Obtaining volterra kernels from neural networks

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Date

2007

Authors

Musa Hakan Asyali
Musa Alci

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Springer Verlag

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Green Open Access

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Abstract

Both neural networks (NN) and Volterra series (VS) are widely used in nonlinear dynamic system identification. In VS approach the system is modeled using a set of kernel functions that correspond to different order convolutions. Kernels in VS are typically estimated using an orthogonal expansion technique. In this study we discuss the method of obtaining VS representation of nonlinear systems from their NN models as an alternative approach and compare its modeling performances against the popular Laguerre basis expansion (LBE) technique. In LBE approach the critical issues are to select a suitable pole parameter and number of basis functions to be used in the expansions so that the kernels can be accurately represented. We devised novel approaches to address both issues the pole parameter is selected using a systematic optimization approach and the number of basis functions is decided using the minimum description length criterion. Our preliminary results on synthetic data indicate that when used with these provisions LBE yields more accurate kernels estimation results than the NN approach. However LBE is typically used without these provisions in literature. We demonstrate that with its typical use kernels estimated using the LBE approach can be quite misleading even though the estimation error may seem to be reasonable. Therefore we suggest the use NN approach as a reference method to confirm the morphology of the kernels estimated via other approaches including LBE. © 2020 Elsevier B.V. All rights reserved.

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Keywords

Enter Up To Five And Separate Them By Commas, Biomedical Engineering, Functions, Nonlinear Dynamical Systems, Poles, Enter Up To Five And Separate Them By Commas, Estimation Errors, Estimation Results, Minimum Description Length Criteria, Model Performance, Neural Network (nn), Orthogonal Expansion, Systematic Optimization, Dynamical Systems, Biomedical engineering, Functions, Nonlinear dynamical systems, Poles, Enter up to five and separate them by commas, Estimation errors, Estimation results, Minimum description length criteria, Model performance, Neural network (nn), Orthogonal expansion, Systematic optimization, Dynamical systems, Enter up to Five and Separate Them by Commas

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10th World Congress on Medical Physics and Biomedical Engineering WC 2006

Volume

14

Issue

1

Start Page

11

End Page

+
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Scopus : 1

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1

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