Title of article
VERIFICATION OF AN EVOLUTIONARY-BASED WAVELET NEURAL NETWORK MODEL FOR NONLINEAR FUNCTION APPROXIMATION
Author/Authors
hashemi, s. m. a. ferdowsi university of mashhad - department of civil engineering , haji kazemi, h. ferdowsi university of mashhad - department of civil engineering , karamodin, a. ferdowsi university of mashhad - department of civil engineering
Pages
7
From page
1423
To page
1429
Abstract
Nonlinear function approximation is one of the most important tasks in system analysis and identification. Several models have been presented to achieve an accurate approximation on nonlinear mathematics functions. However, the majority of the models are specific to certain problems and systems. In this paper, an evolutionary-based wavelet neural network model is proposed for structure definition and optimization of nonlinear systems. The proposed model involves structure identification and also a parameter tuning phase to be adapted for modeling of an arbitrary system. The proposed structure and the learning algorithm are validated by comparing with some other most commonly used alternatives. The simulation shows the performance and adaptability of the proposed model in approximating multivariate nonlinear mathematics functions.
Keywords
Wavelet neural network , Evolutionary learning algorithm , Nonlinear function approximation
Journal title
Astroparticle Physics
Serial Year
2015
Record number
2440245
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