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Deep Learning Based Intelligent Industrial Fault Diagnosis Model 被引量:8

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摘要 In the present industrial revolution era,the industrial mechanical system becomes incessantly highly intelligent and composite.So,it is necessary to develop data-driven and monitoring approaches for achieving quick,trustable,and high-quality analysis in an automated way.Fault diagnosis is an essential process to verify the safety and reliability operations of rotating machinery.The advent of deep learning(DL)methods employed to diagnose faults in rotating machinery by extracting a set of feature vectors from the vibration signals.This paper presents an Intelligent Industrial Fault Diagnosis using Sailfish Optimized Inception with Residual Network(IIFD-SOIR)Model.The proposed model operates on three major processes namely signal representation,feature extraction,and classification.The proposed model uses a Continuous Wavelet Transform(CWT)is for preprocessed representation of the original vibration signal.In addition,Inception with ResNet v2 based feature extraction model is applied to generate high-level features.Besides,the parameter tuning of Inception with the ResNet v2 model is carried out using a sailfish optimizer.Finally,a multilayer perceptron(MLP)is applied as a classification technique to diagnose the faults proficiently.Extensive experimentation takes place to ensure the outcome of the presented model on the gearbox dataset and a motor bearing dataset.The experimental outcome indicated that the IIFD-SOIR model has reached a higher average accuracy of 99.6%and 99.64%on the applied gearbox dataset and bearing dataset.The simulation outcome ensured that the proposed model has attained maximum performance over the compared methods.
出处 《Computers, Materials & Continua》 SCIE EI 2022年第3期6323-6338,共16页 计算机、材料和连续体(英文)
基金 This research has been funded by Dirección General de Investigaciones of Universidad Santiago de Cali under call No.01-2021.The authors would like to thank Chennai Institute of Technology for providing us with various resources and unconditional support for carrying out this study.
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  • 1Yang Y, Yu D, Cheng J. A roller bearing fault diag- nosis method based on EMD energy entropy and ANN [J]. Journal of Sound and Vibration, 2006, 294(1).. 269 -277. 被引量:1
  • 2Shen Z, Chen X, Zhang X, et al. A novel intelligent gear fault diagnosis model based on EMD and multi- classTSVM [J]. Measurement, 2012, 45(1): 30-- 40. 被引量:1
  • 3Li B, Liu P, Hu R, et al. Fuzzy lattice classifier and its application to bearing fault diagnosis [J]. Applied Soft Computing, 2012, 12(6): 1708--1719. 被引量:1
  • 4Zhao C L, Sun X B, Sun S L, et al. Fault diagnosis of sensor by chaos particle swarm optimization algorithm and support vector machine [J]. Expert Systems with Applications, 2011, 38(8): 9908 9912. 被引量:1
  • 5Widodo A, Yang B S. Wavelet support vector machine for induction machine fault diagnosis based on transi ent current signal [J]. Expert Systems with Applica- tions, 2008, 35(1): 307- 316. 被引量:1
  • 6Li B, Zhang P, Liu D, et al. Feature extraction for rolling element bearing fault diagnosis utilizing gener- alized S transform and two-dimensional non-negative matrix factorization[J]. Journal of Sound and Vibra- tion, 2011, 330(10): 2388 2399. 被引量:1
  • 7Ocak H, Loparo K A, Discenzo F M. Online tracking of bearing wear using wavelet packet decomposition and probabilistic modeling.. A method for bearing prognostics [J]. Journal of Sound and Vibration, 2007, 302(4): 951--961. 被引量:1
  • 8Zen H, Tokuda K, Masuko T, et al. A hidden semi- Markov model-based speech synthesis system [J]. Transactions on Information and Systems, 2007, 90 (5) : 825. 被引量:1
  • 9Dong M, He D. A segmental hidden semi-Markov model (HSMM)-based diagnostics and prognostics framework and methodology[J]. Mechanical Systems and Signal Processing, 2007, 21(5): 2248 2266. 被引量:1
  • 10Hinton G, Osindero S, Teh Y W. A fast learning al- gorithm for deep belief nets [J]. Neural Computation, 2006, 18(7) : 1527----1554. 被引量:1

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