Title :
Second-order adaptive Volterra system identification based on discrete nonlinear Wiener model
Author :
Ogunfunmi, T. ; Chang, S.-L.
Author_Institution :
Dept. of Electr. Eng., Santa Clara Univ., CA, USA
fDate :
2/1/2001 12:00:00 AM
Abstract :
The authors present the nonlinear LMS adaptive filtering algorithm based on the discrete nonlinear Wiener (1942) model for second-order Volterra system identification application. The main approach is to perform a complete orthogonalisation procedure on the truncated Volterra series. This allows the use of the LMS adaptive linear filtering algorithm for calculating all the coefficients with efficiency. This orthogonalisation method is based on the nonlinear discrete Wiener model. It contains three sections: a single-input multi-output linear with memory section, a multi-input, multi-output nonlinear no-memory section and a multi-input, single-output amplification and summary section. For a white Gaussian noise input signal, the autocorrelation matrix of the adaptive filter input vector can be diagonalised unlike when using the Volterra model. This dramatically reduces the eigenvalue spread and results in more rapid convergence. Also, the discrete nonlinear Wiener model adaptive system allows us to represent a complicated Volterra system with only few coefficient terms. In general, it can also identify the nonlinear system without over-parameterisation. A theoretical performance analysis of steady-state behaviour is presented. Computer simulations are also included to verify the theory
Keywords :
Gaussian noise; MIMO systems; Volterra series; Wiener filters; adaptive filters; adaptive signal processing; correlation methods; eigenvalues and eigenfunctions; filtering theory; identification; least mean squares methods; matrix algebra; nonlinear filters; white noise; LMS adaptive linear filtering algorithm; MIMO; adaptive filter input vector; autocorrelation matrix; coefficients; computer simulations; convergence; discrete nonlinear Wiener model; eigenvalue spread reduction; multi-input multi-output nonlinear section; multi-input single-output amplification; nonlinear LMS adaptive filtering algorithm; nonlinear system identification; orthogonalisation procedure; performance analysis; second-order adaptive Volterra system identification; single-input multi-output linear; single-input multi-output section; steady-state behaviour; truncated Volterra series; white Gaussian noise input signal;
Journal_Title :
Vision, Image and Signal Processing, IEE Proceedings -
DOI :
10.1049/ip-vis:20010137