This paper considers the problem of finding optimal projection spaces for the calculation of reduced order models for distributed systems. The method of proper orthogonal decompositions is popular in the reduction of fluid dynamics models, but may become rather cumbersome for the reduction of systems in which the total dimension of physical variables is large. This paper aims to deal with this problem and proposes the construction of projection spaces from tensor representations of observed, measured or simulated data. The method is illustrated for the reduced order modeling of a tubular reactor
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
International audienceWe propose a projection-based model order reduction method for the solution of...
Many tasks of simulation, optimization and control can be performed more efficiently if the intermed...
This paper considers the problem of finding optimal projection spaces for the calculation of reduced...
Tensors are the natural mathematical objects to describe physical quantities that evolve over multip...
The method of Proper Orthogonal Decompositions (POD) is a data-based method that is suitable for the...
Abstract—This paper considers reduced order modeling of systems with multiple independent variables....
In this contribution we present an overview of some recent works carried out in our group to develop...
We provide first the functional analysis background required for reduced order modeling and present ...
In this paper, we describe some recent developments in the use of projection methods to produce redu...
This paper presents a new method of missing point estimation (MPE) to derive efficient reduced-order...
Signals that evolve over multiple variables or indices occur in all fields of science and engineerin...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
International audienceWe propose a projection-based model order reduction method for the solution of...
Many tasks of simulation, optimization and control can be performed more efficiently if the intermed...
This paper considers the problem of finding optimal projection spaces for the calculation of reduced...
Tensors are the natural mathematical objects to describe physical quantities that evolve over multip...
The method of Proper Orthogonal Decompositions (POD) is a data-based method that is suitable for the...
Abstract—This paper considers reduced order modeling of systems with multiple independent variables....
In this contribution we present an overview of some recent works carried out in our group to develop...
We provide first the functional analysis background required for reduced order modeling and present ...
In this paper, we describe some recent developments in the use of projection methods to produce redu...
This paper presents a new method of missing point estimation (MPE) to derive efficient reduced-order...
Signals that evolve over multiple variables or indices occur in all fields of science and engineerin...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
International audienceWe propose a projection-based model order reduction method for the solution of...
Many tasks of simulation, optimization and control can be performed more efficiently if the intermed...