Document detail
ID

oai:arXiv.org:2208.13288

Topic
Computer Science - Machine Learnin...
Author
Rombach, Katharina Michau, Gabriel Bürzle, Wilfried Koller, Stefan Fink, Olga
Category

Computer Science

Year

2022

listing date

6/5/2024

Keywords
indicators detection fault
Metrics

Abstract

Monitoring the health of complex industrial assets is crucial for safe and efficient operations.

Health indicators that provide quantitative real-time insights into the health status of industrial assets over time serve as valuable tools for e.g. fault detection or prognostics.

This study proposes a novel, versatile and unsupervised approach to learn health indicators using contrastive learning, where the operational time serves as a proxy for degradation.

To highlight its versatility, the approach is evaluated on two tasks and case studies with different characteristics: wear assessment of milling machines and fault detection of railway wheels.

Our results show that the proposed methodology effectively learns a health indicator that follows the wear of milling machines (0.97 correlation on average) and is suitable for fault detection in railway wheels (88.7% balanced accuracy).

The conducted experiments demonstrate the versatility of the approach for various systems and health conditions.

Rombach, Katharina,Michau, Gabriel,Bürzle, Wilfried,Koller, Stefan,Fink, Olga, 2022, Learning Informative Health Indicators Through Unsupervised Contrastive Learning

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Lung cancer risk and exposure to air pollution: a multicenter North China case–control study involving 14604 subjects
lung cancer case–control air pollution never-smokers nomogram model controls lung-related 14604 subjects north polluted consistent smokers quit exposure lung cancer risk air people factor smoking pollution study history