The aim of this paper is to present a general machine learning approach to the identification of nonlinear systems, using the observed input-output finite datasets. The approach is derived representing the input and output signals in the feature space by the principal component analysis (PCA), thus transforming the nonlinear time dependent identification problem to the regression of a nonlinear input-output function. To face this problem an effective machine learning technique based on particle-Bernstein polynomials has been used to model the input-output relationship that describes the system. The approach has been validated by identifying two real world nonlinear systems, in the fields of speech signals and nonlinear audio amplifiers
\u3cp\u3eIn this paper we discuss how to identify a mathematical model for a (non)linear dynamic sys...
金沢大学理工研究域機械工学系This paper describes a convenient method of identification of nonlinear vibration syst...
A computationally efficient artificial neural network (ANN) for the purpose of dynamic nonlinear sys...
The paper presents two learning methods for nonlinear system identification. Both methods employ neu...
Polynomials have shown to be useful basis functions in the identification of nonlinear systems. Howe...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
The paper summarizes some results of nonlinear system modelling and identification. Connectionswith ...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
Abstract: In the note several algorithms for nonlinear system identification are presented. The clas...
Identification and Control of Non‐linear dynamical systems are challenging problems to the control e...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
System identification (SI) is the discipline of inferring mathematical models from unknown dynamic s...
Motivated by neuronal models from neuroscience, we consider the system identification of simple feed...
The identification of a nonlinear dynamic model is an open topic in control theory, especially from ...
\u3cp\u3eIn this paper we discuss how to identify a mathematical model for a (non)linear dynamic sys...
金沢大学理工研究域機械工学系This paper describes a convenient method of identification of nonlinear vibration syst...
A computationally efficient artificial neural network (ANN) for the purpose of dynamic nonlinear sys...
The paper presents two learning methods for nonlinear system identification. Both methods employ neu...
Polynomials have shown to be useful basis functions in the identification of nonlinear systems. Howe...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
The paper summarizes some results of nonlinear system modelling and identification. Connectionswith ...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
Abstract: In the note several algorithms for nonlinear system identification are presented. The clas...
Identification and Control of Non‐linear dynamical systems are challenging problems to the control e...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
System identification (SI) is the discipline of inferring mathematical models from unknown dynamic s...
Motivated by neuronal models from neuroscience, we consider the system identification of simple feed...
The identification of a nonlinear dynamic model is an open topic in control theory, especially from ...
\u3cp\u3eIn this paper we discuss how to identify a mathematical model for a (non)linear dynamic sys...
金沢大学理工研究域機械工学系This paper describes a convenient method of identification of nonlinear vibration syst...
A computationally efficient artificial neural network (ANN) for the purpose of dynamic nonlinear sys...