We present a novel model reduction methodology for the approximation of large-scale nonlinear systems. The methodology stems from the need to find computationally efficient substitute models for nonlinear systems. The nonlinear system is viewed as a grey-box model with a mechanistic (first-principle) component and an empirical (black-box) component identified for the computationally intensive parts of the nonlinear system. The mechanistic part is approximated using proper orthogonal decompositions whereas the empirical part is identified as polynomial functions by parameter estimation using the reduced order mechanistic part
Modern structures of high flexibility are subject to physical or geometric nonlinearities, and relia...
Mathematical models of networked systems often take the form of a set of complex large-scale differe...
Abstract – For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of...
A novel model reduction methodology is proposed to approximate large-scale nonlinear dynamical syste...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
In the present contribution, it is shown that, in the case of mechanical systems where nonlinearitie...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Nonlinear state-space modelling is a very powerful black-box modelling approach. However powerful, t...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Mathematics, 1999.Includes bibliograp...
Mathematical models of networked systems usually take the form of large-scale, nonlinear differentia...
Model reduction techniques are often required in computationally tractable algorithms for the soluti...
Abstract: In this paper we introduce a new method of model reduction for nonlinear systems with inpu...
This paper describes the common framework for these approaches. It is pointed out that the nonlinear...
Modern structures of high flexibility are subject to physical or geometric nonlinearities, and relia...
Mathematical models of networked systems often take the form of a set of complex large-scale differe...
Abstract – For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of...
A novel model reduction methodology is proposed to approximate large-scale nonlinear dynamical syste...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
In the present contribution, it is shown that, in the case of mechanical systems where nonlinearitie...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Nonlinear state-space modelling is a very powerful black-box modelling approach. However powerful, t...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Mathematics, 1999.Includes bibliograp...
Mathematical models of networked systems usually take the form of large-scale, nonlinear differentia...
Model reduction techniques are often required in computationally tractable algorithms for the soluti...
Abstract: In this paper we introduce a new method of model reduction for nonlinear systems with inpu...
This paper describes the common framework for these approaches. It is pointed out that the nonlinear...
Modern structures of high flexibility are subject to physical or geometric nonlinearities, and relia...
Mathematical models of networked systems often take the form of a set of complex large-scale differe...
Abstract – For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of...