Wavelets in identification wavelets, splines, neurons, fuzzies : how good for identification - Inria - Institut national de recherche en sciences et technologies du numérique Access content directly
Reports (Research Report) Year : 1994

Wavelets in identification wavelets, splines, neurons, fuzzies : how good for identification

Anatoli B. Juditsky
Qinghua Zhang
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  • PersonId : 830741
Bernard Delyon
Albert Benveniste

Abstract

This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations of this approach are discussed from the engineer's point of view. Classical as well as modern techniques are discussed, this includes kernel and projection estimates, neural networks and hinging hyperplanes, and mainly wavelet estimators. Both practical and mathematical issues are investigated. Advantages and limitations of wavelet based techniques are emphazised. Finally we show how fuzzy models may play a role in this game, as a framework for expressing prior knowledge on the system. The whole material is illustrated on some application examples.

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Other [cs.OH]
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Dates and versions

inria-00074359 , version 1 (24-05-2006)

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  • HAL Id : inria-00074359 , version 1

Cite

Anatoli B. Juditsky, Qinghua Zhang, Bernard Delyon, Pierre-Yves Glorennec, Albert Benveniste. Wavelets in identification wavelets, splines, neurons, fuzzies : how good for identification. [Research Report] RR-2315, INRIA. 1994. ⟨inria-00074359⟩
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