Foundational Models for Fault Diagnosis of Electrical Motors
Sriram Anbalagan, Deepesh Agarwal, Balasubramaniam Natarajan, Babji, Srinivasan

TL;DR
This paper introduces a neural network-based foundational model for electrical motor fault diagnosis that can be fine-tuned with minimal data to accurately identify faults across various conditions and machines.
Contribution
It proposes a self-supervised learning framework to develop a versatile backbone model that requires less labeled data for fault diagnosis in electrical motors.
Findings
Achieved over 90% classification accuracy in fault diagnosis.
Effective across different fault types and operating conditions.
Demonstrated cross-machine generalization capabilities.
Abstract
A majority of recent advancements related to the fault diagnosis of electrical motors are based on the assumption that training and testing data are drawn from the same distribution. However, the data distribution can vary across different operating conditions during real-world operating scenarios of electrical motors. Consequently, this assumption limits the practical implementation of existing studies for fault diagnosis, as they rely on fully labelled training data spanning all operating conditions and assume a consistent distribution. This is because obtaining a large number of labelled samples for several machines across different fault cases and operating scenarios may be unfeasible. In order to overcome the aforementioned limitations, this work proposes a framework to develop a foundational model for fault diagnosis of electrical motors. It involves building a neural…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Oil and Gas Production Techniques · Non-Destructive Testing Techniques
