Optimal design of acoustic metamaterial cloaks under uncertainty

P Chen, MR Haberman, O Ghattas - Journal of Computational Physics, 2021 - Elsevier
In this work, we consider the problem of optimal design of an acoustic cloak under
uncertainty and develop scalable approximation and optimization methods to solve this …

Risk-averse PDE-constrained optimization using the conditional value-at-risk

DP Kouri, TM Surowiec - SIAM Journal on Optimization, 2016 - SIAM
Uncertainty is inevitable when solving science and engineering application problems. In the
face of uncertainty, it is essential to determine robust and risk-averse solutions. In this work …

A quasi-Monte Carlo method for optimal control under uncertainty

PA Guth, V Kaarnioja, FY Kuo, C Schillings… - SIAM/ASA Journal on …, 2021 - SIAM
We study an optimal control problem under uncertainty, where the target function is the
solution of an elliptic partial differential equation with random coefficients, steered by a …

Reduced basis methods for uncertainty quantification

P Chen, A Quarteroni, G Rozza - SIAM/ASA Journal on Uncertainty …, 2017 - SIAM
In this work we review a reduced basis method for the solution of uncertainty quantification
problems. Based on the basic setting of an elliptic partial differential equation with random …

Mean-variance risk-averse optimal control of systems governed by PDEs with random parameter fields using quadratic approximations

A Alexanderian, N Petra, G Stadler, O Ghattas - SIAM/ASA Journal on …, 2017 - SIAM
We present a method for optimal control of systems governed by partial differential
equations (PDEs) with uncertain parameter fields. We consider an objective function that …

[图书][B] Preconditioning and the conjugate gradient method in the context of solving PDEs

J Málek, Z Strakoš - 2014 - SIAM
Our times can be characterized by, among many other attributes, the seemingly increasing
speed of everything. Within science, it has led to the publication explosion, which reflects the …

Existence and optimality conditions for risk-averse PDE-constrained optimization

DP Kouri, TM Surowiec - SIAM/ASA Journal on Uncertainty Quantification, 2018 - SIAM
Uncertainty is ubiquitous in virtually all engineering applications, and, for such problems, it is
inadequate to simulate the underlying physics without quantifying the uncertainty in …

Semiglobal optimal feedback stabilization of autonomous systems via deep neural network approximation

K Kunisch, D Walter - ESAIM: Control, Optimisation and Calculus of …, 2021 - esaim-cocv.org
A learning approach for optimal feedback gains for nonlinear continuous time control
systems is proposed and analysed. The goal is to establish a rigorous framework for …

Inexact objective function evaluations in a trust-region algorithm for PDE-constrained optimization under uncertainty

DP Kouri, M Heinkenschloss, D Ridzal… - SIAM Journal on …, 2014 - SIAM
This paper improves the trust-region algorithm with adaptive sparse grids introduced in
[SIAM J. Sci. Comput., 35 (2013), pp. A1847--A1879] for the solution of optimization …

Complexity analysis of stochastic gradient methods for PDE-constrained optimal control problems with uncertain parameters

M Martin, S Krumscheid, F Nobile - ESAIM: Mathematical Modelling …, 2021 - esaim-m2an.org
We consider the numerical approximation of an optimal control problem for an elliptic Partial
Differential Equation (PDE) with random coefficients. Specifically, the control function is a …