Comparative Analysis of Autoencoder and Contrastive One-Class Anomaly Detection in Reciprocating Compressors
ID:58 Submission ID:99 View Protection:ATTENDEE Updated Time:2024-10-23 10:46:39 Hits:41 Oral Presentation

Start Time:2024-11-01 14:40 (Asia/Shanghai)

Duration:20min

Session:[P3] Parallel Session 3 » [P3-1] Parallel Session 3(November 1 PM)

No files

Abstract
Fault detection in reciprocating compressors is crucial for ensuring the reliability and efficiency of industrial operations, as failures in these systems can lead to costly downtimes. However, the lack of faulty data challenges the application of supervised approaches. Therefore, many one-class learning-based proposals have been introduced to address this task. This study presents a comparative analysis of two advanced models for fault detection under a one-class scenario: the autoencoder and the Contrastive One-Class Anomaly detection (COCA) model. Both models were evaluated on their ability to detect anomalies in high-resolution time series data from a two-stage reciprocating compressor under varying operational conditions. The autoencoder, trained solely on healthy condition data, demonstrated superior performance with higher and more consistent balanced accuracy across all test conditions compared to the COCA model, which showed more significant variability and the presence of outliers. The findings suggest that the autoencoder approach is more reliable for early fault detection in industrial applications, offering better generalization and robustness.
Keywords
fault detection,reciprocating compressor,Autoencoders,contrastive learning
Speaker
CabreraDiego
Professor Dongguan University of Technology

Submission Author
VillacísMauricio Universidad Politécnica Salesiana
CabreraDiego Dongguan University of Technology
SánchezRené-Vinicio Universidad Politécnica Salesiana
CerradaMariela Universidad Politécnica Salesiana
LiChuan Dongguan University of Technology
LongJianyu Dongguan University of Technology
Comment submit
Verification code Change another
All comments

Important Dates

15th August 2024   31st August 2024- Manuscript Submission

15th September 2024 - Acceptance Notification

1st October 2024 - Camera Ready Submission

1st October 2024  – Early Bird Registration

 

Contact Us

Website:

https://icsmd2024.aconf.org/

Email:
icsmd2024@163.com