Seminar: Stochastic Modeling for Physics-Consistent Uncertainty Quantification on Constrained Spaces - Dec. 2
Johann Guilleminot
Assistant Professor of Civil and Environmental Engineering, Duke University
Friday, Dec. 2 | 10:40 A.M. | AERO 120
Abstract: In this talk, we discuss the construction of admissible, physics-consistent and identiļ¬able stochastic models for uncertainty quantiļ¬cation.
We ļ¬rst consider a continuum mechanics setting where variables and ļ¬elds take values in constrained spaces (the positive-deļ¬nite cone or the interior of a simplex in Rn, for instance) and are indexed by complex geometries described by nonconvex sets. These constraints arise in many problems ranging from simulations on parts produced by additive manufacturing to multiscale analyses with stochastic connected phases. We present theoretical and computational procedures to ensure well-posedness and generate representations deļ¬ned by arbitrary transport maps. We provide results pertaining to modeling, sampling, and statistical inverse identiļ¬cation for various applications including additive manufacturing, phase-ļ¬eld fracture modeling, multiscale analyses on nonlinear microstructures, and patient-speciļ¬c computations on soft biological tissues.
We next address the case of model uncertainties in atomistic simulations. The modeling of such uncertainties raises many challenges associated with the proper randomization of operators in highly nonlinear dynamical systems. We present a new modeling framework where model inaccuracy is captured through the construction of a stochastic reduced-order basis. Leveraging standard and recent results from optimization on manifolds, we show that linear constraints are indeed preserved through Riemannian pushforward and pullback operators to and from the tangent space to the manifold. This property allows us to derive a probabilistic representation that is easy to interpret, to sample, and to identify. In particular, the ability to constraint the FrĀ“echet mean on the manifold is demonstrated. Numerical examples on graphene-based systems are ļ¬nally presented to illustrate the relevance of the proposed approach.
Bio: Dr. Johann C. Guilleminot is an assistant professor of Civil and Environmental Engineering at Duke University (with a secondary appointment in Mechanical Engineering and Materials Science). Prior to that, he held a MaĖıtre de ConfĀ“erences position in the Multiscale Modeling and Simulation Laboratory, UMR 8208 CNRS, at UniversiteĀ“ Gustave Eiļ¬el (France).
He earned an MS (2005) in Mechanical Engineering and Materials Science from Institut Mines TĀ“elĀ“ecom Nord Europe, and an MS (2005) and PhD (2008) in Theoretical Mechanics from the University of Science and Technology in Lille (France). He received his Habilitation (2014) in Mechanics from UniversitĀ“e Paris-Est, with certiļ¬cations in Applied Mathematics and Mechanics.
Guilleminotās research focuses on computational mechanics, multiscale and multimodel (atomistic/continuum) methods and uncertainty quantiļ¬cation, as well as on topics at the interface between these ļ¬eldsāwith a broad range of applications ranging from the modelingrials and structures for aerospace and naval industries to patient-speciļ¬c simulations on biological tissues.