Title of article :
Signal Detection for MIMO-ISI Channels: An Iterative Greedy Improvement Approach
Author/Authors :
Y. Wu and S.-Y. Kung، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
In this paper,we consider the signal detection for multiple
input–multiple output intersymbol interference (MIMO-ISI)
channels with diverse assumptions on the channel knowledge:
perfect, blind, trained, etc. This general problem is cast into a
unifying Bayesian statistics framework.With this formulation, the
optimal detector is the one maximizing the posterior signal density
[marginal maximum a posteriori (MAP)]. Since the marginal MAP
is hard to deal with, a joint MAP formulation is proposed as a
reasonable substitute that maximizes the posterior joint signal
and channel density. It is also shown that for independent and
identically distributed (i.i.d.) signals, the two formulations will
lead to very close results. The joint MAP formulation leads to
an iterative projection algorithm that alternates between the
optimization over channel parameters and signaling matrices.
The bottleneck of iterative projections is on the finite-alphabet
constrained quadratic minimization. We show that the notion of
error decomposition can be bridged with greedy optimizations to
construct iterative greedy search algorithms and examine their
performance. A particularization, called full greedy search, is
shown to be able to reach the global optimum (maximum likelihood
solutions) starting with any initialization. Since potential constraints
in computational complexity may prohibit the application
of this version of greedy search, we explore the performance (loss)
for greedy search implementations with complexity constraints,
arriving at deterministic performance bounds and a bit-error
rate (BER) upper bound. The effect of model imprecision is also
theoretically characterized.
Based on the theoretical development, an iterative local optimization
with interference cancellation (LOIC) algorithm is proposed
to achieve lowcomplexity and exploit the finite alphabet constraint.
Motivated by the Sylvester structure, it approximates the
full greedy search by focusing on local error sequences. It can also
be regarded as a flexible interference cancellation strategy with
noncausal information and iterative computations. An empirical
comparison of detectors with perfect channel knowledge demonstrated
that the proposed LOIC algorithms can offer very attractive
BER/complexity tradeoffs.
Keywords :
Bayesian statistics , BER analysis , channel imprecision , greedy search , interferencecancellation , MIMO systems , signal detection. , indecomposable error sequences
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING