International Journal of applied mathematics and computer science

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Paper details

Number 2 - June 2004
Volume 14 - 2004

Linear-wavelet networks

Roberto K.H. Galvão, Victor M. Becerra, João M.F. Calado, Pedro M. Silva

Abstract
This paper proposes a nonlinear regression structure comprising a wavelet network and a linear term. The introduction of the linear term is aimed at providing a more parsimonious interpolation in high-dimensional spaces when the modeling samples are sparse. A constructive procedure for building such structures, termed linear-wavelet networks, is described. For illustration, the proposed procedure is employed in the framework of dynamic system identification. In an example involving a simulated fermentation process, it is shown that a linear-wavelet network yields a smaller approximation error when compared with a wavelet network with the same number of regressors. The proposed technique is also applied to the identification of a pressure plant from experimental data. In this case, the results show that the introduction of wavelets considerably improves the prediction ability of a linear model. Standard errors on the estimated model coefficients are also calculated to assess the numerical conditioning of the identification process.

Keywords
wavelet networks, nonlinear models, regression analysis, system identification