Stochastic optimal control problems with finite horizon are a class of optimal control problems where intervene stochastic processes in a bounded time. As many optimal control problems, they are often solved using a dynamic programming approach which results in a second order Partial Differential Equation (PDE) called the Hamilton-Jacobi-Bellman equation. Grid-based methods, probabilistic methods or more recently max-plus methods can be used then to solve this PDE. However, the first type of methods default in a space of high dimension because of the curse of dimensionality while the second type of methods allowed till now to solve only problems where the nonlinearity of the PDE with respect to the second order derivatives is not very high....
This thesis contains three parts that can be read independently. In the first part, we study the res...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
Discrete-time stochastic optimal control problems are stated over a finite number of decision stages...
Stochastic optimal control problems with finite horizon are a class of optimal control problems wher...
Also arXiv:1605.02816International audienceWe consider fully nonlinear Hamilton-Jacobi-Bellman equat...
International audienceIn a previous work, we introduced a lower complexity probabilistic max-plus nu...
The policy of an optimal control problem for nonlinear stochastic systems can be characterized by a ...
International audienceWe consider fully nonlinear Hamilton-Jacobi-Bellman equations associated to di...
International audienceAn infinite horizon stochastic optimal control problem with running maximum co...
Dynamic programming is one of the main approaches to solve optimal control problems. It reduces the ...
We study a maturity randomization technique for approximating optimal control problems. The algorith...
This thesis contains three parts that can be read independently. In the first part, we study the res...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
© 2014 IEEE. McEneaney introduced the curse of dimensionality free method for the special class of i...
This thesis contains three parts that can be read independently. In the first part, we study the res...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
Discrete-time stochastic optimal control problems are stated over a finite number of decision stages...
Stochastic optimal control problems with finite horizon are a class of optimal control problems wher...
Also arXiv:1605.02816International audienceWe consider fully nonlinear Hamilton-Jacobi-Bellman equat...
International audienceIn a previous work, we introduced a lower complexity probabilistic max-plus nu...
The policy of an optimal control problem for nonlinear stochastic systems can be characterized by a ...
International audienceWe consider fully nonlinear Hamilton-Jacobi-Bellman equations associated to di...
International audienceAn infinite horizon stochastic optimal control problem with running maximum co...
Dynamic programming is one of the main approaches to solve optimal control problems. It reduces the ...
We study a maturity randomization technique for approximating optimal control problems. The algorith...
This thesis contains three parts that can be read independently. In the first part, we study the res...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
© 2014 IEEE. McEneaney introduced the curse of dimensionality free method for the special class of i...
This thesis contains three parts that can be read independently. In the first part, we study the res...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
Discrete-time stochastic optimal control problems are stated over a finite number of decision stages...