This paper proposes and tests an approximation of the solution of a class of piecewise deterministic control problems, typically used in the modeling of manufacturing flow processes. This approximation uses a stochastic programming approach on a suitably discretized and sampled system. The method proceeds through two stages: (i) the Hamilton-Jacobi-Belman (HJB) dynamic programming equations for the finite horizon continuous time stochastic control problem are discretized over a set of sampled times; this defines an associated discrete time stochastic control problem which, due to the finiteness of the sample path set for the Markov disturbance process, can be written as a stochastic programming problem. (ii) The very large event tree repres...
In Chapter 2, we propose several two-timescale simulation-based actor-critic algorithms for solution...
AbstractThis paper is concerned with an asymptotic analysis of hierarchical production planning in a...
When dealing with numerical solution for stochastic optimal control problems, stochastic dynamic pro...
This paper proposes and tests an approximation of the solution of a class of piecewise deterministic...
We propose a numerical technique for approximately solving large-scale piecewise deterministic contr...
This paper deals with a general class of piecewise deterministic control systems that encompasses FM...
A control theoretic approach to some problems in manufacturing is examined. This approach is motivat...
In manufacturing and telecommunication systems we often encounter the situation that there are diffe...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
A heuristic algorithm is proposed for a class of stochastic discrete-time continuous-variable dynami...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
The main topic of this thesis is control of dynamic systems that are subject to stochastic disturban...
We consider both discrete and continuous “uncertain horizon ” deterministic control processes, for w...
Abstract. The stochastic versions of classical discrete optimal control problems are formulated and ...
Based on linear programming formulations for infinite horizon stochastic control problems, a numeric...
In Chapter 2, we propose several two-timescale simulation-based actor-critic algorithms for solution...
AbstractThis paper is concerned with an asymptotic analysis of hierarchical production planning in a...
When dealing with numerical solution for stochastic optimal control problems, stochastic dynamic pro...
This paper proposes and tests an approximation of the solution of a class of piecewise deterministic...
We propose a numerical technique for approximately solving large-scale piecewise deterministic contr...
This paper deals with a general class of piecewise deterministic control systems that encompasses FM...
A control theoretic approach to some problems in manufacturing is examined. This approach is motivat...
In manufacturing and telecommunication systems we often encounter the situation that there are diffe...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
A heuristic algorithm is proposed for a class of stochastic discrete-time continuous-variable dynami...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
The main topic of this thesis is control of dynamic systems that are subject to stochastic disturban...
We consider both discrete and continuous “uncertain horizon ” deterministic control processes, for w...
Abstract. The stochastic versions of classical discrete optimal control problems are formulated and ...
Based on linear programming formulations for infinite horizon stochastic control problems, a numeric...
In Chapter 2, we propose several two-timescale simulation-based actor-critic algorithms for solution...
AbstractThis paper is concerned with an asymptotic analysis of hierarchical production planning in a...
When dealing with numerical solution for stochastic optimal control problems, stochastic dynamic pro...