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Analysis of Stability and Performance of
Adaptation Algorithms with Time-invariant Gains.
IEEE Transactions on Signal Processing, vol. 52,
Jan. 2004, pp. 103-116.
© IEEE
Anders Ahlén
,
Uppsala University
Lars Lindbom,
Ericsson Infotech and
Mikael Sternad
Uppsala University
Presentation slides (pdf).
A part of the paper,
Adaptation with Constant Gains: Analysis for Slow Variations.
by
L. Lindbom, M. Sternad and A. Ahlén,
is published at
IEEE
International Conference on Acoustics, Speech and Signal
Processing,
Salt Lake City, May 7-11 2001, pp. 3865-3868.
© IEEE
Another part,
Adaptation with Constant Gains: Analysis for Fast Variations.
by
L. Lindbom, M. Sternad and A. Ahlén
is published at
IEEE
International Conference on Acoustics, Speech and Signal
Processing,
Orlando, Florida, May 13-17, 2002, pp. II-1097-1100
© IEEE
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Outline:
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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 in used 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 results for the
analysis of stability, performance and
convergence in MSE, while
a companion paper
presents a novel Wiener
optimization of the structure and the gains of such
adaptation laws.
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 D-AMPS 1900 channels
and a case study on this application
can be found in
a related paper.
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Abstract:
-
Adaptation laws that
track parameters
of linear regression models are investigated.
The considered class of algorithms apply linear
time-invariant filtering on the instantaneous
gradient vector and includes LMS as its
simplest member.
The steady-state tracking performance
for prediction and smoothing estimates is
analyzed for parameter variations described
by stochastic processes with zero mean
and time-invariant statistics.
The analysis is based
on a novel technique that decomposes the inherent
feedback of adaptation algorithms into one
time-invariant loop and one time-varying loop.
The impact of the time-varying
feedback on the tracking error can be neglected
under certain conditions, and performance
analysis then becomes straightforward.
Performance analysis in the presence of a
non-negligible time-varying feedback is performed
for algorithms that use scalar measurements.
Convergence in MSE and the MSE tracking
performance is investigated assuming
independent consecutive regression vectors.
Closed-form expressions for the tracking MSE
are thereafter derived
without this independence assumption
for a subclass of algorithms
applied to FIR models with white inputs.
This class includes Wiener LMS adaptation.
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Related publications:
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Design
of the general constant-gain adaptation algorithms.
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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.
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Licenciate Thesis by Lars Lindbom,
on averaged Kalman designs (KLMS)
and on deterministic sinusoid modelling of fading channels.
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Sources:
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Conference version (ICASSP 2001):
Postscript, 123K ;
Pdf, 301K
Conference version (ICASSP 2002):
Postscript, 100K ;
Pdf, 425K
Slides (ICASSP 2002):
Postscript, 307K ;
Pdf, 208K
Slides:
Large presentation 2001 (pdf).
Paper:
Pdf, 419K ;
Postscript, manuscript, 422 K.
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