Rolling Bearing Failure Feature Extraction Based on Large Parameters Stochastic Resonance ⋆
نویسندگان
چکیده
Based on rolling bearing fault signal modulation model in the process of spreading, an improved method that combining Hilbert envelop extraction algorithm and large parameter setting rules in stochastic resonance (SR) is proposed for features extraction. Firstly, Hilbert transform can effectively eliminate the interference of high frequency carrier signal. Secondly, parameters setting rules in a certain frequency range are summarized based on the simulation research on the realization of stochastic resonance under the condition of big parameters. Then, the improved method is used to deal with the experimental data of rolling bearing with typical faults. The experimental results show that the improved method can extract the fault feature and identify the fault type effectively.
منابع مشابه
Application of Resonance Demodulation in Rolling Bearing Fault Diagnosis Based on Electronic Resonant
The resonance demodulation is an important method in rolling bearing fault feature extraction and fault diagnosis. But in the traditional resonance demodulation method, the resonant frequency of the accelerometer sensing fault information is discrete to some degree due to processing, debugging and installing factors, and the parameters of the band-pass filter are in need for defining beforehand...
متن کاملA Method of Bearing Fault Feature Extraction Based on Improved Wavelet Packet and Hilbert Analysis
In order to supply a gap of current resonance vibration and STFT demodulation method applied to rolling bearing fault feature extraction of city rail vehicle, a fault diagnosis method for rolling bearing is presented, which is based on the integration of improved wavelet packet, frequency energy analysis and Hilbert marginal spectrum. When faults occur in rolling bearing, the energy of the roll...
متن کاملGenetic Stochastic Resonance: A New Fault Diagnosis Method to Detect Weak Signals in Mechanical Systems
Mechanical faults, such as defects or wear of bearings and gears, are often characterized by the presence of periodically weak signals, which are contaminated by strong background noises and difficult to differentiate using traditional methods. In this paper, we propose a novel genetic stochastic resonance scheme for feature extraction of the above signals. Firstly, the original data are input ...
متن کاملBearing Fault Feature Extraction by Recurrence Quantification Analysis
In rotating machinery one of the critical components that is prone to premature failure is the rolling bearing. Consequently, early warning of an imminent bearing failure is much critical to the safety and reliability of any high speed rotating machines. This study is concerned with the application of Recurrence Quantification Analysis (RQA) in fault detection of rolling element bearings in rot...
متن کاملA DWT and SVM based method for rolling element bearing fault diagnosis and its comparison with Artificial Neural Networks
A classification technique using Support Vector Machine (SVM) classifier for detection of rolling element bearing fault is presented here. The SVM was fed from features that were extracted from of vibration signals obtained from experimental setup consisting of rotating driveline that was mounted on rolling element bearings which were run in normal and with artificially faults induced conditio...
متن کامل