期刊
ENERGIES
卷 14, 期 5, 页码 -出版社
MDPI
DOI: 10.3390/en14051319
关键词
diagnosis; bearing fault; short-circuit fault; short-time Fourier-transform (STFT); long short-term memory (LSTM)
This study proposes a new diagnostic method for motor faults based on analyzing the sound characteristics of the motor during a no-load test. The research shows that characteristic signals appear periodically in a specific frequency range, and the effectiveness of diagnosing faults using deep learning methods has been verified through experiments.
Various industrial fields use motors as key power sources, and their importance is increasing. In motor manufacturing, various tests are conducted for each motor before shipping. The no-load test is one such test, in which, for instance, the current flowing into the motor and temperature of the bearing is measured to confirm whether they are within specific values. Reducing labor, cost, and time in identifying an initially defective product requires a simple and reliable method. This study proposes a new diagnosis to identify the motor conditions based on the rotating sound of the motor in the no-load test. First, the rotating sounds of motors were measured using several healthy motors and motors with faults. Second, their sound characteristics were analyzed, and it was found that the characteristic signals appeared in a specific frequency range periodically. Then, considering these phenomena, a diagnostic method based on deep learning was proposed to judge the faults using long short-term memory (LSTM). Finally, the effectiveness of the proposed method was verified through experiments.
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