International audienceIn this paper, we present a probabilistic numerical algorithm combining dynamic programming, Monte Carlo simulations, and local basis regressions to solve nonstationary optimal multiple switching problems in infinite horizon. We provide the rate of convergence of the method in terms of the time step used to discretize the problem, of the regression basis used to approximate conditional expectations, and of the truncating time horizon. To make the method viable for problems in high dimension and long time horizon, we extend a memory reduction method to the general Euler scheme, so that, when performing the numerical resolution, the storage of the Monte Carlo simulation paths is not needed. Then, we apply this algorithm ...
This work is dedicated to the exploration of commonly used and development of new advanced stochasti...
In this paper a framework based on the decomposition of the first-order optimality conditions is des...
International audienceManagement of electricity production to control cost while satisfying demand, ...
International audienceIn this paper, we present a probabilistic numerical algorithm combining dynami...
AbstractIn this paper, we study probabilistic numerical methods based on optimal quantization algori...
Title: One step towards a high-dimensional probabilistic investment model in electricity generation ...
In this paper, we study probabilistic numerical methods based on optimal quantization algorithms for...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
A switching max-plus linear model is a framework to describe the discrete dynamics of the timing of ...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Abstract. A dynamic (multi-stage) stochastic programming model for the weekly cost-optimal generatio...
© 2016 IEEE. In practice, optimal control problems of stochastic switching are notoriously challengi...
We consider the problem of optimal switching with finite horizon. This special case of stochastic im...
A dynamic (multi-stage) stochastic programming model for the weekly cost-optimal generation of elect...
This work is dedicated to the exploration of commonly used and development of new advanced stochasti...
In this paper a framework based on the decomposition of the first-order optimality conditions is des...
International audienceManagement of electricity production to control cost while satisfying demand, ...
International audienceIn this paper, we present a probabilistic numerical algorithm combining dynami...
AbstractIn this paper, we study probabilistic numerical methods based on optimal quantization algori...
Title: One step towards a high-dimensional probabilistic investment model in electricity generation ...
In this paper, we study probabilistic numerical methods based on optimal quantization algorithms for...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
A switching max-plus linear model is a framework to describe the discrete dynamics of the timing of ...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Abstract. A dynamic (multi-stage) stochastic programming model for the weekly cost-optimal generatio...
© 2016 IEEE. In practice, optimal control problems of stochastic switching are notoriously challengi...
We consider the problem of optimal switching with finite horizon. This special case of stochastic im...
A dynamic (multi-stage) stochastic programming model for the weekly cost-optimal generation of elect...
This work is dedicated to the exploration of commonly used and development of new advanced stochasti...
In this paper a framework based on the decomposition of the first-order optimality conditions is des...
International audienceManagement of electricity production to control cost while satisfying demand, ...