Zheng, Jianfei and Zhang, Bowei and Ma, Jing and Zhang, Qingchao and Yang, Lihao (2022) A New Model for Remaining Useful Life Prediction Based on NICE and TCN-BiLSTM under Missing Data. Machines, 10 (11). p. 974. ISSN 2075-1702
machines-10-00974.pdf - Published Version
Download (2MB)
Abstract
The Remaining Useful Life (RUL) prediction of engineering equipment is bound to face the situation of missing data. The existing methods of RUL prediction for such cases mainly take “data generation—RUL prediction” as the basic idea but are often limited to the generation of one-dimensional test data, resulting in the extraction of the prediction network. Therefore, this paper proposes a multivariate degradation device based on Nonlinear Independent Components Estimation (NICE) and the Temporal Convolutional Network–Bidirectional Long Short-term Memory (TCN-BiLSTM) network for the RUL prediction requirements in the case of missing data. First, based on the NICE network, realistic data are generated through reversible sampling; then, the filling of multivariate missing data is completed. Next, the filled multivariate degradation data are processed to generate multivariate degradation data and predicted labels for constructing the training set and test set. Based on this, a residual life prediction model integrating TCN and the BiLSTM network is proposed. To evaluate the proposed method, this paper takes an example of the RUL prediction of aeroengines to perform multivariate degradation data-filling and prediction tasks. The results demonstrate the superiority and potential application value of the method.
Item Type: | Article |
---|---|
Uncontrolled Keywords: | multivariate degraded data; RUL; deep generative networks; nonlinear independent component estimation; temporal convolutional networks; bidirectional long short-term networks |
Subjects: | STM Repository > Engineering |
Depositing User: | Managing Editor |
Date Deposited: | 11 Sep 2023 10:45 |
Last Modified: | 11 Sep 2023 10:45 |
URI: | http://classical.goforpromo.com/id/eprint/3737 |