Based on Volterra series the work presents a novel local nonlinear model of a certain class of linear-analytic systems. The special form of the expressions for the Laplace-domain Volterra kernels of such systems is exploited to obtain an approximation structure that results in an appealingly simple feed-forward block structure. It comprises a composition of the linearization and the multivariate nonlinear function of the original system. Although based on Volterra series the model does not involve a truncation in the power series expansion nor in the memory depths. Compared to the exponential increase in parameters of classical memory truncated Volterra models, the structure offers an economic parametrization. The model is shown to be linea...
Volterra and Wiener series are two classes of polynomial representations of nonlinear systems. They ...
In this work, multi-input multi-output (MIMO) nonlinear process identification is dealt with. In par...
Volterra series approximate a broad range of nonlinear systems. Their identification is challenging ...
Abstract—Based on Volterra series the work presents a novel local nonlinear model of a certain class...
The special form of the Laplace-domain Volterra kernels for linear-analytic systems is exploited to ...
Volterra series expansions are widely used in analysing and solving the problems of nonlinear dynami...
This paper describes a modeling approach for nonlinear dynamic systems based on a modified Volterra ...
This is a short tutorial on Volterra and Wiener series applications to modelling of nonlinear system...
International audienceIn this paper, the identification of a class of nonlinear systems which admits...
International audienceIn this paper, the identification of a class of nonlinear systems which admits...
Many methods for the analysis of nonlinear systems rely on a Volterra system-representation in terms...
Abstract—This paper presents a new method for the identifi-cation of frequency-domain Volterra kerne...
This paper describes a modeling approach for nonlinear dynamic systems based on a modified Volterra ...
The Volterra series model is a direct generalisation of the linear convolution integral and is capab...
International audienceDiscrete-time Volterra models are widely used in various application areas. Th...
Volterra and Wiener series are two classes of polynomial representations of nonlinear systems. They ...
In this work, multi-input multi-output (MIMO) nonlinear process identification is dealt with. In par...
Volterra series approximate a broad range of nonlinear systems. Their identification is challenging ...
Abstract—Based on Volterra series the work presents a novel local nonlinear model of a certain class...
The special form of the Laplace-domain Volterra kernels for linear-analytic systems is exploited to ...
Volterra series expansions are widely used in analysing and solving the problems of nonlinear dynami...
This paper describes a modeling approach for nonlinear dynamic systems based on a modified Volterra ...
This is a short tutorial on Volterra and Wiener series applications to modelling of nonlinear system...
International audienceIn this paper, the identification of a class of nonlinear systems which admits...
International audienceIn this paper, the identification of a class of nonlinear systems which admits...
Many methods for the analysis of nonlinear systems rely on a Volterra system-representation in terms...
Abstract—This paper presents a new method for the identifi-cation of frequency-domain Volterra kerne...
This paper describes a modeling approach for nonlinear dynamic systems based on a modified Volterra ...
The Volterra series model is a direct generalisation of the linear convolution integral and is capab...
International audienceDiscrete-time Volterra models are widely used in various application areas. Th...
Volterra and Wiener series are two classes of polynomial representations of nonlinear systems. They ...
In this work, multi-input multi-output (MIMO) nonlinear process identification is dealt with. In par...
Volterra series approximate a broad range of nonlinear systems. Their identification is challenging ...