We 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
In the analysis of uncertain systems, we often search for a worst case perturbation that drives the ...
The concept of dynamic programming was originally used in late 1949, mostly during the 1950s, by Ric...
Dynamic systems operate under the simultaneous influence of both the initial conditions and the inpu...
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...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
Thesis (Ph.D.)--University of Washington, 2018Many applications in decision-making use a dynamic opt...
Differential Dynamic Programming is an optimal control technique often used for trajectory generatio...
AbstractThis paper concerns a discrete-time Markov decision model with an infinite planning horizon....
This paper considers sequential decision making problems under uncertainty, the tradeoff between the...
Dynamic programming is a means of optimising sequential decision processes. It is based on Bellman's...
Problems involving optimal sequential making in uncertain dynamic systems arise in domains such as e...
The author studies the exact (best possible) rate of approximability of an uncertain or control syst...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
In this paper, we propose a new tractable framework for dealing with linear dynamical systems affect...
In the analysis of uncertain systems, we often search for a worst case perturbation that drives the ...
The concept of dynamic programming was originally used in late 1949, mostly during the 1950s, by Ric...
Dynamic systems operate under the simultaneous influence of both the initial conditions and the inpu...
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...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
Thesis (Ph.D.)--University of Washington, 2018Many applications in decision-making use a dynamic opt...
Differential Dynamic Programming is an optimal control technique often used for trajectory generatio...
AbstractThis paper concerns a discrete-time Markov decision model with an infinite planning horizon....
This paper considers sequential decision making problems under uncertainty, the tradeoff between the...
Dynamic programming is a means of optimising sequential decision processes. It is based on Bellman's...
Problems involving optimal sequential making in uncertain dynamic systems arise in domains such as e...
The author studies the exact (best possible) rate of approximability of an uncertain or control syst...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
In this paper, we propose a new tractable framework for dealing with linear dynamical systems affect...
In the analysis of uncertain systems, we often search for a worst case perturbation that drives the ...
The concept of dynamic programming was originally used in late 1949, mostly during the 1950s, by Ric...
Dynamic systems operate under the simultaneous influence of both the initial conditions and the inpu...