信号处理和神经网络在电力系统暂态波形识别中的应用

Shanlin Kang, Huanzhen Zhang, Yuzhe Kang
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引用次数: 4

摘要

由于电能质量扰动所带来的技术和经济后果,电力公司和电力系统网络的最终用户越来越关注电能质量问题。电能质量监测技术是分析电能质量相关问题的有效手段。本文提出了一种将小波变换与模式识别技术相结合的方法来研究电能质量事件下的电压稳定性。小波变换具有时域和频域的局部化能力,对信号的奇异性检测有很大的推动作用。基于统计量的去噪方法是为了滤除电能质量扰动信号中的随机噪声和脉冲噪声,利用小波变换的优点提取信号特征,同时抑制各种噪声。提出用小波分解系数作为神经网络的特征向量提取干扰信号。神经网络提供了一种确定每个已识别的干扰波形的置信程度的方法。研究了该方法的性能,确定了小波变换与神经网络的合理结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of signal processing and neural network for transient waveform recognition in power system
The electric utilities and end users of power system network have become more concerned about power quality issues due to technical and financial consequences that have resulted from electric power quality disturbances. The power quality monitoring technology has an effective on analyzing power quality related problems. This paper presents a novel study combining wavelet transform with pattern recognition technique to investigate voltage stability using for power quality events. The wavelet transformation possesses capabilities of time and frequency domain localizations, achieving a great impetus in signal singularity detection. The statistics-based denoising method is designed to filter the random noise and impulse noise in power quality disturbance signals, incorporating the advantages of wavelet transform to extract signal feature meanwhile restraining various noises. The wavelet decomposition coefficients as feature vector of neural network are presented for extracting disturbance signal. The neural network provides a means of determining a degree of belief for each identified disturbance waveform. The performance of the proposed approach is studied and a proper combination of wavelet transformation and neural network is identified.
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