Continuous Test-time Domain Adaptation for Efficient Fault Detection under Evolving Operating Conditions
Han Sun, Kevin Ammann, Stylianos Giannoulakis, Olga Fink

TL;DR
This paper presents a novel continuous test-time domain adaptation framework for fault detection in industrial systems, addressing challenges of evolving operating conditions and limited data, thereby improving early fault detection accuracy.
Contribution
It introduces the TAAD framework that separates system parameters and measurements for independent adaptation, enabling robust fault detection under changing conditions.
Findings
Significant accuracy improvements over existing methods
Effective adaptation to evolving operating conditions
Enhanced fault detection reliability in real-world data
Abstract
Fault detection is crucial in industrial systems to prevent failures and optimize performance by distinguishing abnormal from normal operating conditions. Data-driven methods have been gaining popularity for fault detection tasks as the amount of condition monitoring data from complex industrial systems increases. Despite these advances, early fault detection remains a challenge under real-world scenarios. The high variability of operating conditions and environments makes it difficult to collect comprehensive training datasets that can represent all possible operating conditions, especially in the early stages of system operation. Furthermore, these variations often evolve over time, potentially leading to entirely new data distributions in the future that were previously unseen. These challenges prevent direct knowledge transfer across different units and over time, leading to the…
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Taxonomy
TopicsFault Detection and Control Systems · Anomaly Detection Techniques and Applications · Industrial Vision Systems and Defect Detection
