Kh. Chon et al., COMPARATIVE NONLINEAR MODELING OF RENAL AUTOREGULATION IN RATS - VOLTERRA APPROACH VERSUS ARTIFICIAL NEURAL NETWORKS, IEEE transactions on neural networks, 9(3), 1998, pp. 430-435
Volterra models have been increasingly popular in modeling studies of
nonlinear physiological systems. In this paper, feedforward artificial
neural networks with two types of activation functions (sigmoidal and
polynomial) are utilized for modeling the nonlinear dynamic relation
between renal blood pressure and pow data, and their performance is co
mpared to Volterra models obtained by use of the leading kernel estima
tion method based on Laguerre expansions. The results for the two type
s of artificial neural networks (sigmoidal and polynomial) and the Vol
terra models are comparable in terms of normalized mean-square error (
NMSE) of the respective output prediction for independent testing data
. However, the Volterra models obtained via the Laguerre expansion tec
hnique achieve this prediction NMSE with approximately half the number
of free parameters relative to either neural-network model. Nonethele
ss, both approaches are deemed effective in modeling nonlinear dynamic
systems and their cooperative use is recommended in general, since th
ey may exhibit different strengths and weaknesses depending on the spe
cific characteristics of each application.