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Diagnostics of bar and end-ring connector breakage faults in polyphase induction motors through a novel dual track of time-series data mining and time-stepping coupled FE-state space modeling

机译:通过时间序列数据挖掘和时间步长耦合的有限元状态空间建模的新型双轨,诊断多相感应电动机中的杆和端环连接器断裂故障

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This paper develops the fundamental foundations of a technique for detection of faults in induction motors that is not based on the traditional Fourier transform frequency domain approach. The technique can extensively and economically characterize and predict faults from the induction machine adjustable speed drive design data. This is done through the development of dual-track proof-of-principle studies of fault simulation and identification. These studies are performed using our proven time stepping coupled finite element-state space method to generate fault case data. Then, the fault cases are classified by their inherent characteristics, so called "signatures" or "fingerprints." These fault signatures are extracted or mined here from the fault case data using our novel time series data mining technique. The dual-track of generating fault data and mining fault signatures was tested here on 3, 6, and 9 broken bar and broken end ring connectors in a 208-volt, 60-Hz, 4-pole, 1.2-hp, squirrel cage 3-phase induction motor.
机译:本文发展了一种不基于传统傅立叶变换频域方法的感应电动机故障检测技术的基础。该技术可以从感应电机可调速驱动器设计数据中广泛,经济地表征和预测故障。这是通过开发故障模拟和识别的双轨原理证明研究来完成的。这些研究是使用我们久经考验的时间步进耦合有限元-状态空间方法进行的,以生成故障案例数据。然后,将故障案例按其固有特征分类,即所谓的“签名”或“指纹”。使用我们新颖的时间序列数据挖掘技术,可以从故障案例数据中提取或挖掘这些故障特征。此处在208伏,60赫兹,4极,1.2 hp松鼠笼3的3、6和9折杆和折断端环连接器上测试了生成故障数据和挖掘故障特征的双重轨迹相感应电动机。

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