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Open AccessJournal ArticleDOI

A Hybrid Prognostics Deep Learning Model for Remaining Useful Life Prediction

Zhiyuan Xie, +4 more
- 29 Dec 2020 - 
- Vol. 10, Iss: 1, pp 39
TLDR
A two-phase deep-learning-model attention-convolutional forget-gate recurrent network (AM-ConvFGRNET) for RUL prediction is proposed, which ensures the model to extract more specific features for generating an output, compensating the drawbacks of the FGRNET that it is a black box model and improving the interpretability.
Abstract
Remaining Useful Life (RUL) prediction is significant in indicating the health status of the sophisticated equipment, and it requires historical data because of its complexity. The number and complexity of such environmental parameters as vibration and temperature can cause non-linear states of data, making prediction tremendously difficult. Conventional machine learning models such as support vector machine (SVM), random forest, and back propagation neural network (BPNN), however, have limited capacity to predict accurately. In this paper, a two-phase deep-learning-model attention-convolutional forget-gate recurrent network (AM-ConvFGRNET) for RUL prediction is proposed. The first phase, forget-gate convolutional recurrent network (ConvFGRNET) is proposed based on a one-dimensional analog long short-term memory (LSTM), which removes all the gates except the forget gate and uses chrono-initialized biases. The second phase is the attention mechanism, which ensures the model to extract more specific features for generating an output, compensating the drawbacks of the FGRNET that it is a black box model and improving the interpretability. The performance and effectiveness of AM-ConvFGRNET for RUL prediction is validated by comparing it with other machine learning methods and deep learning methods on the Commercial Modular Aero-Propulsion System Simulation (C-MAPSS) dataset and a dataset of ball screw experiment.

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Citations
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Aircraft Engine Run-to-Failure Dataset under Real Flight Conditions for Prognostics and Diagnostics

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A deep attention residual neural network-based remaining useful life prediction of machinery

TL;DR: A novel deep attention residual neural network (DARNN) is proposed by us for RUL prediction of machinery, which significantly surpassed some existing methods in prediction performance and self-stability.
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Data-Driven Deep Learning-Based Attention Mechanism for Remaining Useful Life Prediction: Case Study Application to Turbofan Engine Analysis

TL;DR: Wang et al. as mentioned in this paper proposed four data-driven models based on deep neural networks (DNNs) with an attention mechanism to improve DNN feature extraction, data are prepared using a sliding time window technique, and raw data collected after normalizing is simply fed into the suggested network, requiring no prior knowledge of prognostics or signal processing and simplifying the proposed method's applicability.
Journal ArticleDOI

MSWR-LRCN: A new deep learning approach to remaining useful life estimation of bearings

TL;DR: In this article, a multi-scale long-term recurrent convolutional network with wide first layer kernels and residual shrinkage building unit (MSWR-LRCN) was proposed for predicting the remaining useful life (RUL) of rolling bearings.
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