Model Order Reduction (MOR) methods enable reduction of the computation time when dealing with parametrized numerical models. Among these methods, the Proper Orthogonal Decomposition (POD) method seems to be a good candidate because of its simplicity and its accuracy. In the literature, the offline/online approach is generally applied but is not always required especially if the study focuses on the device without any coupling with others. In this paper, we propose a method to construct adaptively the reduced model while its utilization which limits the evaluations of the full model when appropriate. A stochastic magnetostatic example with 14 uncertain parameters is studied by applying the Monte Carlo simulation method to illustrate the pro...
This report analyzes and validates possible applications of some model reduction methods for direct ...
Structural stochastic analysis is vital to engineering. However, current material related uncertaint...
This Chapter introduces parameterized, or parametric, Model Order Reduction (pMOR). The Sections are...
To solve a parametric model in computational electromagnetics, the Finite Element method is often us...
Model order reduction methods, like the proper orthogonal decomposition (POD), enable to reduce dram...
In the domain of numerical computation, Model Order Reduction approaches are more and more frequentl...
Among the model order reduction techniques, the Proper Orthogonal Decomposition (POD) has shown its ...
Proper Orthogonal Decomposition (POD) has been successfully used to reduce the size of linear Finite...
In order to reduce the computation time and the memory resources required to solve an electromagneti...
The Proper Orthogonal Decomposition (POD) is an interesting approach to compress into a reduced basi...
The simulation of complex engineering structures built from magneto-rheological elastomers is a comp...
In this thesis, we are interested in making decision over a model of a dynamic system. We want to kn...
In this paper, reduced order modeling (ROM) based on the proper orthogonal decomposition (POD) are a...
In this Thesis, we are interested in making decision over a model of a dynamic system. We want to kn...
When simulating mechanical systems the flexibility of the components often has to be taken into acco...
This report analyzes and validates possible applications of some model reduction methods for direct ...
Structural stochastic analysis is vital to engineering. However, current material related uncertaint...
This Chapter introduces parameterized, or parametric, Model Order Reduction (pMOR). The Sections are...
To solve a parametric model in computational electromagnetics, the Finite Element method is often us...
Model order reduction methods, like the proper orthogonal decomposition (POD), enable to reduce dram...
In the domain of numerical computation, Model Order Reduction approaches are more and more frequentl...
Among the model order reduction techniques, the Proper Orthogonal Decomposition (POD) has shown its ...
Proper Orthogonal Decomposition (POD) has been successfully used to reduce the size of linear Finite...
In order to reduce the computation time and the memory resources required to solve an electromagneti...
The Proper Orthogonal Decomposition (POD) is an interesting approach to compress into a reduced basi...
The simulation of complex engineering structures built from magneto-rheological elastomers is a comp...
In this thesis, we are interested in making decision over a model of a dynamic system. We want to kn...
In this paper, reduced order modeling (ROM) based on the proper orthogonal decomposition (POD) are a...
In this Thesis, we are interested in making decision over a model of a dynamic system. We want to kn...
When simulating mechanical systems the flexibility of the components often has to be taken into acco...
This report analyzes and validates possible applications of some model reduction methods for direct ...
Structural stochastic analysis is vital to engineering. However, current material related uncertaint...
This Chapter introduces parameterized, or parametric, Model Order Reduction (pMOR). The Sections are...