We present an adaptive grid refinement algorithm to solve probabilistic optimization problems with infinitely many random constraints. Using a bilevel approach, we iteratively aggregate inequalities that provide most information not in a geometric but in a probabilistic sense. This conceptual idea, for which a convergence proof is provided, is then adapted to an implementable algorithm. The efficiency of our approach when compared to naive methods based on uniform grid refinement is illustrated for a numerical test example as well as for a water reservoir problem with joint probabilistic filling level constraints
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Probabilistic guarantees on constraint satisfaction for robust counterpart optimization are studied ...
We present an adaptive grid refinement algorithm to solve probabilistic optimization problems with i...
5 pagesInternational audienceIn this paper, we propose a probabilistic optimization method, named pr...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
We propose a tractable approximation scheme for convex (not necessarily linear) multi-stage robust o...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
A new heuristic method is presented for solving a class of constrained probabilistic optimization pr...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
We consider a class of convex risk-neutral PDE-constrained optimization problems subject to pointwis...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Probabilistic guarantees on constraint satisfaction for robust counterpart optimization are studied ...
We present an adaptive grid refinement algorithm to solve probabilistic optimization problems with i...
5 pagesInternational audienceIn this paper, we propose a probabilistic optimization method, named pr...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
We propose a tractable approximation scheme for convex (not necessarily linear) multi-stage robust o...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
A new heuristic method is presented for solving a class of constrained probabilistic optimization pr...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
We consider a class of convex risk-neutral PDE-constrained optimization problems subject to pointwis...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Probabilistic guarantees on constraint satisfaction for robust counterpart optimization are studied ...