This paper develops a new approach for identifying nonlinear representations of chaotic systems directly from noise-corrupted data. The nonlinear functional describing the process is constructed using a new multiresolution model structure implemented with B-spline wavelet and scaling functions.Following an iterative strategy, a sequence of model sets of increasing complexity are postulated and tested until a suitable model is found. An orthogonal-forward-regression routine coupled with model validity tests is used to select parsimonious wavelet models and to measure the quality of the fit. The effectiveness of the identification procedure is demonstrated using both simulated and experimental data. It is shown that the proposed method can pr...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
A new unified modelling framework based on the superposition of additive submodels, functional compo...
A new modelling framework for identifying and reconstructing chaotic systems is developed based on m...
A new approach for estimating linear and nonlinear continuous-time models directly from noisy observ...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
International audienceSatisfactory method of removing noise from experimental chaotic data is still ...
In this paper, classical surrogate data methods for testing hypotheses concerning nonlinearity in ti...
Wavelet based nonparametric additive models are considered for nonlinear system identification. Addi...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
A comparison between polynomial and wavelet expansions for the identification of coupled map lattice...
This paper introduces a new approach for the identification of coupled map lattice models of comple...
In this paper the identification and analysis of spatio-temporal dynamical systems is presented. An ...
This paper introduces a new approach for the local reconstruction of coupled map lattice (CML) model...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
A new unified modelling framework based on the superposition of additive submodels, functional compo...
A new modelling framework for identifying and reconstructing chaotic systems is developed based on m...
A new approach for estimating linear and nonlinear continuous-time models directly from noisy observ...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
International audienceSatisfactory method of removing noise from experimental chaotic data is still ...
In this paper, classical surrogate data methods for testing hypotheses concerning nonlinearity in ti...
Wavelet based nonparametric additive models are considered for nonlinear system identification. Addi...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
A comparison between polynomial and wavelet expansions for the identification of coupled map lattice...
This paper introduces a new approach for the identification of coupled map lattice models of comple...
In this paper the identification and analysis of spatio-temporal dynamical systems is presented. An ...
This paper introduces a new approach for the local reconstruction of coupled map lattice (CML) model...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
A new unified modelling framework based on the superposition of additive submodels, functional compo...