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Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network

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Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network. / An, Kang; Lu, Jingfeng; Zhu, Quanjing et al.
In: IEEE Transactions on Instrumentation and Measurement, Vol. 72, 3516912, 31.05.2023, p. 1-12.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

An, K, Lu, J, Zhu, Q, Wang, X, De Silva, CW, Xia, M & Lu, S 2023, 'Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network', IEEE Transactions on Instrumentation and Measurement, vol. 72, 3516912, pp. 1-12. https://doi.org/10.1109/tim.2023.3276513

APA

An, K., Lu, J., Zhu, Q., Wang, X., De Silva, C. W., Xia, M., & Lu, S. (2023). Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network. IEEE Transactions on Instrumentation and Measurement, 72, 1-12. Article 3516912. https://doi.org/10.1109/tim.2023.3276513

Vancouver

An K, Lu J, Zhu Q, Wang X, De Silva CW, Xia M et al. Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network. IEEE Transactions on Instrumentation and Measurement. 2023 May 31;72:1-12. 3516912. Epub 2023 May 16. doi: 10.1109/tim.2023.3276513

Author

An, Kang ; Lu, Jingfeng ; Zhu, Quanjing et al. / Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network. In: IEEE Transactions on Instrumentation and Measurement. 2023 ; Vol. 72. pp. 1-12.

Bibtex

@article{c859137d48df439598fcfd03abc0a6bb,
title = "Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network",
abstract = "Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement of faulty motors, which minimizes the potential losses caused by motor faults. Deep learning (DL) methods have been intensively applied in motor fault diagnosis. Most DL algorithms need to be trained with sufficient computation resources on cloud or local servers. However, uploading the raw data and downloading the command instructions to the edge will cause inevitable time delays and security concerns. This article develops a DL algorithm based on efficient convolutional neural networks (ECNNs) that can be deployed on an edge computing node for real-time motor fault diagnosis and dynamic control. The effectiveness, efficiency, and robustness of the ECNN model have been validated by experiments, and the results indicate that the ECNN model can achieve 100% accuracy in recognition of ten types of motor conditions, with the inference time and memory usage less than 14 ms and 44 KiB, respectively. The comparison results demonstrate that the ECNN model yields higher accuracy than the classical shallow neural networks, and it also presents the advantages of smaller model volume, lower prediction time, and higher accuracy as compared with the DL models. The proposed method shows significant potential for practical application in real-time motor fault detection and control.",
keywords = "Electrical and Electronic Engineering, Instrumentation",
author = "Kang An and Jingfeng Lu and Quanjing Zhu and Xiaoxian Wang and {De Silva}, {Clarence W.} and Min Xia and Siliang Lu",
year = "2023",
month = may,
day = "31",
doi = "10.1109/tim.2023.3276513",
language = "English",
volume = "72",
pages = "1--12",
journal = "IEEE Transactions on Instrumentation and Measurement",
issn = "0018-9456",
publisher = "IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC",

}

RIS

TY - JOUR

T1 - Edge Solution for Real-time Motor Fault Diagnosis Based on Efficient Convolutional Neural Network

AU - An, Kang

AU - Lu, Jingfeng

AU - Zhu, Quanjing

AU - Wang, Xiaoxian

AU - De Silva, Clarence W.

AU - Xia, Min

AU - Lu, Siliang

PY - 2023/5/31

Y1 - 2023/5/31

N2 - Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement of faulty motors, which minimizes the potential losses caused by motor faults. Deep learning (DL) methods have been intensively applied in motor fault diagnosis. Most DL algorithms need to be trained with sufficient computation resources on cloud or local servers. However, uploading the raw data and downloading the command instructions to the edge will cause inevitable time delays and security concerns. This article develops a DL algorithm based on efficient convolutional neural networks (ECNNs) that can be deployed on an edge computing node for real-time motor fault diagnosis and dynamic control. The effectiveness, efficiency, and robustness of the ECNN model have been validated by experiments, and the results indicate that the ECNN model can achieve 100% accuracy in recognition of ten types of motor conditions, with the inference time and memory usage less than 14 ms and 44 KiB, respectively. The comparison results demonstrate that the ECNN model yields higher accuracy than the classical shallow neural networks, and it also presents the advantages of smaller model volume, lower prediction time, and higher accuracy as compared with the DL models. The proposed method shows significant potential for practical application in real-time motor fault detection and control.

AB - Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement of faulty motors, which minimizes the potential losses caused by motor faults. Deep learning (DL) methods have been intensively applied in motor fault diagnosis. Most DL algorithms need to be trained with sufficient computation resources on cloud or local servers. However, uploading the raw data and downloading the command instructions to the edge will cause inevitable time delays and security concerns. This article develops a DL algorithm based on efficient convolutional neural networks (ECNNs) that can be deployed on an edge computing node for real-time motor fault diagnosis and dynamic control. The effectiveness, efficiency, and robustness of the ECNN model have been validated by experiments, and the results indicate that the ECNN model can achieve 100% accuracy in recognition of ten types of motor conditions, with the inference time and memory usage less than 14 ms and 44 KiB, respectively. The comparison results demonstrate that the ECNN model yields higher accuracy than the classical shallow neural networks, and it also presents the advantages of smaller model volume, lower prediction time, and higher accuracy as compared with the DL models. The proposed method shows significant potential for practical application in real-time motor fault detection and control.

KW - Electrical and Electronic Engineering

KW - Instrumentation

U2 - 10.1109/tim.2023.3276513

DO - 10.1109/tim.2023.3276513

M3 - Journal article

VL - 72

SP - 1

EP - 12

JO - IEEE Transactions on Instrumentation and Measurement

JF - IEEE Transactions on Instrumentation and Measurement

SN - 0018-9456

M1 - 3516912

ER -