Dual control explicitly addresses the problem of trading off active exploration and exploitation in the optimal control of partially unknown systems. While the problem can be cast in the framework of stochastic dynamic programming, exact solutions are only tractable for discrete state and action spaces of very small dimension due to a series of nested minimization and expectation operations. We propose an approximate dual control method for systems with continuous state and input domain based on a rollout dynamic programming approach, splitting the control horizon into a dual and an exploitation part. The dual part is approximated using a scenario tree generated by sampling the process noise and the unknown system parameters, for which the ...
The discrete-time stochastic optimal control problem is approximated by a variation of differential ...
This article considers the stochastic optimal control of discrete-time linear systems subject to (po...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
International audienceThis paper focuses on online control policies applied to power systems managem...
Abstract: An approximate dynamic programming (ADP) strategy for a dual adaptive control problem is p...
Model Predictive Control has become a prevailing technique in practice by virtue of its natural incl...
Model Predictive Control is an extremely effective control method for systems with input and state c...
We present an adaptive dual model predictive controller (dmpc) that uses current and future paramete...
We propose a formulation for approximate constrained nonlinear output-feedback stochastic model pred...
In optimal control of uncertain systems, lack of crucial information about the system can lead to un...
In this paper we propose a stochastic model predictive control (MPC) formulation based on scenario g...
The presence of uncertainty in model predictive control (MPC) has been accounted for using two types...
Model predictive control (MPC) has demonstrated exceptional success for the high-performance control...
Abstract Many practical applications of control require that constraints on the inputs and states of...
The main topic of this thesis is control of dynamic systems that are subject to stochastic disturban...
The discrete-time stochastic optimal control problem is approximated by a variation of differential ...
This article considers the stochastic optimal control of discrete-time linear systems subject to (po...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
International audienceThis paper focuses on online control policies applied to power systems managem...
Abstract: An approximate dynamic programming (ADP) strategy for a dual adaptive control problem is p...
Model Predictive Control has become a prevailing technique in practice by virtue of its natural incl...
Model Predictive Control is an extremely effective control method for systems with input and state c...
We present an adaptive dual model predictive controller (dmpc) that uses current and future paramete...
We propose a formulation for approximate constrained nonlinear output-feedback stochastic model pred...
In optimal control of uncertain systems, lack of crucial information about the system can lead to un...
In this paper we propose a stochastic model predictive control (MPC) formulation based on scenario g...
The presence of uncertainty in model predictive control (MPC) has been accounted for using two types...
Model predictive control (MPC) has demonstrated exceptional success for the high-performance control...
Abstract Many practical applications of control require that constraints on the inputs and states of...
The main topic of this thesis is control of dynamic systems that are subject to stochastic disturban...
The discrete-time stochastic optimal control problem is approximated by a variation of differential ...
This article considers the stochastic optimal control of discrete-time linear systems subject to (po...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...