is evaluated on a wide range of time-varying signals with noise, fundamental frequency deviation, and variation in signal parameters. The performance analysis elucidates the efficiency and robustness of the proposed approach using KBNN classifier for classification of the normal and eight PQ disturbances.
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