This work introduces a reduced order modeling (ROM) framework for the solution of parameterized second-order linear elliptic partial differential equations formulated on unfitted geometries. The goal is to construct efficient projection-based ROMs, which rely on techniques such as the reduced basis method and discrete empirical interpolation. The presence of geometrical parameters in unfitted domain discretizations entails challenges for the application of standard ROMs. Therefore, in this work we propose a methodology based on i) extension of snapshots on the background mesh and ii) localization strategies to decrease the number of reduced basis functions. The method we obtain is computationally efficient and accurate, while it is agnostic...
peer reviewedThis paper proposes a new reduced basis algorithm for the metamodelling of parametrised...
In the present paper the authors study second-order elliptic parametric partial differential equatio...
We provide first the functional analysis background required for reduced order modeling and present ...
The aim of this work is to solve parametrized partial differential equations in computational domain...
The aim of this work is to solve parametrized partial differential equations in computational domain...
In this work we combine the framework of the Reduced Basis method (RB) with the framework of the Loc...
The reduced basis method [1,2] is an increasingly popular reduced order modeling technique for param...
This contribution explores the combined capabilities of reduced basis methods and IsoGeometric Analy...
We present a new “hp” parameter multi-domain certified reduced basis method for rapid and reliable o...
In this work we propose a new, general and computationally cheap way to tackle parametrized PDEs def...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
In this contribution we present a survey of concepts in localized model order reduction methods for ...
This thesis proposes the use of Reduced Basis (RB) methods to improve the computational efficiency o...
We propose a component-based (CB) parametric model order reduction (pMOR) formulation for parameteri...
In this work we propose a new, general and computationally cheap way to tackle parametrized PDEs def...
peer reviewedThis paper proposes a new reduced basis algorithm for the metamodelling of parametrised...
In the present paper the authors study second-order elliptic parametric partial differential equatio...
We provide first the functional analysis background required for reduced order modeling and present ...
The aim of this work is to solve parametrized partial differential equations in computational domain...
The aim of this work is to solve parametrized partial differential equations in computational domain...
In this work we combine the framework of the Reduced Basis method (RB) with the framework of the Loc...
The reduced basis method [1,2] is an increasingly popular reduced order modeling technique for param...
This contribution explores the combined capabilities of reduced basis methods and IsoGeometric Analy...
We present a new “hp” parameter multi-domain certified reduced basis method for rapid and reliable o...
In this work we propose a new, general and computationally cheap way to tackle parametrized PDEs def...
Reduction strategies, such as model order reduction (MOR) or reduced basis (RB) methods, in scientif...
In this contribution we present a survey of concepts in localized model order reduction methods for ...
This thesis proposes the use of Reduced Basis (RB) methods to improve the computational efficiency o...
We propose a component-based (CB) parametric model order reduction (pMOR) formulation for parameteri...
In this work we propose a new, general and computationally cheap way to tackle parametrized PDEs def...
peer reviewedThis paper proposes a new reduced basis algorithm for the metamodelling of parametrised...
In the present paper the authors study second-order elliptic parametric partial differential equatio...
We provide first the functional analysis background required for reduced order modeling and present ...