System identification (SI) is the discipline of inferring mathematical models from unknown dynamic systems using the input/output observations of such systems with or without prior knowledge of some of the system parameters. Many valid algorithms are available in the literature, including Volterra series expansion, Hammerstein–Wiener models, nonlinear auto-regressive moving average model with exogenous inputs (NARMAX) and its derivatives (NARX, NARMA). Different nonlinear estimators can be used for those algorithms, such as polynomials, neural networks or wavelet networks. This paper uses a different approach, named particle-Bernstein polynomials, as an estimator for SI. Moreover, unlike the mentioned algorithms, this approach does not oper...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
Development of dynamic state estimation techniques and their applications in problems of identificat...
This monograph is an exposition of a novel method for solving inverse problems, a method of paramete...
System identification (SI) is the discipline of inferring mathematical models from unknown dynamic s...
Polynomials have shown to be useful basis functions in the identification of nonlinear systems. Howe...
The problem of identifying parameters of nonlinear vibrating systems using spatially incomplete, no...
In this paper we propose an identification method of nonlinear system. This later can be structured ...
The calibration and validation of computational models depend critically on experimental measurement...
The aim of this paper is to present a general machine learning approach to the identification of non...
The analysis of a specific nonlinear system depends on having an accurate model of the system and an...
Nonlinear phenomena are widely encountered in practical applications. The presence of nonlinearity m...
The industrial demand on good dynamical simulation models is increasing. Since most structures show ...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
This paper proposes, on the basis of a rigorous mathematical formulation, a general framework that i...
Most nonlinear identification problems often require prior knowledge or an initial assumption of the...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
Development of dynamic state estimation techniques and their applications in problems of identificat...
This monograph is an exposition of a novel method for solving inverse problems, a method of paramete...
System identification (SI) is the discipline of inferring mathematical models from unknown dynamic s...
Polynomials have shown to be useful basis functions in the identification of nonlinear systems. Howe...
The problem of identifying parameters of nonlinear vibrating systems using spatially incomplete, no...
In this paper we propose an identification method of nonlinear system. This later can be structured ...
The calibration and validation of computational models depend critically on experimental measurement...
The aim of this paper is to present a general machine learning approach to the identification of non...
The analysis of a specific nonlinear system depends on having an accurate model of the system and an...
Nonlinear phenomena are widely encountered in practical applications. The presence of nonlinearity m...
The industrial demand on good dynamical simulation models is increasing. Since most structures show ...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
This paper proposes, on the basis of a rigorous mathematical formulation, a general framework that i...
Most nonlinear identification problems often require prior knowledge or an initial assumption of the...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
Development of dynamic state estimation techniques and their applications in problems of identificat...
This monograph is an exposition of a novel method for solving inverse problems, a method of paramete...