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Spectral Analysis for Identifying Faults in Induction Motors by Means of Sound

机译:通过声音识别感应电动机故障的光谱分析

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Induction motors are critical components for most industries. Induction motors failures may yield an unexpected interruption at the industry plant. Several conventional vibration and current analysis techniques exist by which certain faults in rotating machinery can be identified. Ever since the first motor was built, plant personnel have listened to the noises emanating from machines; with enough experience, a listener may make a fairly accurate estimate of the condition of a machine. Although there are several works that deal with vibration and current analysis for monitoring and detection of faults in induction motors, the analysis of sound signals has not been sufficiently explored as an alternative non-invasive monitoring technique. The contribution of this investigation is the development of a condition monitoring strategy that can make reliable assessment of the presence of a specific fault condition in an induction motor with a single fault present through the analysis of sound signal. The proposed methodology is based on the combination of Intrinsic Mode Functions (IMFs) and the Fast Fourier Transform (FFT) methods. Results show that the proposed methodology can be applied to sound signal analysis; there this detection technique is suited for detection of fault frequencies 'in induction motors.
机译:感应电机是大多数行业的关键组件。感应电机故障可能会产生意外的行业植物中断。存在几种传统振动和电流分析技术,通过该技术可以识别旋转机械中的某些故障。自第一个电机建成以来,植物人员已经听取了从机器发出的噪音;拥有足够的经验,听众可以对机器的状况进行相当准确的估计。虽然有几种处理振动和电流分析的作品,但对感应电机中的故障进行监测和检测,但声音信号的分析并未充分探索作为替代的非侵入性监测技术。本调查的贡献是开发一种情况监测策略,可以通过分析声音信号的分析来实现对感应电动机中的特定故障状况的可靠评估。所提出的方法基于内在模式功能(IMF)和快速傅里叶变换(FFT)方法的组合。结果表明,所提出的方法可以应用于声音信号分析;这种检测技术适用于在感应电动机中检测故障频率。

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