Abstract

This paper proposes two deep learning methods for remaining useful life (RUL) prediction of bearings. The methods have the advantageous end-to-end property that they take raw data as input and generate the predicted RUL directly. They are TSMC-CNN, which stands for the time series multiple channel convolutional neural network, and TSMC-CNN-ALSTM, which stands for the TSMC-CNN integrated with the attention-based long short-term memory (ALSTM) network. The proposed methods divide a time series into multiple channels and take advantage of the convolutional neural network (CNN), the long short-term memory (LSTM) network, and the attention-based mechanism for boosting performance. The CNN performs well for extracting features from data with multiple channels; dividing a time series into multiple channels helps the CNN extract relationship among far-apart data points. The LSTM network is excellent for processing temporal data; the attention-based mechanism allows the LSTM network to focus on different features at different time steps for better prediction accuracy. PRONOSTIA bearing operation datasets are applied to the proposed methods for the purpose of performance evaluation and comparison. The comparison results show that the proposed methods outperform the others in terms of the mean absolute error (MAE) and the root mean squared error (RMSE) of RUL prediction.

Highlights

  • With the advanced development of technologies of sensors, robots, Internet-of-Things (IoT), artificial intelligence (AI), and industrial automation, comes the era of Industry 4.0 [1]

  • Management (PHM) of machines plays a critical role in smart factories, as it can assess the reliability of machines in their life cycles and determine the advent of failures to mitigate risks of sudden machine breakdowns [2]

  • The second method is TSMC-convolutional neural network (CNN)-ALSTM, which stands for the TSMC-CNN integrated with the attention-based long short-term memory (ALSTM) network

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Summary

Introduction

With the advanced development of technologies of sensors, robots, Internet-of-Things (IoT), artificial intelligence (AI), and industrial automation, comes the era of Industry 4.0 [1]. Unlike model-based methods, data-driven methods depend on little domain knowledge and can be improved significantly in the aspect of prediction accuracy by applying advanced data analysis techniques, such as machine learning schemes and deep learning schemes. Some of the data-driven methods are based on deep neural networks for predicting the bearing. This paper proposes two deep learning methods to predict the RUL of bearings. The proposed methods divide a time series into multiple channels and take advantage of the CNN, the LSTM network, and the attention mechanism for boosting performance. The evaluation results are compared with those of related deep learning and data-driven methods, namely, the deep neural network (DNN), Gradient Boosting Decision Tree (GBDT), Support Vector.

Related Work
Methods
The PRONOSTIA
Proposed Methods
TSMC-CNN
TSMC-CNN-ALSTM
Performance Comparisons
Findings
Conclusions
Full Text
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