A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load

•A novel and simple end-to-end learning framework with tricks that are easy to implement is proposed.•This algorithm performs pretty well under the noisy environment, and works directly on raw noisy signals without any pre-denoisng methods.•The model has strong domain adaptation ability, and therefo...

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Veröffentlicht in:Mechanical systems and signal processing 2018-02, Vol.100, p.439-453
Hauptverfasser: Zhang, Wei, Li, Chuanhao, Peng, Gaoliang, Chen, Yuanhang, Zhang, Zhujun
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container_end_page 453
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container_start_page 439
container_title Mechanical systems and signal processing
container_volume 100
creator Zhang, Wei
Li, Chuanhao
Peng, Gaoliang
Chen, Yuanhang
Zhang, Zhujun
description •A novel and simple end-to-end learning framework with tricks that are easy to implement is proposed.•This algorithm performs pretty well under the noisy environment, and works directly on raw noisy signals without any pre-denoisng methods.•The model has strong domain adaptation ability, and therefore achieves high accuracy under different working load.•The inner mechanism of proposed TICNN model in feature extraction and classification is explored by visualizing the feature maps learned by TICNN. In recent years, intelligent fault diagnosis algorithms using machine learning technique have achieved much success. However, due to the fact that in real world industrial applications, the working load is changing all the time and noise from the working environment is inevitable, degradation of the performance of intelligent fault diagnosis methods is very serious. In this paper, a new model based on deep learning is proposed to address the problem. Our contributions of include: First, we proposed an end-to-end method that takes raw temporal signals as inputs and thus doesn’t need any time consuming denoising preprocessing. The model can achieve pretty high accuracy under noisy environment. Second, the model does not rely on any domain adaptation algorithm or require information of the target domain. It can achieve high accuracy when working load is changed. To understand the proposed model, we will visualize the learned features, and try to analyze the reasons behind the high performance of the model.
doi_str_mv 10.1016/j.ymssp.2017.06.022
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subjects Algorithms
Anti-noise
Artificial neural networks
Convolutional neural networks
End-to-end
Fault diagnosis
Industrial applications
Intelligent fault diagnosis
Load domain adaptation
Machine learning
Model accuracy
Neural networks
Noise
Noise reduction
Preprocessing
Working conditions
title A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load
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