Title :
Nonlinear FIR adaptive filters with a gradient adaptive amplitude in the nonlinearity
Author :
Hanna, Andrew I. ; Mandic, Danilo P.
Author_Institution :
Sch. of Inf. Syst., East Anglia Univ., Norwich, UK
Abstract :
A nonlinear gradient descent (NGD) learning algorithm with an adaptive amplitude of the nonlinearity is derived for the class of nonlinear finite impulse response (FIR) adaptive filters (dynamical perceptron). This is based on the adaptive amplitude backpropagation (AABP) algorithm for large-scale neural networks. The amplitude of the nonlinear activation function is made gradient adaptive to give the adaptive amplitude nonlinear gradient descent (AANGD) algorithm, making the AANGD suitable for processing nonlinear and nonstationary input signals with a large dynamical range. Experimental results show the AANGD algorithm outperforming the standard NGD algorithm on both colored and nonlinear input with large dynamics. Despite its simplicity, the considered algorithm proves suitable for adaptive filtering of nonlinear and nonstationary signals.
Keywords :
FIR filters; adaptive filters; backpropagation; gradient methods; neural nets; nonlinear filters; AABP algorithm; AANGD algorithm; NGD learning algorithm; adaptive amplitude; adaptive amplitude backpropagation algorithm; adaptive amplitude nonlinear gradient descent algorithm; colored input; dynamical perceptron; gradient adaptive amplitude; large-scale neural networks; nonlinear FIR adaptive filters; nonlinear activation function; nonlinear finite impulse response adaptive filters; nonlinear gradient descent learning algorithm; nonlinear input; nonlinear input signals; nonlinearity; nonstationary input signals; Adaptive filters; Backpropagation algorithms; Biomedical signal processing; Constraint optimization; Filtering algorithms; Finite impulse response filter; Large-scale systems; Neural networks; Signal processing; Signal processing algorithms;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2002.803001