Nonlinear state-space modelling is a very powerful black-box modelling approach. However powerful, the resulting models tend to be complex, described by a large number of parameters. In many cases interpretability is preferred over complexity, making too complex models unfit or undesired. In this work, the complexity of such models is reduced by retrieving a more structured, parsimonious model from the data, without exploiting physical knowledge. Essential to the method is a translation of all multivariate nonlinear functions, typically found in nonlinear state-space models, into sets of univariate nonlinear functions. The latter is computed from a tensor decomposition. It is shown that typically an excess of degrees of freedom are used in ...
Abstract- In this paper we propose a method to model nonlinear multivariable systems. We will use a ...
In the present contribution, it is shown that, in the case of mechanical systems where nonlinearitie...
This is a demonstration of the PNLSS Toolbox 1.0. The toolbox is designed to identify polynomial non...
Nonlinear state-space modelling is a very powerful black-box modelling approach. However powerful, t...
peer reviewedRecent work on black-box polynomial nonlinear state-space modeling for hysteresis ident...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
peer reviewedHysteresis is a nonlinear effect that shows up in a wide variety of engineering and sci...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Abstract — This paper focuses on a state-space based ap-proach for the identification of a rather ge...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
We present a novel model reduction methodology for the approximation of large-scale nonlinear system...
Nonlinear parametric system identification is the estimation of nonlinear models of dynamical system...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
A novel model reduction methodology is proposed to approximate large-scale nonlinear dynamical syste...
Abstract- In this paper we propose a method to model nonlinear multivariable systems. We will use a ...
In the present contribution, it is shown that, in the case of mechanical systems where nonlinearitie...
This is a demonstration of the PNLSS Toolbox 1.0. The toolbox is designed to identify polynomial non...
Nonlinear state-space modelling is a very powerful black-box modelling approach. However powerful, t...
peer reviewedRecent work on black-box polynomial nonlinear state-space modeling for hysteresis ident...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
peer reviewedHysteresis is a nonlinear effect that shows up in a wide variety of engineering and sci...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Abstract — This paper focuses on a state-space based ap-proach for the identification of a rather ge...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
We present a novel model reduction methodology for the approximation of large-scale nonlinear system...
Nonlinear parametric system identification is the estimation of nonlinear models of dynamical system...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
A novel model reduction methodology is proposed to approximate large-scale nonlinear dynamical syste...
Abstract- In this paper we propose a method to model nonlinear multivariable systems. We will use a ...
In the present contribution, it is shown that, in the case of mechanical systems where nonlinearitie...
This is a demonstration of the PNLSS Toolbox 1.0. The toolbox is designed to identify polynomial non...