The quantification and propagation of mixed uncertain material parameters in the context of solid mechanical finite element simulations is studied. While aleatory uncertainties appear in terms of spatial varying parameters, i.e. random fields, the epistemic character is induced by a lack of knowledge regarding the correlation length, which is therefore described by interval values. The concept and description of the resulting imprecise random fields is introduced in detail. The challenges occurring from interval valued correlation lengths are clarified. These include mainly the stochastic dimension, which can become very high under some circumstances, as well as the comparability of different correlation length scenarios with regard to the ...
Most of the published literature in the area of uncertainty quantification of structural systems via...
The focus of this research is uncertainty modeling for problems with random geometry. This dissertat...
The classical uncertainty quantification approach models all uncertainty about a physical process in...
Considering an uncertain correlation length of the input random fields described by a Karhunen-Loève...
In recent years many methods, both probabilistic and non-probabilistic, were developped to deal with...
This paper discusses the application of interval fields for the analysis of uncertain mechanical str...
The present article considers the quantification of uncertainty for the equations of linear elastici...
This paper discusses the application of interval fields for the analysis of uncertain mechanical str...
Following a stochastic approach, this thesis presents a numerical framework for elastostatics of ran...
Many materials and structures consist of numerous slender struts or fibers. Due to the manufacturing...
The representation of uncertainties that give rise to a spatially distributed influence is still a t...
The stochastic finite element method is a useful tool to calculate the response of systems subject t...
This thesis, done in collaboration with Cenaero, contributes to the MACOBIO project. It develops a n...
It is important to account for inherent variability in the material properties in the design and ana...
It is important to account for inherent variability in the material properties in the design and ana...
Most of the published literature in the area of uncertainty quantification of structural systems via...
The focus of this research is uncertainty modeling for problems with random geometry. This dissertat...
The classical uncertainty quantification approach models all uncertainty about a physical process in...
Considering an uncertain correlation length of the input random fields described by a Karhunen-Loève...
In recent years many methods, both probabilistic and non-probabilistic, were developped to deal with...
This paper discusses the application of interval fields for the analysis of uncertain mechanical str...
The present article considers the quantification of uncertainty for the equations of linear elastici...
This paper discusses the application of interval fields for the analysis of uncertain mechanical str...
Following a stochastic approach, this thesis presents a numerical framework for elastostatics of ran...
Many materials and structures consist of numerous slender struts or fibers. Due to the manufacturing...
The representation of uncertainties that give rise to a spatially distributed influence is still a t...
The stochastic finite element method is a useful tool to calculate the response of systems subject t...
This thesis, done in collaboration with Cenaero, contributes to the MACOBIO project. It develops a n...
It is important to account for inherent variability in the material properties in the design and ana...
It is important to account for inherent variability in the material properties in the design and ana...
Most of the published literature in the area of uncertainty quantification of structural systems via...
The focus of this research is uncertainty modeling for problems with random geometry. This dissertat...
The classical uncertainty quantification approach models all uncertainty about a physical process in...