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Fault diagnosis of nonlinear analog circuits using generalized frequency response function and LSSVM
by
Zhang, Jialiang
, Yang, Yaowang
in
Accuracy
/ Algorithms
/ Analog circuits
/ Circuits
/ Computer and Information Sciences
/ Computer Simulation
/ Diagnostic imaging
/ Engineering and Technology
/ Estimation accuracy
/ Fault diagnosis
/ Fourier transforms
/ Frequency dependence
/ Frequency response functions
/ Health aspects
/ Least-Squares Analysis
/ Medical diagnosis
/ Methods
/ Models, Theoretical
/ Nonlinear Dynamics
/ Nonlinear response
/ Physical Sciences
/ Research and Analysis Methods
/ Simulation methods
/ Support Vector Machine
/ Support vector machines
/ Technology application
/ Time domain analysis
/ Training
2024
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Fault diagnosis of nonlinear analog circuits using generalized frequency response function and LSSVM
by
Zhang, Jialiang
, Yang, Yaowang
in
Accuracy
/ Algorithms
/ Analog circuits
/ Circuits
/ Computer and Information Sciences
/ Computer Simulation
/ Diagnostic imaging
/ Engineering and Technology
/ Estimation accuracy
/ Fault diagnosis
/ Fourier transforms
/ Frequency dependence
/ Frequency response functions
/ Health aspects
/ Least-Squares Analysis
/ Medical diagnosis
/ Methods
/ Models, Theoretical
/ Nonlinear Dynamics
/ Nonlinear response
/ Physical Sciences
/ Research and Analysis Methods
/ Simulation methods
/ Support Vector Machine
/ Support vector machines
/ Technology application
/ Time domain analysis
/ Training
2024
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Do you wish to request the book?
Fault diagnosis of nonlinear analog circuits using generalized frequency response function and LSSVM
by
Zhang, Jialiang
, Yang, Yaowang
in
Accuracy
/ Algorithms
/ Analog circuits
/ Circuits
/ Computer and Information Sciences
/ Computer Simulation
/ Diagnostic imaging
/ Engineering and Technology
/ Estimation accuracy
/ Fault diagnosis
/ Fourier transforms
/ Frequency dependence
/ Frequency response functions
/ Health aspects
/ Least-Squares Analysis
/ Medical diagnosis
/ Methods
/ Models, Theoretical
/ Nonlinear Dynamics
/ Nonlinear response
/ Physical Sciences
/ Research and Analysis Methods
/ Simulation methods
/ Support Vector Machine
/ Support vector machines
/ Technology application
/ Time domain analysis
/ Training
2024
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Fault diagnosis of nonlinear analog circuits using generalized frequency response function and LSSVM
Journal Article
Fault diagnosis of nonlinear analog circuits using generalized frequency response function and LSSVM
2024
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Overview
A fault diagnosis method of nonlinear analog circuits is proposed that combines the generalized frequency response function (GFRF) and the simplified least squares support vector machine (LSSVM). In this study, the harmonic signal is used as an input to estimate the GFRFs. To improve the estimation accuracy, the GFRFs of an analog circuit are solved directly using time-domain data. The Fourier transform of the time-domain data is avoided. After obtaining the fault features, a multi-fault classifier is designed based on the LSSVM. In order to improve the training speed and reduces storage, a simplified LSSVM model is used to construct the classifier, and the conjugate gradient algorithm is used for training. The fault diagnosis simulation experiment is conducted on a biquad filter circuit to verify the proposed method. The experimental results show that the proposed method has high diagnostic accuracy and short training time.
Publisher
Public Library of Science,Public Library of Science (PLoS)
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