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Lightweight and Self Adaptive Model for Domain Invariant Bearing Fault Diagnosis

Topics: Analytics, Intelligence and Knowledge Engineering; Artificial Intelligence; Data Processing ; Internet of Things; IoT Services and Applications; Modeling, Experiments, Sharing Technologies & Platforms; Sensor Networks, Remote Diagnosis and Development; Systems for IoT and Services Computing

Authors: Chandrakanth Kancharla 1 ; Jens Vankeirsbilck 1 ; Dries Vanoost 2 ; Jeroen Boydens 1 and Hans Hallez 1

Affiliations: 1 M-Group, DistriNet, Department of Computer Science, KU Leuven Bruges Campus, 8200 Bruges, Belgium ; 2 M-Group, WaveCoRE, Department of Electrical Engineering, KU Leuven Bruges Campus, 8200 Bruges, Belgium

Keyword(s): Condition Based Monitoring, Self Adaptation, Resource Constrained Computing, Bearing Fault Diagnosis, Domain Invariance.

Abstract: While the current machine fault diagnosis is affected by the rarity of cross conditional fault data in practice, efficient implementation of these diagnosis models on resource constrained devices is another active challenge. Given such constraints, an ideal fault diagnosis model should not be either generalizable across the shifting domains or lightweight, but rather a combination of both, generalizable while being minimalistic. Preferably being uninformed about the domain shift. Addressing these computational and data centric challenges, we propose a novel methodology, Convolutional Auto-encoder and Nearest Neighbors based self adaptation (SCAE-NN), that adapts its fault diagnosis model to the changing conditions of a machine. We implemented SCAE-NN for various cross-domain fault diagnosis tasks and compared its performance against the state-of-the-art domain invariant models. Compared to the SOTA, SCAE-NN is at least 6− 7% better at predicting fault classes across conditions, while being more than 10 times smaller in size and latency. Moreover, SCAE-NN does not need any labelled target domain data for the adaptation, making it suitable for practical data scarce scenarios. (More)

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Paper citation in several formats:
Kancharla, C.; Vankeirsbilck, J.; Vanoost, D.; Boydens, J. and Hallez, H. (2023). Lightweight and Self Adaptive Model for Domain Invariant Bearing Fault Diagnosis. In Proceedings of the 8th International Conference on Internet of Things, Big Data and Security - IoTBDS; ISBN 978-989-758-643-9; ISSN 2184-4976, SciTePress, pages 29-38. DOI: 10.5220/0011822700003482

@conference{iotbds23,
author={Chandrakanth Kancharla. and Jens Vankeirsbilck. and Dries Vanoost. and Jeroen Boydens. and Hans Hallez.},
title={Lightweight and Self Adaptive Model for Domain Invariant Bearing Fault Diagnosis},
booktitle={Proceedings of the 8th International Conference on Internet of Things, Big Data and Security - IoTBDS},
year={2023},
pages={29-38},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0011822700003482},
isbn={978-989-758-643-9},
issn={2184-4976},
}

TY - CONF

JO - Proceedings of the 8th International Conference on Internet of Things, Big Data and Security - IoTBDS
TI - Lightweight and Self Adaptive Model for Domain Invariant Bearing Fault Diagnosis
SN - 978-989-758-643-9
IS - 2184-4976
AU - Kancharla, C.
AU - Vankeirsbilck, J.
AU - Vanoost, D.
AU - Boydens, J.
AU - Hallez, H.
PY - 2023
SP - 29
EP - 38
DO - 10.5220/0011822700003482
PB - SciTePress