Title of article :
Adaptive Asymptotic Bayesian Equalization Using a Signal Space Partitioning Technique
Author/Authors :
R.-J. Chen and W.-R. Wu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
The Bayesian solution is known to be optimal
for symbol-by-symbol equalizers; however, its computational
complexity is usually very high. The signal space partitioning
technique has been proposed to reduce complexity. It was shown
that the decision boundary of the equalizer consists of a set of
hyperplanes. The disadvantage of existing approaches is that
the number of hyperplanes cannot be controlled. In addition,
a state-search process, that is not efficient for time-varying
channels, is required to find these hyperplanes. In this paper, we
propose a new algorithm to remedy these problems. We propose
an approximate Bayesian criterion that allows the number of
hyperplanes to be arbitrarily set. As a consequence, a tradeoff can
be made between performance and computational complexity. In
many cases, the resulting performance loss is small, whereas the
computational complexity reduction can be large. The proposed
equalizer consists of a set of parallel linear discriminant functions
and a maximum operation. An adaptive method using stochastic
gradient descent has been developed to identify the functions. The
proposed algorithm is thus inherently applicable to time-varying
channels. The computational complexity of this adaptive algorithm
is low and suitable for real-world implementation.
Keywords :
Bayesian , adaptive , nonlinear equalizer.
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING