AbstractWe generalise the optimisation technique of dynamic programming for discrete-time systems with an uncertain gain function. We assume that uncertainty about the gain function is described by an imprecise probability model, which generalises the well-known Bayesian, or precise, models. We compare various optimality criteria that can be associated with such a model, and which coincide in the precise case: maximality, robust optimality and maximinity. We show that (only) for the first two an optimal feedback can be constructed by solving a Bellman-like equation
Abstract: We consider a dynamic programming approach for solving optimal control problems of sampled...
Abstract In this paper, we propose a new methodology for handling opti-mization problems with uncert...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
We generalise the optimisation technique of dynamic programming for discrete-time systems with an un...
AbstractWe generalise the optimisation technique of dynamic programming for discrete-time systems wi...
We generalise the optimisation technique of dynamic programming for discrete-time systems with an un...
We study the applicability of the method of Dynamic Programming (DP) for the solution of a general c...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
The robustness analysis of nonlinear discrete-time systems is presented. The nominal plant is suppos...
In this paper, approximate dynamic programming (ADP) problems are modeled by discounted infinite-hor...
Abstract: The paper gives a general definition of guaranteeing cost strategy for uncertain dynamical...
—An optimal control problem for dynamical systems with uncertainty is considered. In con-trast to th...
We consider some problems of optimal control with discrete time where some parameters are fixed but ...
Consider a random permutation of a finite number $n$ of known elements representing rewards. These r...
We propose a framework of robust approximate dynamic programming (robust-ADP), which is aimed at com...
Abstract: We consider a dynamic programming approach for solving optimal control problems of sampled...
Abstract In this paper, we propose a new methodology for handling opti-mization problems with uncert...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
We generalise the optimisation technique of dynamic programming for discrete-time systems with an un...
AbstractWe generalise the optimisation technique of dynamic programming for discrete-time systems wi...
We generalise the optimisation technique of dynamic programming for discrete-time systems with an un...
We study the applicability of the method of Dynamic Programming (DP) for the solution of a general c...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
The robustness analysis of nonlinear discrete-time systems is presented. The nominal plant is suppos...
In this paper, approximate dynamic programming (ADP) problems are modeled by discounted infinite-hor...
Abstract: The paper gives a general definition of guaranteeing cost strategy for uncertain dynamical...
—An optimal control problem for dynamical systems with uncertainty is considered. In con-trast to th...
We consider some problems of optimal control with discrete time where some parameters are fixed but ...
Consider a random permutation of a finite number $n$ of known elements representing rewards. These r...
We propose a framework of robust approximate dynamic programming (robust-ADP), which is aimed at com...
Abstract: We consider a dynamic programming approach for solving optimal control problems of sampled...
Abstract In this paper, we propose a new methodology for handling opti-mization problems with uncert...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...