Jf. Doherty et Rj. Mammone, AN ADAPTIVE ALGORITHM FOR STABLE DECISION-FEEDBACK FILTERING, IEEE transactions on circuits and systems. 2, Analog and digital signal processing, 40(1), 1993, pp. 1-9
A new method of decision-feedback filtering is introduced in this pape
r. The new method is shown to be particularly well suited for data tha
t have undergone spectral nulling. The lack of spectral content causes
a large eigenvalue spread of the data correlation matrix. This condit
ion has deleterious effects on the performance of conventional adaptiv
e algorithms, primarily numerical instability and noise amplification.
This paper presents an adaptive decision-feedback equalizer update al
gorithm that does not have these undesirable properties. The algorithm
calculates an iterative regularized inverse solution for the decision
-feedback equalizer coefficients and applies appropriate attenuation (
regularization) at frequencies lacking signal energy. This automatic e
stimation of the significant signal components is an improvement over
other methods that use matrix arithmetic to perform the same task. The
other features of the algorithm are linear computational complexity a
nd fast tracking capability. Simulation results are presented that com
pare the algorithm to the conventional LMS and RLS algorithms for frac
tionally spaced decision-feedback filtering of a time-varying multipat
h communication channel.