posted on 2009-12-04, 09:05authored byLeilei Li, Jonathon Chambers
In this paper a new adaptive leakage factor variable tap-length
learning algorithm is proposed. Through analysis the converged
difference between the segmented mean square error
(MSE) of a filter formed from a number of the initial coefficients
of an adaptive filter, and the MSE of the full adaptive
filter, is confirmed as a function of the tap-length of the adaptive
filter to be monotonically non-increasing. This analysis
also provides a systematic way to select the key parameters
in the fractional tap-length (FT) learning algorithm, first proposed
by Gong and Cowan, to ensure convergence to permit
calculation of the true tap-length of the unknown system and
motivates the need for adaptation in the leakage factor during
learning. A new strategy for adaptation of the leakage factor
is therefore developed to satisfy these requirements with both
small and large initial tap-length. Simulation results are presented
which confirm the advantages of the proposed scheme
over the original FT scheme.
History
School
Mechanical, Electrical and Manufacturing Engineering
Citation
LI, L., and CHAMBERS, J.A., 2008. A novel adaptive leakage factor scheme for enhancement of a variable tap-length learning algorithm. IN: Proceedings of 2008 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP 2008), Las Vegas, Nevada, 31 March-4 April, pp. 3837-3840.