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Induction Motor Inter-turn Short Circuit Fault Detection Using Efficient Feature Extraction for Machine Learning Based Fault Detectors

机译:基于机器学习的故障检测器基于高效特征提取的感应电动机匝间短路故障检测

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Inter-turn short circuit of the stator is one of the most common faults of an induction motor that degrades its performance and ultimately causes it to break down. To avoid unexpected breakdown, causing an industrial process to halt, it is desirable to continuously monitor the motor's operation using an automated system that can differentiate normal from faulty operation. However, such automated systems usually require large datasets containing enough examples of normal and faulty characteristics of the motor to be able to detect abnormal behavior. The aim of this paper is to present some ways to extract such information or features from the available sensor signals data like motor currents, voltages and vibration, to enable a machine learning based fault detection system to discern normal operation from faulty operation with minimal training data.
机译:定子的匝间短路是感应电动机最常见的故障之一,这会降低其性能并最终导致其故障。为了避免意外故障,导致工业过程停止,希望使用可以区分正常运行和故障运行的自动化系统连续监视电动机的运行。但是,这种自动化系统通常需要大型数据集,其中必须包含足够的电动机正常和故障特性示例,以便能够检测异常行为。本文的目的是提出一些方法,以从可用的传感器信号数据(例如电动机电流,电压和振动)中提取此类信息或特征,以使基于机器学习的故障检测系统能够以最少的培训数据来识别正常操作和错误操作。

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