End-to-end CNN + LSTM deep learning approach for bearing fault diagnosis

被引:0
作者
Amin Khorram
Mohammad Khalooei
Mansoor Rezghi
机构
[1] Department of Mechanical Engineering of WSE Co.,Department of IT and Computer Engineering
[2] Amirkabir University of Technology,Department of Computer Science
[3] Tarbiat Modares University,undefined
来源
Applied Intelligence | 2021年 / 51卷
关键词
Intelligent fault diagnosis; Bearing fault; Intelligent controller; CNN + LSTM; Deep learning; IMS bearing dataset; CWRU bearing dataset;
D O I
暂无
中图分类号
学科分类号
摘要
Fault diagnostics and prognostics are important topics both in practice and research. There is an intense pressure on industrial plants to continue reducing unscheduled downtime, performance degradation, and safety hazards, which requires detecting and recovering potential faults in its early stages. Intelligent fault diagnosis is a promising tool due to its ability to rapidly and efficiently processing collected signals and providing accurate diagnosis results. Although many studies have developed machine leaning (M.L) and deep learning (D.L) algorithms for detecting the bearing fault, the results have generally been limited to relatively small train and test datasets and the input data has been manipulated (selective features used) to reach high accuracy. In this work, the raw data, collected from accelerometers (time-domain features) are taken as the input of a novel temporal sequence prediction algorithm to present an end-to-end method for fault detection. We use equivalent temporal sequences as the input of a novel Convolutional Long-Short-Term-Memory Recurrent Neural Network (CRNN) to detect the bearing fault with the highest accuracy in the shortest possible time. The method can reach the highest accuracy in the literature, to the best knowledge of the authors of the present paper, voiding any sort of pre-processing or manipulation of the input data. Effectiveness and feasibility of the fault diagnosis method are validated by applying it to two commonly used benchmark real vibration datasets and comparing the result with the other intelligent fault diagnosis methods.
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页码:736 / 751
页数:15
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