This monograph systematically presents the existing identification
methods of nonlinear systems using the block-oriented approach It
surveys various known approaches to the identification of Wiener and
Hammerstein systems which are applicable to both neural network and
polynomial models. The book gives a comparative study of their gradient
approximation accuracy, computational complexity, and convergence rates
and furthermore presents some new and original methods concerning the
model parameter adjusting with gradient-based techniques.
"Identification of Nonlinear Systems Using Neural Networks and Polynomal
Models" is useful for researchers, engineers and graduate students in
nonlinear systems and neural network theory.