Early Bearing Fault Diagnosis of Rotating Machinery by 1d Self-Organized Operational Neural Networks

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Date

2021

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE-Inst Electrical Electronics Engineers Inc

Open Access Color

GOLD

Green Open Access

Yes

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Publicly Funded

No
Impulse
Top 10%
Influence
Top 10%
Popularity
Top 10%

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Journal Issue

Abstract

Preventive maintenance of modern electric rotating machinery (RM) is critical for ensuring reliable operation, preventing unpredicted breakdowns and avoiding costly repairs. Recently many studies investigated machine learning monitoring methods especially based on Deep Learning networks focusing mostly on detecting bearing faults; however, none of them addressed bearing fault severity classification for early fault diagnosis with high enough accuracy. 1D Convolutional Neural Networks (CNNs) have indeed achieved good performance for detecting RM bearing faults from raw vibration and current signals but did not classify fault severity. Furthermore, recent studies have demonstrated the limitation in terms of learning capability of conventional CNNs attributed to the basic underlying linear neuron model. Recently, Operational Neural Networks (ONNs) were proposed to enhance the learning capability of CNN by introducing non-linear neuron models and further heterogeneity in the network configuration. In this study, we propose 1D Self-organized ONNs (Self-ONNs) with generative neurons for bearing fault severity classification and providing continuous condition monitoring. Experimental results over the benchmark NSF/IMS bearing vibration dataset using both x- and y-axis vibration signals for inner race and rolling element faults demonstrate that the proposed 1D Self-ONNs achieve significant performance gap against the state-of-the-art (1D CNNs) with similar computational complexity.

Description

Keywords

Neurons, Computational modeling, Vibrations, Training, Convolutional neural networks, Convolution, Mathematical models, Convolutional neural networks, operational neural networks, early bearing fault detection, fault severity classification, condition monitoring of rotating elements, machine health monitoring, Motors, Signal, Model, FOS: Computer and information sciences, Failure analysis, Computer Science - Machine Learning, Computer Science - Artificial Intelligence, operational neural networks, Convolutional neural network, Machine health monitoring, 113, Preventive maintenance, Machine Learning (cs.LG), Bearing fault detection, Early bearing fault detection, Fault severity classification, Neurons, Rotating machinery, machine health monitoring, Deep learning, 113 Computer and information sciences, Operational neural network, Convolution, 620, Condition monitoring, TK1-9971, Computer aided diagnosis, condition monitoring of rotating elements, Benchmarking, Artificial Intelligence (cs.AI), Bearing fault, Condition monitoring of rotating element, Neural-networks, early bearing fault detection, Convolutional neural networks, Electrical engineering. Electronics. Nuclear engineering, Fault severities, fault severity classification, Fault detection, Neural networks

Fields of Science

02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering

Citation

WoS Q

Q2

Scopus Q

Q1
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OpenCitations Citation Count
22

Source

Ieee Access

Volume

9

Issue

Start Page

139260

End Page

139270
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Citations

Scopus : 33

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Mendeley Readers : 41

SCOPUS™ Citations

33

checked on Mar 16, 2026

Web of Science™ Citations

24

checked on Mar 16, 2026

Page Views

7

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Downloads

20

checked on Mar 16, 2026

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OpenAlex FWCI
3.4524

Sustainable Development Goals

9

INDUSTRY, INNOVATION AND INFRASTRUCTURE
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