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Startup-based rotor fault detection in soft-started induction motors for different soft-starter topologies

机译:不同软启动器拓扑的软启动感应电动机中基于启动的转子故障检测

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The use of soft-starters has proliferated in industrial induction motors to damp the negative effects of high-starting currents, among other reasons. Despite the fact that soft-starters reduce the probability of rotor damage, some industrial cases of rotor failures in soft-started motors have been reported. Over recent years, a novel diagnosis trend based on the analysis of the motor startup current is rapidly drawing the attention of the industrial maintenance community due to the important advantages of that method versus other well-known approaches. An interesting variant of that trend relies on the study of some specific wavelet signals resulting from the Discrete Wavelet Transform (DWT) of that current and on the subsequent computation of fault severity indicators. This method was applied with success to the rotor assessment of motors started direct-online and even of certain soft-started induction motors. However, the massive validation of the method in different soft-starter models and with different topologies of their power block was still pending. This issue is solved in the present work which makes use of extensive testing to obtain a huge set of startup signals corresponding to a motor that is started with four different soft-starter variants. The results prove that, despite the identification of the fault components is more difficult when using these drives, it is clearly possible to separate the healthy and faulty condition regardless of the model used.
机译:除其他原因外,在工业感应电动机中已广泛使用软起动器,以减轻高起动电流的负面影响。尽管软启动器降低了转子损坏的可能性,但据报道,在工业上一些案例表明软启动电机中的转子发生了故障。近年来,基于该电动机启动电流分析的一种新颖的诊断趋势正迅速引起工业维护界的关注,因为该方法相对于其他众所周知的方法具有重要的优势。这种趋势的一个有趣的变体取决于对由该电流的离散小波变换(DWT)产生的某些特定小波信号的研究,以及对故障严重性指标的后续计算。该方法成功应用于直接在线启动的电动机甚至某些软启动感应电动机的转子评估。但是,在不同的软启动器模型中以及在其功率模块的拓扑结构不同的情况下,对该方法的大规模验证仍在进行中。在当前工作中解决了这个问题,该工作利用广泛的测试来获得与一组用四种不同的软起动器变型启动的电动机相对应的大量启动信号。结果证明,尽管使用这些驱动器识别故障组件更为困难,但无论使用哪种模型,显然都可以将健康状况和故障状况区分开。

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