L. Yingwei et al., IDENTIFICATION OF TIME-VARYING NONLINEAR-SYSTEMS USING MINIMAL RADIALBASIS FUNCTION NEURAL NETWORKS, IEE proceedings. Control theory and applications, 144(2), 1997, pp. 202-208
Citations number
16
Categorie Soggetti
Controlo Theory & Cybernetics","Instument & Instrumentation","Engineering, Eletrical & Electronic","Robotics & Automatic Control
An identification algorithm for time-varying nonlinear systems using a
sequential learning scheme with a minimal radial basis function neura
l network (RBFNN) is presented. The learning algorithm combines the gr
owth criterion of the resource allocating network of Platt with a prun
ing strategy based on the relative contribution of each hidden unit of
the RBFNN to the overall network output. The performance of the algor
ithm is evaluated on the identification of nonlinear systems with both
fixed and time-varying dynamics and also on a static function approxi
mation problem. The nonlinear system with the fixed dynamics have been
studied extensively earlier by Chen and Billings and the study with t
he time-varying dynamics reported is new. For the identification of fi
xed dynamics case, the resulting RBFNN is shown to be more compact and
produces smaller output errors than the hybrid learning algorithm of
Chen and Billings. In the case of time-varying dynamics, the algorithm
is shown to adjust (add/drop) the hidden neurons of the RBFNN to 'ada
ptively track' the dynamics of the nonlinear system with a minimal RBF
network.