The rotor is an important part of the induction motor, which is widely used in all kinds of traffic equipment. Due to the heavy loads, the rotor becomes one of the most fragile components. Luckily, modern condition monitoring technology brings great convenience in fault detection of the rotor. However, the existing sampling frequency of the signal also brings a large system overhead. Reducing the sampling frequency is a common way for reducing the cost, which also will bring side effects to the performance of existing diagnosis methods. Hence, a feature extraction method for low sampling frequency vibration signals is proposed in this research. And even the simple KNN methods can achieve an accuracy of 0.9993 under the sampling frequency of 256 Hz.
Published at: The 7th CAA International Conference on Vehicular Control and Intelligence (CVCI), Changsha, China, 2023.
@INPROCEEDINGS{10397289,author={Chen, Xirui and Liu, Hui and Fang, Yamin and Su, Mengshuai and Xie, Jiahao},booktitle={2023 7th CAA International Conference on Vehicular Control and Intelligence (CVCI)}, title={Rotor Fault Feature Extraction Based on Low-frequency Sampling Vibration Signal}, year={2023},volume={},number={},pages={1-5},keywords={Vibrations;Employee welfare;Induction motors;Fault detection;Rotors;Feature extraction;Frequency control;rotor fault detection;low-frequency sampling;feature extraction;variational mode decomposition},doi={10.1109/CVCI59596.2023.10397289}}