A New Strategy for Induction Motor Fault Detection Based on Wavelet Transform and Probabilistic Neural Network

S. Hajiaghasi, Z. Rafiee, A. Salemnia, M. Aghamohammadi, Tohid Soleymaniaghdam
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引用次数: 5

Abstract

Broken rotor bar faults cause of motor malfunction and reduction of the life cycle. For the safe and appropriate performance of induction motors, the motor fault detection is a critical issue. This paper presents a new strategy for the broken rotor bar fault detection of the induction motors. Finite element method (FEM) is used for accurate fault modelling and the flux density under broken rotor bar faults has been comprehensively analyzed. Moreover, a new rotor bar fault detection method based on probabilistic neural network (PNN) and wavelet transform is presented. The proposed approach uses the stator current signal amplitude samples in the time-frequency domain to extract the appropriate coefficients where they are considered as inputs to a PNN. The output of the PNN classifies the status of the rotor to a healthy or faulty condition. The performance of the proposed method is verified using numerical simulation.
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基于小波变换和概率神经网络的感应电机故障检测新策略
转子断条故障造成电机故障,缩短电机寿命。为了保证感应电机的安全、合理运行,电机故障检测是一个关键问题。提出了一种感应电动机转子断条故障检测的新方法。采用有限元法进行了精确的故障建模,全面分析了转子断条故障下的磁通密度。在此基础上,提出了一种基于概率神经网络和小波变换的转子棒故障检测方法。该方法利用定子电流信号在时频域中的幅值样本提取适当的系数,并将其作为PNN的输入。PNN的输出将转子的状态分类为健康状态或故障状态。通过数值仿真验证了该方法的有效性。
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