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Wiener Design of Adaptation Algorithms with
Time-invariant Gains.
IEEE Transactions on Signal Processing, vol. 50,
August 2002, pp 1895-1907.
© IEEE
Mikael Sternad,
,
Uppsala University
Lars Lindbom,
,
Ericsson Infotech
and
Anders Ahlén
,
Uppsala University
Presentation slides (pdf).
A brief version of the paper,
Iterative Wiener Design of Adaptation Laws with Constant Gains
by
A. Ahlén, M. Sternad and L. Lindbom,
is published at
IEEE
International Conference on Acoustics, Speech and Signal
Processing,
Salt Lake City, May 7-11 2001, pp. 3861-3864.
© IEEE
-
Outline:
-
When tracking time-varying parameters of
linear regression models, LMS is one of the
simplest adaptation laws, while Kalman
algorithms are the most powerful linear
estimators.
A third, intermediate, alternative
is proposed here:
The integration of
the instantaneous gradient vector used in LMS
is generalized to a linear time-invariant filter.
Well-tuned filters provide estimates
with an appropriate amount of coupling and
inertia, resulting in high performance
at low computational complexity.
We will here present a novel Wiener
optimization of the structure and the gains of such
adaptation laws, while
Part II
presents results for the
analysis of stability, performance and
convergence in MSE.
The paper includes an example on tracking
of time-varying radio channels in a 2 by 2 MIMO system.
The difficult problem of accurately tracking
time-varying radio channels in IS-136
cellular systems was an
original motivating application.
Here, LMS and RLS adaptation provide
inadequate performance while the use of
Kalman algorithms has so far been precluded,
due to their computational complexity.
An
early version
of the
proposed algorithm
has successfully been used
on IS 136 1900MHz channels
and a case study on this application
can be found in
a related paper.
-
Abstract:
-
A design method that extends LMS
adaptation by including general
time-invariant filters is presented.
The aim is to track
time-varying parameters
of linear regression models, in situations where
the regressors are stationary or have slowly
time-varying properties.
The structure and gain
of the adaptation law is
optimized for time-variations
modeled as vector-ARIMA processes.
The method can systematically use such
prior information to provide filtering,
prediction or fixed lag smoothing estimates for
arbitrary lags.
A linear time-invariant filter that
operates on the instantaneous gradient vector
is optimized with respect to the steady-state
parameter error covariance matrix.
Compared to
Kalman estimators, the channel tracking
performance becomes nearly the same
in mobile radio applications, while the
complexity is much lower.
The design method is based on a novel transformation
of the adaptation problem into a
Wiener filter design problem.
The filter works in open loop
for slow parameter variations
while a time-varying closed loop is important
for fast variations, where the filter
design is performed iteratively.
The general form of the
solution at each iteration is
obtained by a bilateral Diophantine
polynomial matrix
equation and a spectral factorization.
For white gradient noise,
the Diophantine equation has a closed form solution.
Further structural constraints
result in very simple design equations.
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Related publications:
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Analysis
of stability and performance, for slow and fast variations.
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The Wiener LMS
adaptation algorithm, a special case with low complexity.
-
A Case Study on IS-136 channels.
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PhD Thesis by Lars Lindbom.
-
Licenciate Thesis by Lars Lindbom,
on averaged Kalman designs (KLMS)
and on deterministic sinusoid modelling of fading channels.
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Conference paper (IFAC Como 2001)
on averaged robust design for uncertain fading models.
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Sources:
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Conference version (ICASSP 2001):
Postscript, 111K ;
Pdf, 317K
Paper (final version):
Postscript, 390K ;
Pdf, 446K
Personal use of this material is permitted.
However, permission to reprint/republish this material for
advertising or promotional purposes or for creating new
collective works for resale or redistribution to servers or lists,
or to reuse any copyrighted component of this work in other works
must be obtained from the IEEE.
-
Technical Report R001, September 2000:
Tracking of Time-varying Systems. Part I:
Wiener Design of Adaptation Algorithms with
Time-invariant Gains.
Postscript, 353K ;
Pdf, 331K
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