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Robust Wiener Design of Adaptation Laws with Constant Gains.
Mikael Sternad,
,
Uppsala University
Lars Lindbom,
,
Ericsson Infotech
and
Anders Ahlén
,
Uppsala University
IFAC Workshop on Adaptation and Learning in Control and
Signal Processing (ALCOSP 2001), Como, Italy, August 29-31 2001.
© IFAC 2001
Conference proceedings published in: Sergio Bittanti, ed,
Adaptation and Learning in Control and Signal Processing 2001.
ISBN: 0 08 043683 8, Elsevier Publishing, Sept. 2002.
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Abstract:
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Filters can be introduced into LMS-like
adaptation algoritms to improve their
tracking performance.
We here discuss the model-based design of
such filters when tracking coefficients of
linear regression models.
The
parameter variations are
modeled as ARIMA-processes which represent
prior information. The aim is to provide high
performance
filtering, prediction or fixed lag smoothing
for arbitrary lags.
Since the second order properties of the
time-varying parameters
are in general not known exactly,
a robust design for a set of possible models
will be of interest.
We present a method
that minimizes the average tracking MSE,
based on probabilistic descriptions of the
model uncertainty.
The method is based on a novel signal transformation
that recasts the algorithm design into a
Wiener problem with uncertain parameter model,
which is to be solved iteratively.
The performance is illustrated
on the tracking of time-varying mobile radio
channels in ANSI-136 systems, based on a
model of the time-variations affected by
parametric uncertainty.
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Related publications:
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Design
of the general constant-gain adaptation algorithms. (Complete report,
with proofs.)
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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.
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A Case Study on IS-136 channels.
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PhD Thesis by Lars Lindbom, 1995.
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Source:
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Preprint in Postscript, 239K
Preprint in Pdf, 240K
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Research on adaptation
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Research on robust filtering
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Main
entry in list of publications
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