We describe a framework for solving nonlinear inverse problems in a random environment. Such problems arise, for instance, in the identification of parameters in a stochastic process or in a differential equation where the parameters themselves are random variables. The corresponding inverse problems can be treated by Tikhonov regularization in a stochastic setup. Both the solution and the data in such inverse problems can be random variables. As an example, the inverse problem considered here concerns the identification of the parameter relating the nucleation rate to the temperature field in a mesoscale model for crystal growth. The derivation of the mesoscale model from a microscale model by geometric averages is outlined in the first se...
International audienceThis paper presents new results allowing an unknown non-Gaussian positive-defi...
International audienceIn porous media physics, calibrating model parameters through experiments is a...
The parameters in a structure such as geometric and material properties are generally uncertain due ...
Invited LectureInternational audienceStructural Health Monitoring of complex structures has gained a...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
Parameter identification problems are formulated in a probabilistic language, where the randomness r...
The need to blend observational data and mathematical models arises in many applications and leads n...
SpringerReferenceInternational audienceThe statistical inverse problem for the experimental identifi...
The parameters to be identified are described as random variables, the randomness reflecting the unc...
In the framework of the statistical regularization method new algorithms of solving inverse problems...
We regard texture as a realization of a stochastic process defined on the square lattice. The model ...
International audienceThis paper is devoted to the construction and to the identification of a proba...
2018 Summer.Includes bibliographical references.In many disciplines, mathematical models such as dif...
International audienceThis paper presents a method to analyze the transitory response of complex and...
The paper deals with formulation and numerical solution of problems of identification of material pa...
International audienceThis paper presents new results allowing an unknown non-Gaussian positive-defi...
International audienceIn porous media physics, calibrating model parameters through experiments is a...
The parameters in a structure such as geometric and material properties are generally uncertain due ...
Invited LectureInternational audienceStructural Health Monitoring of complex structures has gained a...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
Parameter identification problems are formulated in a probabilistic language, where the randomness r...
The need to blend observational data and mathematical models arises in many applications and leads n...
SpringerReferenceInternational audienceThe statistical inverse problem for the experimental identifi...
The parameters to be identified are described as random variables, the randomness reflecting the unc...
In the framework of the statistical regularization method new algorithms of solving inverse problems...
We regard texture as a realization of a stochastic process defined on the square lattice. The model ...
International audienceThis paper is devoted to the construction and to the identification of a proba...
2018 Summer.Includes bibliographical references.In many disciplines, mathematical models such as dif...
International audienceThis paper presents a method to analyze the transitory response of complex and...
The paper deals with formulation and numerical solution of problems of identification of material pa...
International audienceThis paper presents new results allowing an unknown non-Gaussian positive-defi...
International audienceIn porous media physics, calibrating model parameters through experiments is a...
The parameters in a structure such as geometric and material properties are generally uncertain due ...