Yu-Ching Mo, Ke-Yu Su, Wen-bin Kang, Liang-Bi Chen, W. Chang, Yunhui Liu
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An FFT-based high-speed spindle monitoring system for analyzing vibrations
This paper proposes a Fast Fourier Transform (FFT)-based monitoring system which is applied to measure, monitor, and analyze the vibrations of the high-speed spindle. The piezoelectric sensor based accelerometer can real-time measure the signals of the vibrations when the high-speed spindle is vibrated. These signals of the vibrations are sent to a cloud-based platform via wireless communication techniques. The meaningful characteristic of vibrations are captured by the FFT technique. Moreover, a database is built as sample patterns (all kinds of damage and normal operations), according to these related characteristic. Therefore, it can assist us to recognize normal/abnormal vibrations. The behaviors of abnormal vibration occurred in the high-speed spindle can also be predicted for early maintenance.