Abstract:
A fast, recursive least squares (RLS) adaptive nonlinear filter modeled using a second-order Volterra series expansion is presented. The structure uses the ideas of fast ...Show MoreMetadata
Abstract:
A fast, recursive least squares (RLS) adaptive nonlinear filter modeled using a second-order Volterra series expansion is presented. The structure uses the ideas of fast RLS multichannel filters, and has a computational complexity of O(N/sup 3/) multiplications, where N-1 represents the memory span in number of samples of the nonlinear system model. A theoretical performance analysis of its steady-state behaviour in both stationary and nonstationary environments is presented. The analysis shows that, when the input is zero mean and Gaussian distributed, and the adaptive filter is operating in a stationary environment, the steady-state excess mean-squared error due to the coefficient noise vector is independent of the statistics of the input signal. The results of several simulation experiments show that the filter performs well in a variety of situations. The steady-state behaviour predicted by the analysis is in very good agreement with the experimental results.<>
Published in: IEEE Transactions on Signal Processing ( Volume: 41, Issue: 3, March 1993)
DOI: 10.1109/78.205715
Advanced Technology Center, Computer and Communications Research Laboratories, Industrial Technology and Research Institute, Hsinchu, Taiwan
Department of Electrical Engineering, University of Utah, Salt Lake, UT, USA
Department of Electrical Engineering, University of Utah, Salt Lake, UT, USA
Advanced Technology Center, Computer and Communications Research Laboratories, Industrial Technology and Research Institute, Hsinchu, Taiwan
Department of Electrical Engineering, University of Utah, Salt Lake, UT, USA
Department of Electrical Engineering, University of Utah, Salt Lake, UT, USA