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Main Authors: Smrity, Tangin Amir, Kafi, MD Zahin Muntaqim Hasan Muhammad, Miah, Abu Saleh Musa, Hassan, Najmul, Okuyama, Yuichi, Asai, Nobuyoshi, Suzuki, Taro, Shin, Jungpil
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.07692
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author Smrity, Tangin Amir
Kafi, MD Zahin Muntaqim Hasan Muhammad
Miah, Abu Saleh Musa
Hassan, Najmul
Okuyama, Yuichi
Asai, Nobuyoshi
Suzuki, Taro
Shin, Jungpil
author_facet Smrity, Tangin Amir
Kafi, MD Zahin Muntaqim Hasan Muhammad
Miah, Abu Saleh Musa
Hassan, Najmul
Okuyama, Yuichi
Asai, Nobuyoshi
Suzuki, Taro
Shin, Jungpil
contents Induction motors (IMs) are indispensable in industrial and daily life, but they are susceptible to various faults that can lead to overheating, wasted energy consumption, and service failure. Early detection of faults is essential to protect the motor and prolong its lifespan. This paper presents a hybrid method that integrates BYOL with CNNs for classifying thermal images of induction motors for fault detection. The thermal dataset used in this work includes different operating states of the motor, such as normal operation, overload, and faults. We employed multiple deep learning (DL) models for the BYOL technique, ranging from popular architectures such as ResNet-50, DenseNet-121, DenseNet-169, EfficientNetB0, VGG16, and MobileNetV2. Additionally, we introduced a new high-performance yet lightweight CNN model named BYOL-IMNet, which comprises four custom-designed blocks tailored for fault classification in thermal images. Our experimental results demonstrate that the proposed BYOL-IMNet achieves 99.89\% test accuracy and an inference time of 5.7 ms per image, outperforming state-of-the-art models. This study highlights the promising performance of the CNN-BYOL hybrid method in enhancing accuracy for detecting faults in induction motors, offering a robust methodology for online monitoring in industrial settings.
format Preprint
id arxiv_https___arxiv_org_abs_2510_07692
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hybrid CNN-BYOL Approach for Fault Detection in Induction Motors Using Thermal Images
Smrity, Tangin Amir
Kafi, MD Zahin Muntaqim Hasan Muhammad
Miah, Abu Saleh Musa
Hassan, Najmul
Okuyama, Yuichi
Asai, Nobuyoshi
Suzuki, Taro
Shin, Jungpil
Computer Vision and Pattern Recognition
Induction motors (IMs) are indispensable in industrial and daily life, but they are susceptible to various faults that can lead to overheating, wasted energy consumption, and service failure. Early detection of faults is essential to protect the motor and prolong its lifespan. This paper presents a hybrid method that integrates BYOL with CNNs for classifying thermal images of induction motors for fault detection. The thermal dataset used in this work includes different operating states of the motor, such as normal operation, overload, and faults. We employed multiple deep learning (DL) models for the BYOL technique, ranging from popular architectures such as ResNet-50, DenseNet-121, DenseNet-169, EfficientNetB0, VGG16, and MobileNetV2. Additionally, we introduced a new high-performance yet lightweight CNN model named BYOL-IMNet, which comprises four custom-designed blocks tailored for fault classification in thermal images. Our experimental results demonstrate that the proposed BYOL-IMNet achieves 99.89\% test accuracy and an inference time of 5.7 ms per image, outperforming state-of-the-art models. This study highlights the promising performance of the CNN-BYOL hybrid method in enhancing accuracy for detecting faults in induction motors, offering a robust methodology for online monitoring in industrial settings.
title Hybrid CNN-BYOL Approach for Fault Detection in Induction Motors Using Thermal Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.07692