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Medical rolling bearing fault prognostics based on improved extreme learning machine

Author

Listed:
  • Cheng He

    (Shanghai Polytechnic University)

  • Changchun Liu

    (Shanghai Polytechnic University)

  • Tao Wu

    (Shanghai Polytechnic University)

  • Ying Xu

    (Shanghai Polytechnic University)

  • Yang Wu

    (Shanghai Polytechnic University)

  • Tong Chen

    (Shanghai General Hospital)

Abstract

The problem studied in this article:the random selection of the input weight and the implicit layer bias of the extreme learning machine leads to the instability of the medical rolling bearing fault prediction result of the algorithm. It requires more hidden layer nodes to ensure the accuracy of the algorithm, duing to this, Ensemble Error Minimized Extreme Learning Machine (EEM-ELM) is proposed. The EEM-ELM uses various error limit learning machines (EM-ELM) trained on different training sets as member classifiers. Member classifier factors are also used, including predictive entropy, which verifies the set’s accuracy and average and output weights as weights. All of these form a composite classifier by weighted linear combination. This method skillfully solves the problem of optimal hidden layer neurons number selection. The normalized energy and permutation entropy of each IMF component obtained by VMD decomposition fault signal are established as feature vectors, and the improved EEM-ELM algorithm is used as the fault diagnosis model for bearing fault classification algorithm. The fault diagnosis model is applied to the classification of bearing fault signals. The analysis of experimental data proves that the classification result of the proposed EEM-ELM algorithm is better than the ELM algorithm. At the same time, the accuracy rate is higher than each member classifier because of proper weighting processing. Apart from this, since the EEM-ELM algorithm integrates the error minimization limit learning machine, the EEM-ELM algorithm does not need to select the optimal hidden layer node number. The EEM-ELM algorithm only needs to specify the maximum number of training set samples that each EM-ELM-based classifier can tolerate misclassification to achieve high stability and high accuracy classification.

Suggested Citation

  • Cheng He & Changchun Liu & Tao Wu & Ying Xu & Yang Wu & Tong Chen, 0. "Medical rolling bearing fault prognostics based on improved extreme learning machine," Journal of Combinatorial Optimization, Springer, vol. 0, pages 1-22.
  • Handle: RePEc:spr:jcomop:v::y::i::d:10.1007_s10878-019-00494-y
    DOI: 10.1007/s10878-019-00494-y
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    References listed on IDEAS

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    1. Dujuan Wang & Feng Liu & Yunqiang Yin & Jianjun Wang & Yanzhang Wang, 2015. "Prioritized surgery scheduling in face of surgeon tiredness and fixed off-duty period," Journal of Combinatorial Optimization, Springer, vol. 30(4), pages 967-981, November.
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