Probabilistic learning on manifolds constrained by nonlinear partial differential equations for small datasets
Christian Soize, Roger Ghanem

TL;DR
This paper extends Probabilistic Learning on Manifolds (PLoM) to solve nonlinear stochastic PDEs with small datasets, enabling efficient generation of solution realizations constrained by PDE residual minimization.
Contribution
It introduces a novel PDE-constrained PLoM framework that synthesizes solutions to nonlinear stochastic PDEs using limited data and residual minimization techniques.
Findings
Successfully applied to nonlinear dynamical systems with uncertainties.
Validated on Navier-Stokes equations with stochastic Reynolds number.
Demonstrated effectiveness on 3D elastic structure dynamics.
Abstract
A novel extension of the Probabilistic Learning on Manifolds (PLoM) is presented. It makes it possible to synthesize solutions to a wide range of nonlinear stochastic boundary value problems described by partial differential equations (PDEs) for which a stochastic computational model (SCM) is available and depends on a vector-valued random control parameter. The cost of a single numerical evaluation of this SCM is assumed to be such that only a limited number of points can be computed for constructing the training dataset (small data). Each point of the training dataset is made up realizations from a vector-valued stochastic process (the stochastic solution) and the associated random control parameter on which it depends. The presented PLoM constrained by PDE allows for generating a large number of learned realizations of the stochastic process and its corresponding random control…
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