Identification of Unbalance Voltage in Three Phase Induction Motor Based on Vibration Signature Using Neural Networks

D. Sawitri, D. Suhardi
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引用次数: 0

Abstract

Supply unbalanced voltages on induction motors can be fatal if not handled immediately. Early identification is needed to reduce losses. This paper proposes a method for detecting an unbalanced supply voltage on a three phase induction motor. By using Back Propagation Neural Network as a classifier, the distortion of voltage imbalance in the induction motor can be detected based on the vibration. The vibration signal is recorded using an accelerometer 3 axis. The recorded vibration signal is then processed through several stages. The first phase of the signal is decomposed using a 3-level wavelet to obtain an approximation signal and a detailed signal. The next stage transforms the first detail signal into a signal with the frequency domain using FFT. The next stage is to calculate features based on level 3 detail signal and FFT signal. The value of the calculating features is then extracted using Principal Component Analysis (PCA). The extraction results of this feature are further classified using BPNN to identify the voltage unbalance fault. Using the BPNN architecture with 3 hidden layers and 75 neurons, the recognition rate of error identification is 78.77% in MSE 6.1x10-5.
基于振动特征的神经网络三相异步电动机不平衡电压识别
如果不立即处理,感应电动机上的电源不平衡电压可能是致命的。需要及早发现,以减少损失。本文提出了一种检测三相异步电动机供电电压不平衡的方法。利用反向传播神经网络作为分类器,可以根据振动检测出异步电动机电压不平衡的畸变。振动信号用加速度计3轴记录。记录的振动信号然后经过几个阶段处理。对信号的第一阶段进行3级小波分解,得到近似信号和详细信号。下一阶段使用FFT将第一细节信号转换成具有频域的信号。下一步是基于3级细节信号和FFT信号计算特征。然后使用主成分分析(PCA)提取计算特征的值。利用bp神经网络对该特征的提取结果进行分类,识别电压不平衡故障。采用3个隐藏层、75个神经元的BPNN结构,在MSE为6.1x10-5的情况下,错误识别的识别率为78.77%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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