Selected Integrated Weak Fault Feature Extraction with Improved Local Feature Decomposition
Patent Information
- Authority / Receiving Office
- CN · China
- Patent Type
- Patents(China)
- Current Assignee / Owner
- XUZHOU NORMAL UNIVERSITY
- Publication Date
- 2022-05-06
Smart Images

Figure 1 
Figure 2 
Figure 3
Abstract
Description
technical field
[0001] The invention relates to a selective integrated improved local characteristic-scale decomposition method for extracting weak fault features (selective ensemble improved local characteristic-scale decomposition, SEILCD), which belongs to the technical field of weak mechanical fault feature extraction. Background technique
[0002] Rotating machinery is the key core equipment in coal mine production, mainly composed of motors, reducers, hydraulic brakes and other parts. Extracting fault-related information from mechanical operating parameters such as vibration, pressure, and temperature to monitor the operating status of rotating machinery is the main content of current mechanical fault monitoring research. A large number of production practices and theoretical studies have shown that more than 70% of faults are hidden in vibration signals.
[0003] Time-frequency analysis method is the mainstream method of mechanical fault diagnosis, such as wavelet an...