This talk is concerned with the optimization/design/control of complex systems character-
ized by high-dimensional uncertainties and design variables. While analogous problems in
a deterministic setting, and particularly in the context of PDE-based models, have been
extensively studied and several algorithmic tools have been developed, their extension to
stochastic settings poses several challenges. We discuss two alternative strategies. The first
is based on stochastic approximation tools [1]. We discuss Variational Bayesian approxima-
tions that enable the estimation of gradients in a manner that reduces the sampling noise and
the computational effort. The second approach reformulates the problems as one of prob-
abilistic inference [2] and employs sampling tools suitable for high-dimensions [3, 4]. We
are especially concerned with problems relating to random heterogeneous materials where
uncertainties arise from the stochastic variability of their properties.
«
This talk is concerned with the optimization/design/control of complex systems character-
ized by high-dimensional uncertainties and design variables. While analogous problems in
a deterministic setting, and particularly in the context of PDE-based models, have been
extensively studied and several algorithmic tools have been developed, their extension to
stochastic settings poses several challenges. We discuss two alternative strategies. The first
is based on stochastic approximation tools...
»