Abstract:
A new technique for the training of ANNs is presented. The time-domain vibration signals of rolling bearings with different fault conditions are preprocessed using differ...Show MoreMetadata
Abstract:
A new technique for the training of ANNs is presented. The time-domain vibration signals of rolling bearings with different fault conditions are preprocessed using differential evolution method, then further being trained by Levenberg Marquardt method. The processed data are applied as input vectors to artificial neural networks (ANNs) for rolling bearing fault classification. The hybrid training method overcomes the defects of network training, for example lower convergence speed of evolutionary artificial neural network and easiness of falling into local minimum. And it also has the advantages of quick convergence speed and good global continuous optimization ability. In addition, probabilistic adaptive strategy which could save computation time in various situations is adopted. The proposed method is applied to the rolling bearings faults diagnosis, and compared with other training methods. The results for both real and simulated bearing vibration data show that, high correct classification rate were obtained through LM, and the presented method demonstrated rapid convergence and good stability than traditional method such as LM and other methods. The probabilistic adaptive strategy improved the convergence rate and obtained higher correct rate.
Published in: 2016 23rd International Conference on Mechatronics and Machine Vision in Practice (M2VIP)
Date of Conference: 28-30 November 2016
Date Added to IEEE Xplore: 23 January 2017
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