Summary
Improving product quality and service life by diagnosing defects in compressors through vibration signal analysis of the compressor's shell is challenging due to strong noise interference and limited labeled samples. The paper proposed a semi-supervised diagnosis method based on the convolution Transformer autoencoder (CTAE) for diagnosing hidden defects with small samples and strong noise. Firstly, an optimized variational modal decomposition is utilized to decouple and reduce noise from the raw vibrations, and the decomposition results are concatenated with the vibration signals as input to the model; Secondly, the CTAE is employed to learn the feature distribution of unlabeled samples and to extract and fuse local and global features from the input data; Finally, a labeled samples are used to fine-tune the model and to fuse features from multi-sensor information. The results of using a compressor dataset for validation show that the proposed method has high diagnosis accuracy and robustness with limited labeled samples and different signal-to-noise ratios.
Available documents
Format PDF
Pages: 47-57
Available
Public price
20 €
Member price*
Free
* Best rate depending on membership category (see the detailed benefits of individual and corporate memberships).
Details
- Original title: Semi-supervised diagnosis method of refrigeration compressor hidden defect based on convolutional transformer autoencoder model.
- Record ID : 30032112
- Languages: English
- Subject: Technology
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 158
- Publication date: 2024/02
- DOI: http://dx.doi.org/10.1016/j.ijrefrig.2023.10.021
Links
See other articles in this issue (36)
See the source
Indexing
- Themes: Compressors
- Keywords: Expérimentation; Detection; Machine learning; Default; Noise; Failure; Compressor; Modelling
-
A robust fault diagnosis method for HVAC system...
- Author(s) : ZHU X., CHEN S., CHEN K., LIANG X., REN T., JIN X., DU Z.
- Date : 2023/08/21
- Languages : English
- Source: Proceedings of the 26th IIR International Congress of Refrigeration: Paris , France, August 21-25, 2023.
- Formats : PDF
View record
-
An intelligent fault detection and diagnosis mo...
- Author(s) : WANG Z. W., WANG S. C., LI D., CAO Z. W., HE Y. L.
- Date : 2024/04
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 160
- Formats : PDF
View record
-
Proposal and Experimental Study on a Diagnosis ...
- Author(s) : LI K., SUN Z., JIN H., XU Y., GU J., HUANG Y., ZHANG Q., SHEN X.
- Date : 2022/03
- Languages : English
- Source: Applied Sciences - vol. 12 - n. 6
- Formats : PDF
View record
-
Soft faults evaluation for electric heat pumps:...
- Author(s) : MAURO A. W., PELELLA F., VISCITO L.
- Date : 2023/08/21
- Languages : English
- Source: Proceedings of the 26th IIR International Congress of Refrigeration: Paris , France, August 21-25, 2023.
- Formats : PDF
View record
-
Research on fault diagnosis strategy of air-con...
- Author(s) : MA Q., YUE C., YU M., SONG Y., CUI P., YU Y.
- Date : 2024/02
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 158
- Formats : PDF
View record