Machine learning and multiresolution decomposition for embedded applications to detect short-circuit in induction motors

2021 
Abstract Due to the relevance of induction machines (IM) in industrial applications, the development of solutions to predict and detect incipient faults in such equipment is an important field of study. Despite the variety of solutions already proposed by other investigations, most of them do not take into consideration aspects of its execution in the field. This paper describes an algorithm combining the discrete wavelet transform (DWT) for multiresolution analysis (MRA), statistical features and machine learning (ML) techniques to detect incipient short-circuit faults (ISCF) in IM using voltage signal induced by axial leakage flux signal. The most important result is the true negative rate (normal class) of 100%, eliminating the occurrence of false alarms. Additionally, an accuracy of 99.23% was achieved for normal versus defective classification. With the progress of the (Internet of Things) IoT in the industry, intelligent fault-detection solutions must seek to reduce their computational cost to become pervasive. Therefore, further analysis was carried out to decrease the computational cost of the proposed approach without significantly compromising the accuracy of the model.
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