|
Derivation and Design of Wiener Filters Using
Polynomial Equations
A Ahlén and
M Sternad
In C T Leondes, ed: Control and Dynamic Systems,
Vol 64: Stochastic Techniques in Digital Signal Processing
Systems,
pp 353-418, Academic Press, New York, NY, 1994.
- Outline:
-
In this chapter, a polynomial approach to filter design is presented.
Our goal is to demonstrate its utility in
the area of signal processing and communications. By studying
specific model structures, considerable engineering insight
can be gained.
- Abstract:
-
Minimization of mean-square error criteria by linear filters is
considered. We focus on the
optimization of realizable discrete-time
IIR-filters, to be used for prediction,
filtering or smoothing of signals.
Stochastic models of possibly complex-valued signals
are assumed known.
The basis for our discussion is a general linear filtering problem,
outlined in Section 2. In Section 3,
it is discussed how the classical Wiener
and inner-outer factorization approaches relate to
the polynomial methods, based on variational arguments
and completing the squares. The purpose of this discussion
is not only to compare advantages and drawbacks, but also to
emphasize similarities, and to link and increase understanding
of the different viewpoints. To understand how
they relate to one another, design equations for a simple scalar
filtering problem are derived using each approach.
The polynomial approach, based on variational arguments,
is then used to study a collection of signal processing and
communications problems in Sections 4-6.
We discuss deconvolution (Section 4),
numerical differentiation and state estimation (Section 5)
and decision feedback equalization (Section 6).
The selected special problems have features of general interest:
multisignal estimation (Section 4),
discrete time design based on a continuous
time problem formulation (Section 5),
and the approximation of a problem involving a static
nonlinearity by a linear-quadratic problem (Section 6).
A summarizing discussion of
characteristics and suitability of the polynomial
approach is found in Section 7.
- Contents:
- 1. Introduction
- 2. A set of filtering problems
- 3. Derivation methods
- 4. Multisignal deconvolution
- 5. Differentiation and state estimation
- 6. Decision feedback equalization
- 7. Concluding discussion
- Appendix A: Scalar polynomial Diophantine equations
- Appendix B: Unstable models
- Appendix C: Polynomial matrix Diophantine equations
- Appendix D: Matlab algorithms for filter design.
- Related publications:
-
Paper in IEEE Trans. AC 1995,
on a probabilistic approach to multivariable robust
filtering and open-loop control.
Paper in IEEE Trans. SP 1991 on
Wiener filter design using polynomial equations.
Paper in IEEE Trans. ASSP 1989 on
design of scalar deconvolution estimators.
Paper in IEEE Trans. SP 1991 on
the differentiating filters of Chapter 5.
Paper in IEEE Trans. IT 1990 on
the decision feedback equalizer of Chapter 6.
Later book chapter
(Springer 1996), which includes also robust design.
- Source:
-
Chapter
In Pdf
|
Related research
|
Main entry in publ. lists
|
|