Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion

In order to address the issue of multi-information fusion, this paper proposed a method for bearing fault diagnosis based on multisource and multimodal information fusion. Existing bearing fault diagnosis methods mainly rely on single sensor information. Nevertheless, mechanical faults in bearings a...

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Main Authors: Xu Chen, Wenbing Chang, Yongxiang Li, Zhao He, Xiang Ma, Shenghan Zhou
Format: Article
Language:English
Published: AIMS Press 2024-11-01
Series:Electronic Research Archive
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Online Access:https://www.aimspress.com/article/doi/10.3934/era.2024292
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author Xu Chen
Wenbing Chang
Yongxiang Li
Zhao He
Xiang Ma
Shenghan Zhou
author_facet Xu Chen
Wenbing Chang
Yongxiang Li
Zhao He
Xiang Ma
Shenghan Zhou
author_sort Xu Chen
collection DOAJ
description In order to address the issue of multi-information fusion, this paper proposed a method for bearing fault diagnosis based on multisource and multimodal information fusion. Existing bearing fault diagnosis methods mainly rely on single sensor information. Nevertheless, mechanical faults in bearings are intricate and subject to countless excitation disturbances, which poses a great challenge for accurate identification if only relying on feature extraction from single sensor input. In this paper, a multisource information fusion model based on auto-encoder was first established to achieve the fusion of multi-sensor signals. Based on the fused signals, multimodal feature extraction was realized by integrating image features and time-frequency statistical information. The one-dimensional vibration signals were converted into two-dimensional time-frequency images by continuous wavelet transform (CWT), and then they were fed into the Resnet network for fault diagnosis. At the same time, the time-frequency statistical features of the fused 1D signal were extracted from the integrated perspective of time and frequency domains and inputted into the improved 1D convolutional neural network model based on the residual block and attention mechanism (1DCNN-REA) model to realize fault diagnosis. Finally, the tree-structured parzen estimator (TPE) algorithm was utilized to realize the integration of two models in order to improve the diagnostic effect of a single model and obtain the final bearing fault diagnosis results. The proposed model was validated using real experimental data, and the results of the comparison and ablation experiments showed that compared with other models, the proposed model can precisely diagnosis the fault type with an accuracy rate of 98.93%.
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spelling doaj-art-b6cd1611836e44d98cdc9a25768a8bdc2025-01-23T07:53:00ZengAIMS PressElectronic Research Archive2688-15942024-11-0132116276630010.3934/era.2024292Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusionXu Chen0Wenbing Chang1Yongxiang Li2Zhao He3Xiang Ma4Shenghan Zhou5School of Economics and Management, Beihang University, Beijing 100191, ChinaSchool of Reliability and Systems Engineering, Beihang University, Beijing 100191, ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaSchool of Reliability and Systems Engineering, Beihang University, Beijing 100191, ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaSchool of Reliability and Systems Engineering, Beihang University, Beijing 100191, ChinaIn order to address the issue of multi-information fusion, this paper proposed a method for bearing fault diagnosis based on multisource and multimodal information fusion. Existing bearing fault diagnosis methods mainly rely on single sensor information. Nevertheless, mechanical faults in bearings are intricate and subject to countless excitation disturbances, which poses a great challenge for accurate identification if only relying on feature extraction from single sensor input. In this paper, a multisource information fusion model based on auto-encoder was first established to achieve the fusion of multi-sensor signals. Based on the fused signals, multimodal feature extraction was realized by integrating image features and time-frequency statistical information. The one-dimensional vibration signals were converted into two-dimensional time-frequency images by continuous wavelet transform (CWT), and then they were fed into the Resnet network for fault diagnosis. At the same time, the time-frequency statistical features of the fused 1D signal were extracted from the integrated perspective of time and frequency domains and inputted into the improved 1D convolutional neural network model based on the residual block and attention mechanism (1DCNN-REA) model to realize fault diagnosis. Finally, the tree-structured parzen estimator (TPE) algorithm was utilized to realize the integration of two models in order to improve the diagnostic effect of a single model and obtain the final bearing fault diagnosis results. The proposed model was validated using real experimental data, and the results of the comparison and ablation experiments showed that compared with other models, the proposed model can precisely diagnosis the fault type with an accuracy rate of 98.93%.https://www.aimspress.com/article/doi/10.3934/era.2024292fault diagnosiscnnresidual blockresnetbearing faultattention mechanism
spellingShingle Xu Chen
Wenbing Chang
Yongxiang Li
Zhao He
Xiang Ma
Shenghan Zhou
Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
Electronic Research Archive
fault diagnosis
cnn
residual block
resnet
bearing fault
attention mechanism
title Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
title_full Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
title_fullStr Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
title_full_unstemmed Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
title_short Resnet-1DCNN-REA bearing fault diagnosis method based on multi-source and multi-modal information fusion
title_sort resnet 1dcnn rea bearing fault diagnosis method based on multi source and multi modal information fusion
topic fault diagnosis
cnn
residual block
resnet
bearing fault
attention mechanism
url https://www.aimspress.com/article/doi/10.3934/era.2024292
work_keys_str_mv AT xuchen resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion
AT wenbingchang resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion
AT yongxiangli resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion
AT zhaohe resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion
AT xiangma resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion
AT shenghanzhou resnet1dcnnreabearingfaultdiagnosismethodbasedonmultisourceandmultimodalinformationfusion