SRTFD: Scalable Real-Time Fault Diagnosis through Online Continual Learning
Dandan Zhao, Karthick Sharma, Hongpeng Yin, Yuxin Qi, Shuhao Zhang

TL;DR
This paper introduces SRTFD, a scalable real-time fault diagnosis framework that combines online continual learning with data selection and pseudo-labeling techniques to improve adaptability, efficiency, and accuracy in industrial environments.
Contribution
SRTFD is the first framework to integrate coreset selection, data balancing, and pseudo-labeling for scalable, real-time fault diagnosis using online continual learning.
Findings
Outperforms existing methods in real-world and simulated datasets
Reduces training redundancy and improves efficiency
Maintains high diagnostic accuracy in dynamic conditions
Abstract
Fault diagnosis (FD) is essential for maintaining operational safety and minimizing economic losses by detecting system abnormalities. Recently, deep learning (DL)-driven FD methods have gained prominence, offering significant improvements in precision and adaptability through the utilization of extensive datasets and advanced DL models. Modern industrial environments, however, demand FD methods that can handle new fault types, dynamic conditions, large-scale data, and provide real-time responses with minimal prior information. Although online continual learning (OCL) demonstrates potential in addressing these requirements by enabling DL models to continuously learn from streaming data, it faces challenges such as data redundancy, imbalance, and limited labeled data. To overcome these limitations, we propose SRTFD, a scalable real-time fault diagnosis framework that enhances OCL with…
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Taxonomy
TopicsFault Detection and Control Systems · Anomaly Detection Techniques and Applications · Machine Fault Diagnosis Techniques
