International audienceWe study the problem of receding horizon control for stochastic discrete-time systems with bounded control inputs and incomplete state information. Given a suitable choice of causal control policies, we first present a slight extension of the Kalman filter to estimate the state optimally in mean-square sense. We then show how to augment the underlying optimization problem with a negative drift-like constraint, yielding a second-order cone program to be solved periodically online. We prove that the receding horizon implementation of the resulting control policies renders the state of the overall system mean-square bounded under mild assumptions. We also discuss how some quantities required by the finite-horizon optimiza...
This article is concerned with stability and performance of controlled stochastic processes under re...
Chance constraints, unlike robust constraints, allow constraint violation up to some predefined leve...
A control strategy based on a mean-variance objective and expected value constraints is proposed for...
International audienceWe study the problem of receding horizon control for stochastic discrete-time ...
We study the problem of receding horizon control of stochastic discrete-time systems with bounded co...
Abstract. We provide a solution to the problem of receding horizon control for sto-chastic discrete-...
This paper deals with the nite horizon stochastic optimal control problem with the expectation of th...
boundedness, robust control, linear systems Abstract. In this thesis we study receding horizon contr...
International audienceA receding horizon control of discrete-time Markov jump linear systems with ad...
In this paper, we address finite-horizon control for a stochastic linear system subject to constrain...
Abstract-We address stability of receding horizon control for stochastic linear systems with additiv...
International audienceIn this article, we consider a receding horizon control of discrete-time state...
We demonstrate here that a necessary condition of optimality studied in a previous paper is in fact ...
International audienceThis paper addresses the problem of output feedback Model Predictive Control f...
We present Shrinking Horizon Model Predictive Control (SHMPC) for discrete-time linear systems with ...
This article is concerned with stability and performance of controlled stochastic processes under re...
Chance constraints, unlike robust constraints, allow constraint violation up to some predefined leve...
A control strategy based on a mean-variance objective and expected value constraints is proposed for...
International audienceWe study the problem of receding horizon control for stochastic discrete-time ...
We study the problem of receding horizon control of stochastic discrete-time systems with bounded co...
Abstract. We provide a solution to the problem of receding horizon control for sto-chastic discrete-...
This paper deals with the nite horizon stochastic optimal control problem with the expectation of th...
boundedness, robust control, linear systems Abstract. In this thesis we study receding horizon contr...
International audienceA receding horizon control of discrete-time Markov jump linear systems with ad...
In this paper, we address finite-horizon control for a stochastic linear system subject to constrain...
Abstract-We address stability of receding horizon control for stochastic linear systems with additiv...
International audienceIn this article, we consider a receding horizon control of discrete-time state...
We demonstrate here that a necessary condition of optimality studied in a previous paper is in fact ...
International audienceThis paper addresses the problem of output feedback Model Predictive Control f...
We present Shrinking Horizon Model Predictive Control (SHMPC) for discrete-time linear systems with ...
This article is concerned with stability and performance of controlled stochastic processes under re...
Chance constraints, unlike robust constraints, allow constraint violation up to some predefined leve...
A control strategy based on a mean-variance objective and expected value constraints is proposed for...