Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach for solving multistage optimization problems have been investigated. One popular way to address this issue is the Stochastic Dual Dynamic Programming method (SDDP) introduced by Perreira and Pinto in 1991 for Markov Decision Processes.Assuming that the value function is convex (for a minimization problem), one builds a non-decreasing sequence of lower (or outer) convex approximations of the value function. Those convex approximations are constructed as a supremum of affine cuts. On continuous time deterministic optimal control problems, assuming that the value function is semiconvex, Zheng Qu, inspired by the work of McEneaney, introduced in 2...
The focus of the present volume is stochastic optimization of dynamical systems in discrete time whe...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Stochastic optimal control addresses sequential decision-making under uncertainty. As applications l...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
International audienceWe consider discrete time optimal control problems with finite horizon involvi...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Abstract In this paper, we study multistage stochastic mixed-integer nonlinear programs...
The paper suggests a possible cooperation between stochastic programming and optimal control for the...
We consider a class of multistage stochastic linear programs in which at each stage a coherent risk ...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
International audienceRisk-averse multistage stochastic programs appear in multiple areas and are ch...
The focus of the present volume is stochastic optimization of dynamical systems in discrete time whe...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Stochastic optimal control addresses sequential decision-making under uncertainty. As applications l...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
International audienceWe consider discrete time optimal control problems with finite horizon involvi...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Abstract In this paper, we study multistage stochastic mixed-integer nonlinear programs...
The paper suggests a possible cooperation between stochastic programming and optimal control for the...
We consider a class of multistage stochastic linear programs in which at each stage a coherent risk ...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
International audienceRisk-averse multistage stochastic programs appear in multiple areas and are ch...
The focus of the present volume is stochastic optimization of dynamical systems in discrete time whe...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Stochastic optimal control addresses sequential decision-making under uncertainty. As applications l...