Non-linear and signal energy optimal asymptotic filter design

The paper studies some connections between the main results of the well known Wiener-Kalman-Bucy stochastic approach to filtering problems based mainly on the linear stochastic estimation theory and emphasizing the optimality aspects of the achieved results and the classical deterministic frequency...

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Main Authors: Josef Hrusak, Vaclav Cerny
Format: Article
Language:English
Published: International Institute of Informatics and Cybernetics 2003-10-01
Series:Journal of Systemics, Cybernetics and Informatics
Subjects:
Online Access:http://www.iiisci.org/Journal/CV$/sci/pdfs/P682951.pdf
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spelling doaj-2b7e7aff80c3428d9b21c8f672c1b2dc2020-11-24T23:34:37ZengInternational Institute of Informatics and CyberneticsJournal of Systemics, Cybernetics and Informatics1690-45242003-10-01155562Non-linear and signal energy optimal asymptotic filter designJosef Hrusak0Vaclav Cerny1 Department of Applied Electronics, University of West Bohemia Department of Cybernetics, University of West Bohemia The paper studies some connections between the main results of the well known Wiener-Kalman-Bucy stochastic approach to filtering problems based mainly on the linear stochastic estimation theory and emphasizing the optimality aspects of the achieved results and the classical deterministic frequency domain linear filters such as Chebyshev, Butterworth, Bessel, etc. A new non-stochastic but not necessarily deterministic (possibly non-linear) alternative approach called asymptotic filtering based mainly on the concepts of signal power, signal energy and a system equivalence relation plays an important role in the presentation. Filtering error invariance and convergence aspects are emphasized in the approach. It is shown that introducing the signal power as the quantitative measure of energy dissipation makes it possible to achieve reasonable results from the optimality point of view as well. The property of structural energy dissipativeness is one of the most important and fundamental features of resulting filters. Therefore, it is natural to call them asymptotic filters. The notion of the asymptotic filter is carried in the paper as a proper tool in order to unify stochastic and non-stochastic, linear and nonlinear approaches to signal filtering.http://www.iiisci.org/Journal/CV$/sci/pdfs/P682951.pdf signal energyconvergenceequivalencecausalityinvariancesignal powerstructure
collection DOAJ
language English
format Article
sources DOAJ
author Josef Hrusak
Vaclav Cerny
spellingShingle Josef Hrusak
Vaclav Cerny
Non-linear and signal energy optimal asymptotic filter design
Journal of Systemics, Cybernetics and Informatics
signal energy
convergence
equivalence
causality
invariance
signal power
structure
author_facet Josef Hrusak
Vaclav Cerny
author_sort Josef Hrusak
title Non-linear and signal energy optimal asymptotic filter design
title_short Non-linear and signal energy optimal asymptotic filter design
title_full Non-linear and signal energy optimal asymptotic filter design
title_fullStr Non-linear and signal energy optimal asymptotic filter design
title_full_unstemmed Non-linear and signal energy optimal asymptotic filter design
title_sort non-linear and signal energy optimal asymptotic filter design
publisher International Institute of Informatics and Cybernetics
series Journal of Systemics, Cybernetics and Informatics
issn 1690-4524
publishDate 2003-10-01
description The paper studies some connections between the main results of the well known Wiener-Kalman-Bucy stochastic approach to filtering problems based mainly on the linear stochastic estimation theory and emphasizing the optimality aspects of the achieved results and the classical deterministic frequency domain linear filters such as Chebyshev, Butterworth, Bessel, etc. A new non-stochastic but not necessarily deterministic (possibly non-linear) alternative approach called asymptotic filtering based mainly on the concepts of signal power, signal energy and a system equivalence relation plays an important role in the presentation. Filtering error invariance and convergence aspects are emphasized in the approach. It is shown that introducing the signal power as the quantitative measure of energy dissipation makes it possible to achieve reasonable results from the optimality point of view as well. The property of structural energy dissipativeness is one of the most important and fundamental features of resulting filters. Therefore, it is natural to call them asymptotic filters. The notion of the asymptotic filter is carried in the paper as a proper tool in order to unify stochastic and non-stochastic, linear and nonlinear approaches to signal filtering.
topic signal energy
convergence
equivalence
causality
invariance
signal power
structure
url http://www.iiisci.org/Journal/CV$/sci/pdfs/P682951.pdf
work_keys_str_mv AT josefhrusak nonlinearandsignalenergyoptimalasymptoticfilterdesign
AT vaclavcerny nonlinearandsignalenergyoptimalasymptoticfilterdesign
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