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Fault Diagnosis for Rolling Bearings Based on Multiscale Feature Fusion Deep Residual Networks
by
Shi, Haibin
, Zhu, Haiping
, Wu, Xiangyang
in
Accuracy
/ Artificial intelligence
/ Bearings
/ Bias
/ Deep learning
/ Diagnostic systems
/ Fault diagnosis
/ Fault location (Engineering)
/ Feature extraction
/ Machine learning
/ Mapping
/ Methods
/ Neural networks
/ Performance evaluation
/ Roller bearings
/ Signal processing
/ Wavelet transforms
2023
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Fault Diagnosis for Rolling Bearings Based on Multiscale Feature Fusion Deep Residual Networks
by
Shi, Haibin
, Zhu, Haiping
, Wu, Xiangyang
in
Accuracy
/ Artificial intelligence
/ Bearings
/ Bias
/ Deep learning
/ Diagnostic systems
/ Fault diagnosis
/ Fault location (Engineering)
/ Feature extraction
/ Machine learning
/ Mapping
/ Methods
/ Neural networks
/ Performance evaluation
/ Roller bearings
/ Signal processing
/ Wavelet transforms
2023
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Do you wish to request the book?
Fault Diagnosis for Rolling Bearings Based on Multiscale Feature Fusion Deep Residual Networks
by
Shi, Haibin
, Zhu, Haiping
, Wu, Xiangyang
in
Accuracy
/ Artificial intelligence
/ Bearings
/ Bias
/ Deep learning
/ Diagnostic systems
/ Fault diagnosis
/ Fault location (Engineering)
/ Feature extraction
/ Machine learning
/ Mapping
/ Methods
/ Neural networks
/ Performance evaluation
/ Roller bearings
/ Signal processing
/ Wavelet transforms
2023
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Fault Diagnosis for Rolling Bearings Based on Multiscale Feature Fusion Deep Residual Networks
Journal Article
Fault Diagnosis for Rolling Bearings Based on Multiscale Feature Fusion Deep Residual Networks
2023
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Overview
Deep learning, due to its excellent feature-adaptive capture ability, has been widely utilized in the fault diagnosis field. However, there are two common problems in deep-learning-based fault diagnosis methods: (1) many researchers attempt to deepen the layers of deep learning models for higher diagnostic accuracy, but degradation problems of deep learning models often occur; and (2) the use of multiscale features can easily be ignored, which makes the extracted data features lack diversity. To deal with these problems, a novel multiscale feature fusion deep residual network is proposed in this paper for the fault diagnosis of rolling bearings, one which contains multiple multiscale feature fusion blocks and a multiscale pooling layer. The multiple multiscale feature fusion block is designed to automatically extract the multiscale features from raw signals, and further compress them for higher dimensional feature mapping. The multiscale pooling layer is constructed to fuse the extracted multiscale feature mapping. Two famous rolling bearing datasets are adopted to evaluate the diagnostic performance of the proposed model. The comparison results show that the diagnostic performance of the proposed model is superior to not only several popular models, but also other advanced methods in the literature.
Publisher
MDPI AG
Subject
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