基于快速傅里叶变换和人工神经网络的电能质量扰动辨识

D. O. Anggriawan, E. Wahjono, I. Sudiharto, Anang Budikarso
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引用次数: 0

摘要

本文提出了短时均方根变化识别算法和结合谐波的长时均方根变化识别算法。提出了快速傅立叶变换(FFT)和人工神经网络(ANN)算法。该算法识别了正常信号、电压跌落、电压膨胀、欠压、过压、电压跌落组合谐波、电压膨胀组合谐波、欠压组合谐波和过压组合谐波等9种电能质量扰动。利用FFT得到频率采样为1000hz,数据长度为200的各PQ扰动的频谱。输出FFT用于为人工神经网络输入数据。输出人工神经网络是一种九PQ扰动。结果表明,所提出的算法(FFT结合人工神经网络)是有效的识别算法,其中隐藏层有20个神经元的人工神经网络的识别准确率约为99.95%
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Identification of Power Quality Disturbances Based on Fast Fourier Transform and Artificial Neural Network
This paper presents the proposed algorithms for the identification of Short Duration RMS Variations and Long Duration RMS Variations combined with harmonic. The proposed algorithms are Fast Fourier Transform (FFT) and Artificial Neural Network (ANN). The Algorithms identify nine types of Power Quality (PQ) disturbances such as normal signal, voltage sag, voltage swell, under voltage, over voltage, voltage sag combined harmonic, voltage swell combined harmonic, undervoltage combined harmonic, and over voltage combined harmonic. FFT is used to obtain the frequency spectrum of each PQ disturbance with frequency sampling of 1000 Hz, data length of 200. Output FFT is used to input data for ANN. Output ANN is a type of nine PQ disturbances. The result shows that proposed algorithms (FFT combined ANN) are effective for identification, which ANN with 20 neurons in the hidden layer has an accuracy of approximately 99.95 %
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