This paper presents a probabilistic upscaling of mechanics models. A reduced-order probabilistic model is constructed as a coarse-scale representation of a specified fine-scale model whose probabilistic structure can be accurately determined. Equivalence of the fine- and coarse-scale representations is identified such that a reduction in the requisite degrees of freedom can be achieved while accuracy in certain quantities of interest is maintained. A significant stochastic model reduction can a priori be expected if a separation of spatial and temporal scales exists between the fine- and coarse-scale representations. The upscaling of probabilistic models is subsequently formulated as an optimization problem suitable for practical computatio...
International audienceA nonparametric probabilistic approach for modeling uncertainties in projectio...
Recent approaches to stochastic model reduction have followed the balancing approach introduced by M...
International audienceThe research addressed here concerns the construction of a stochastic reduced-...
In this work we present an upscaling technique for multi-scale computations based on a stochastic mo...
Multi-scale processes governed on each scale by separate principles for evolution or equilibrium are...
We present a computational framework based on stochastic expansion methods for the efficient propaga...
The thesis provides a detailed analysis of the independence structure possessed by multiscale models...
This work deals with an extension of the reducedorder models (ROMs) that are classically constructed...
Coupled problems with various combinations of multiple physics, scales, and domains are found in num...
International audienceThis paper deals with the broad-band frequency analysis of complex systems, ch...
International audienceA priori model reduction methods based on separated representations are introd...
This work presents a framework for upscaling uncertainty in multiscale models. The problem is releva...
We present a comparative study of two methods for the reduction of the dimensionality of a system o...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
International audienceWe present the construction of a multilevel stochastic reduced-order model dev...
International audienceA nonparametric probabilistic approach for modeling uncertainties in projectio...
Recent approaches to stochastic model reduction have followed the balancing approach introduced by M...
International audienceThe research addressed here concerns the construction of a stochastic reduced-...
In this work we present an upscaling technique for multi-scale computations based on a stochastic mo...
Multi-scale processes governed on each scale by separate principles for evolution or equilibrium are...
We present a computational framework based on stochastic expansion methods for the efficient propaga...
The thesis provides a detailed analysis of the independence structure possessed by multiscale models...
This work deals with an extension of the reducedorder models (ROMs) that are classically constructed...
Coupled problems with various combinations of multiple physics, scales, and domains are found in num...
International audienceThis paper deals with the broad-band frequency analysis of complex systems, ch...
International audienceA priori model reduction methods based on separated representations are introd...
This work presents a framework for upscaling uncertainty in multiscale models. The problem is releva...
We present a comparative study of two methods for the reduction of the dimensionality of a system o...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
International audienceWe present the construction of a multilevel stochastic reduced-order model dev...
International audienceA nonparametric probabilistic approach for modeling uncertainties in projectio...
Recent approaches to stochastic model reduction have followed the balancing approach introduced by M...
International audienceThe research addressed here concerns the construction of a stochastic reduced-...