Title :
Multiplication-free radial basis function network
Author :
Heiss, Michael ; Kampl, S.
Author_Institution :
Inst. fur Allgemeine Elekrotechnik-Automobilelektronik, Vienna Univ. of Technol., Vienna, Austria
fDate :
11/1/1996 12:00:00 AM
Abstract :
For the purpose of adaptive function approximation, a new radial basis function network is proposed which is nonlinear in its parameters. The goal is to reduce significantly the computational effort for a serial processor, by avoiding multiplication in both the evaluation of the function model and the computation of the parameter adaptation. The approximation scheme makes use of a grid-based Gaussian basis function network. Due to the local support of digitally implemented Gaussian functions the function representation is parametric local and therefore well suited for an online implementation on a microcomputer. A gradient descent based nonlinear learning algorithm is presented and the convergence of the algorithm is proved
Keywords :
conjugate gradient methods; feedforward neural nets; function approximation; learning (artificial intelligence); adaptive function approximation; computational effort; convergence; digitally implemented Gaussian functions; gradient descent based nonlinear learning algorithm; grid-based Gaussian basis function network; microcomputer; multiplication-free radial basis function network; serial processor; Adaptive control; Computational modeling; Convergence; Function approximation; Fuzzy control; Microcomputers; Nonlinear control systems; Programmable control; Radial basis function networks; Spline;
Journal_Title :
Neural Networks, IEEE Transactions on