Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear systems.\ud Design/methodology/approach – The analysis is based on the bilinear and polynomial representation of nonlinear systems and the exact solution of the bilinear system in terms of Volterra series. Two sets of Krylov subspaces are identified which capture the most essential part of the input-output behaviour of the system.\ud Findings – The paper proposes two novel model-reduction strategies for nonlinear systems. The first involves the development, in a novel manner compared with previous approaches, of a reduced-order model from a bilinear representation of the system, while the second involves reducing a polynomial approximation usin...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
\u3cp\u3eA novel Krylov subspace method is proposed to substantially reduce the computational comple...
In general, model reduction techniques fall into two categories — moment —matching and Krylov techni...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of engineerin...
Abstract – For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of...
AbstractWe discuss Krylov-subspace based model reduction techniques for nonlin-ear control systems. ...
AbstractIn this paper we study numerical methods for the model-order reduction of large-scale biline...
AbstractA Krylov subspace based projection method is presented for model reduction of large scale bi...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
\u3cp\u3eA novel Krylov subspace method is proposed to substantially reduce the computational comple...
In general, model reduction techniques fall into two categories — moment —matching and Krylov techni...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
Purpose – The paper is aimed at the development of novel model reduction techniques for nonlinear sy...
For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of engineerin...
Abstract – For efficient simulation of state-of-the-art dynamical systems as arise in all aspects of...
AbstractWe discuss Krylov-subspace based model reduction techniques for nonlin-ear control systems. ...
AbstractIn this paper we study numerical methods for the model-order reduction of large-scale biline...
AbstractA Krylov subspace based projection method is presented for model reduction of large scale bi...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
A novel Krylov subspace method is proposed to substantially reduce the computational complexity of t...
\u3cp\u3eA novel Krylov subspace method is proposed to substantially reduce the computational comple...
In general, model reduction techniques fall into two categories — moment —matching and Krylov techni...