Residual Life Prediction of Aeroengine Based on 1D-CNN and Bi-LSTM

被引:0
|
作者
Che C. [1 ]
Wang H. [1 ]
Ni X. [1 ]
Lin R. [1 ]
Xiong M. [1 ]
机构
[1] School of Civil Aviation, Nanjing University of Aeronautics and Astronautics, Nanjing
来源
Jixie Gongcheng Xuebao/Journal of Mechanical Engineering | 2021年 / 57卷 / 14期
关键词
1-dimensional convolutional neural network; Aeroengine; Bidirectional long short memory neural network; Performance degradation; Residual life;
D O I
10.3901/JME.2021.14.304
中图分类号
学科分类号
摘要
Residual life prediction plays an important role in the preventive maintenance of aeroengine, and it is an important means to ensure the safe operation of aircraft and improve the efficiency of maintenance support. A residual life prediction model of aeroengine based on 1-dimensional convolution neural network (1D-CNN) and bidirectional long short memory neural network (Bi-LSTM) is proposed. Firstly, according to the engineering experience, on the basis of the principal component analysis of multi-state parameters, the degradation process is randomly distributed and fitted to obtain the comprehensive performance degradation amount; then, the multi variable time series samples and the corresponding performance degradation amount are brought into the 1D-CNN model for regression analysis to obtain the performance degradation analysis model; then, the performance degradation amount is predicted by the Bi-LSTM time series, The future trend of performance degradation is obtained. Finally, by setting the performance degradation threshold, the residual life prediction results are obtained, and the real-time dynamic perception model from multi state parameters performance degradation analysis performance degradation prediction residual life prediction is obtained. The results show that the proposed hybrid model has lower regression analysis error and degradation prediction error compared with other single deep learning and traditional models, and can get more accurate and reliable residual life prediction results. © 2021 Journal of Mechanical Engineering.
引用
收藏
页码:304 / 312
页数:8
相关论文
共 19 条
  • [1] PEI Hong, HU Changhua, SI Xiaosheng, Et al., Review of machine learning based remaining useful life prediction methods for equipment, Journal of Mechanical Engineering, 55, 20, pp. 50-57, (2019)
  • [2] MA Yan, CHEN Yang, ZHANG Fan, Et al., Remaining useful life prediction of power battery based on extend H∞ particle filter algorithm, Journal of Mechanical Engineering, 55, 20, pp. 50-57, (2019)
  • [3] WANG Xi, HU Changhua, REN Ziqiang, Et al., Performance degradation modeling and remaining useful life prediction for aero-engine based on nonlinear wiener process, Acta Aeronautics et Astronautica Sinica, 41, 2, pp. 190-200, (2019)
  • [4] WANG G, LIU X, ZHAO Y, Et al., Neural network-based adaptive motion control for a mobile robot with unknown longitudinal slipping, Chinese Journal of Mechanical Engineering, 32, 4, pp. 36-44, (2019)
  • [5] LIU Z, CHENG Y, WANG P, Et al., A method for remaining useful life prediction of crystal oscillators using the Bayesian approach and extreme learning machine under uncertainty, Neurocomputing, 305, pp. 27-38, (2018)
  • [6] CHEN Z, LI Y, XIA T, Et al., Hidden Markov model with auto-correlated observations for remaining useful life prediction and optimal maintenance policy, Reliability Engineering & System Safety, 184, pp. 123-136, (2019)
  • [7] LI X, WU S, LI X, Et al., Particle swarm optimization-support vector machine model for machinery fault diagnoses in high-voltage circuit breakers, Chinese Journal of Mechanical Engineering, 33, 1, pp. 104-113, (2020)
  • [8] WANG B, LEI Y, YAN T, Et al., Recurrent convolutional neural network: A new framework for remaining useful life prediction of machinery, Neurocomputing, 378, pp. 117-129, (2020)
  • [9] LIU J, LI Q, CHEN W, Et al., Remaining useful life prediction of PEMFC based on long short-term memory recurrent neural networks, International Journal of Hydrogen Energy, 44, 11, pp. 5470-5480, (2019)
  • [10] AN Q, TAO Z, XU X, Et al., A data-driven model for milling tool remaining useful life prediction with convolutional and stacked LSTM network, Measurement, 154, (2020)