Summary
The hermetic refrigeration compressor is the core component of the refrigeration system, failure of which will cause energy waste and reduce service life. Fault diagnosis based on vibration signal is a research hotspot. However, it is challenging to extract features of nonlinear and nonstationary vibration signals, which severely restricts the development of this method. This paper proposes a dual time-frequency images fusion method to obtain more effective features for diagnosing compressor manufacturing defects. Firstly, two time-frequency images are obtained by implementing continuous wavelet transform and Hilbert-Huang transform of the same vibration signal sample. Then, a convolutional neural network is used for image feature extraction and fusion, where the features extracted from two time-frequency images have complementarity. A data set containing six categories of typical manufacturing defects is used to verify the proposed method. The results show that the average diagnostic accuracy of the proposed method reaches 95.9%, and the proposed method has a better performance than other methods.
Available documents
Format PDF
Available
Free
Details
- Original title: Proposal and Experimental Study on a Diagnosis Method for Hermetic Refrigeration Compressor Using Dual Time-Frequency Image Fusion.
- Record ID : 30029585
- Languages: English
- Subject: Technology
- Source: Applied Sciences - vol. 12 - n. 6
- Publishers: MDPI
- Publication date: 2022/03
- DOI: http://dx.doi.org/10.3390/app12063033
Links
See other articles in this issue (4)
See the source
Indexing
- Themes: Compressors
- Keywords: Detection; Failure; Hermetic compressor; Expérimentation; Machine learning; Artificial neural network
-
Parallel deep neural network for scalable coupl...
- Author(s) : CHEN S., LIU Z., CHEN K., ZHU X., 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
-
Fault detection for vaccine refrigeration via c...
- Author(s) : ABHIRAMAN B., FOTIS R., ESKIN L., RUBIN H.
- Date : 2023/05
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 149
- Formats : PDF
View record
-
Deep learning-based refrigerant charge fault de...
- Author(s) : EOM Y. H., HONG S. B., YOO J. W., KIM M. S.
- Date : 2021/08/31
- Languages : English
- Source: 13th IEA Heat Pump Conference 2021: Heat Pumps – Mission for the Green World. Conference proceedings [full papers]
- Formats : PDF
View record
-
Training neural networks to predict the energy ...
- Author(s) : PATIL S., PONNUSAMI S., KOVACEVIC A., ASATI N.
- Date : 2022/07/15
- Languages : English
- Source: 2022 Purdue Conferences. 26th International Compressor Engineering Conference at Purdue.
- Formats : PDF
View record
-
A novel quality inspection method of compressor...
- Author(s) : WANG J., JIN X., LYU Y., JIA Z.
- Date : 2024/01
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 157
- Formats : PDF
View record