Padé Approximant Neural Networks for Enhanced Electric Motor Fault Diagnosis Using Vibration and Acoustic Data
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Date
2025
Authors
Kilickaya, Sertac
Eren, Levent
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Volume Title
Publisher
Springer Heidelberg
Open Access Color
Green Open Access
Yes
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Publicly Funded
No
Abstract
PurposeThe primary aim of this study is to enhance fault diagnosis in induction machines by leveraging the Pad & eacute; Approximant Neuron (PAON) model. While accelerometers and microphones are standard in motor condition monitoring, deep learning models with nonlinear neuron architectures offer promising improvements in diagnostic performance. This research investigates whether Pad & eacute; Approximant Neural Networks (Pad & eacute;Nets) can outperform conventional Convolutional Neural Networks (CNNs) and Self-Organized Operational Neural Networks (Self-ONNs) in the diagnosis of electrical and mechanical faults from vibration and acoustic data.MethodsWe evaluate and compare the diagnostic capabilities of three deep learning architectures: one-dimensional CNNs, Self-ONNs, and Pad & eacute;Nets. These models are tested on the University of Ottawa's publicly available constant-speed induction motor datasets, which include both vibration and acoustic sensor data. The Pad & eacute;Net model is designed to introduce enhanced nonlinearity and is compatible with unbounded activation functions such as LeakyReLU.Results and ConclusionPad & eacute;Nets consistently outperformed the baseline models, achieving diagnostic accuracies of 99.96%, 98.26%, 97.61%, and 98.33% for accelerometers 1, 2, 3, and the acoustic sensor, respectively. The enhanced nonlinearity of Pad & eacute;Nets, together with their compatibility with unbounded activation functions, significantly improves fault diagnosis performance in induction motor condition monitoring.
Description
Keywords
Condition Monitoring, Fault Diagnosis, Pad É Approximant Neural Networks, Self-Organized Operational Neural Networks, Convolutional Neural Networks, Machine Learning, FOS: Computer and information sciences, Sound (cs.SD), Sound, FOS: Electrical engineering, electronic engineering, information engineering, Systems and Control (eess.SY), Systems and Control, Machine Learning (cs.LG)
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WoS Q
Q2
Scopus Q
Q2

OpenCitations Citation Count
N/A
Source
Journal of Vibration Engineering & Technologies
Volume
13
Issue
7
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