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Fault Diagnosis and Detection in Industrial Motor Network Environment Using Knowledge-Level Modelling Technique

机译:基于知识建模技术的工业电机网络环境故障诊断与检测

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摘要

In this paper, broken rotor bar (BRB) fault is investigated by utilizing the Motor Current Signature Analysis (MCSA) method. In industrial environment, induction motor is very symmetrical, and it may have obvious electrical signal components at different fault frequencies due to their manufacturing errors, inappropriate motor installation, and other influencing factors. The misalignment experiments revealed that improper motor installation could lead to an unexpected frequency peak, which will affect the motor fault diagnosis process. Furthermore, manufacturing and operating noisy environment could also disturb the motor fault diagnosis process. This paper presents efficient supervised Artificial Neural Network (ANN) learning technique that is able to identify fault type when situation of diagnosis is uncertain. Significant features are taken out from the electric current which are based on the different frequency points and associated amplitude values with fault type. The simulation results showed that the proposed technique was able to diagnose the target fault type. The ANN architecture worked well with selecting of significant number of feature data sets. It seemed that, to the results, accuracy in fault detection with features vector has been achieved through classification performance and confusion error percentage is acceptable between healthy and faulty condition of motor.
机译:本文利用电动机电流特征分析(MCSA)方法研究了断裂的转子条(BRB)故障。在工业环境中,感应电动机非常对称,并且由于制造误差,电动机安装不当以及其他影响因素,感应电动机在不同故障频率下可能具有明显的电信号分量。不对中实验表明,不正确的电动机安装可能会导致意外的频率峰值,从而影响电动机的故障诊断过程。此外,制造和操作嘈杂的环境也会干扰电机故障诊断过程。本文提出了一种有效的监督式人工神经网络(ANN)学习技术,该技术能够在诊断情况不确定时识别故障类型。从电流中提取出重要特征,这些特征基于不同的频率点以及与故障类型相关的振幅值。仿真结果表明,该技术能够对目标故障类型进行诊断。 ANN架构在选择大量特征数据集时效果很好。结果表明,通过分类性能已经达到了利用特征向量进行故障检测的准确性,并且在电动机的正常状态和故障状态之间的混淆误差百分比是可以接受的。

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  • 来源
    《Modelling and simulation in engineering》 |2017年第2017期|1292190.1-1292190.10|共10页
  • 作者单位

    Sensor Network and Smart Environment Research Centre, Auckland University of Technology, Auckland, New Zealand;

    School of Professional Engineering Manukau Institute of Technology, Auckland, New Zealand;

    Sajid Brothers Engineering Industries (Pvt.) Ltd., Gujranwala, Pakistan;

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