Application of ICEEMDAN Energy Entropy and AFSA-SVM for Fault Diagnosis of Hoist Sheave Bearing
Application of ICEEMDAN Energy Entropy and AFSA-SVM for Fault Diagnosis of Hoist Sheave Bearing
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The mine hoist sheave bearing is a large heavy-duty bearing, located in a derrick of tens of meters.Aiming at the difficulty of sheave bearing fault diagnosis, a combined fault-diagnosis method sheepshead bay boats based on the improved complete ensemble EMD (ICEEMDAN) energy entropy and support vector machine (SVM) optimized by artificial fish swarm algorithm (AFSA) was proposed.Different location of the bearing defect will result in different frequency components and different amplitude energy of the frequency.According to this feature, sawgrass virtuoso sg500 complete sublijet sublimation printer kit the position of the bearing defect can be determined by calculating the ICEEMDAN energy entropy of different vibration signals.In view of the difficulty in selecting the penalty factor and radial basis kernel parameter in the SVM model, the AFSA was used to optimize them.
The experimental results show that the accuracy rate of the optimized fault-diagnosis model is improved by 10% and the diagnostic accuracy rate is 97.5%.