AbstractThis work is concerned with nearly optimal controls of nonlinear dynamic systems under the influence of singularly perturbed Markov chains. The underlying Markov chains have fast and slow components and their states can be divided into a number of groups. Within each group of states, the chain varies in a fast pace whereas the jumps from one group to another occur relative infrequently. To obtain the desired optimality, the states of the chain are naturally aggregated in accordance with the transition rates; i.e., replacing the states in a group by a single state to obtain an average system. Then the averaged system is used as a reference to develop the nearly optimal control for the actual system via comparison control methods. The...
International audienceA singularly perturbed control system involving two ordinary differential equa...
In this paper, we study a class of optimal stochastic control problems involving two different time ...
The present paper aims at studying stochastic singularly perturbed control systems. We begin by reca...
AbstractThis work is concerned with nearly optimal controls of nonlinear dynamic systems under the i...
This work is devoted to numerical studies of nearly optimal controls of systems driven by singularly...
Abstract—In this paper, we study a class of optimal stochastic control problems involving two differ...
The present paper aims at studying stochastic singularly perturbed control systems. We begin by reca...
This paper deals with the expected discounted continuous control of piecewise deterministic Markov p...
The authors consider a singularly perturbed Markov decision process (MDP) with the limiting average ...
This paper deals with the expected discounted continuous control of piecewise deterministic Markov p...
This work studies the asymptotic optimality of discrete-time Markov Decision Processes (MDP's in sho...
This paper studies the asymptotic optimality of discrete-time Markov decision processes (MDPs) with ...
In this paper, we study a class of optimal stochastic control problems involving two different time ...
International audienceA singularly perturbed control system involving two ordinary differential equa...
International audienceA singularly perturbed control system involving two ordinary differential equa...
International audienceA singularly perturbed control system involving two ordinary differential equa...
In this paper, we study a class of optimal stochastic control problems involving two different time ...
The present paper aims at studying stochastic singularly perturbed control systems. We begin by reca...
AbstractThis work is concerned with nearly optimal controls of nonlinear dynamic systems under the i...
This work is devoted to numerical studies of nearly optimal controls of systems driven by singularly...
Abstract—In this paper, we study a class of optimal stochastic control problems involving two differ...
The present paper aims at studying stochastic singularly perturbed control systems. We begin by reca...
This paper deals with the expected discounted continuous control of piecewise deterministic Markov p...
The authors consider a singularly perturbed Markov decision process (MDP) with the limiting average ...
This paper deals with the expected discounted continuous control of piecewise deterministic Markov p...
This work studies the asymptotic optimality of discrete-time Markov Decision Processes (MDP's in sho...
This paper studies the asymptotic optimality of discrete-time Markov decision processes (MDPs) with ...
In this paper, we study a class of optimal stochastic control problems involving two different time ...
International audienceA singularly perturbed control system involving two ordinary differential equa...
International audienceA singularly perturbed control system involving two ordinary differential equa...
International audienceA singularly perturbed control system involving two ordinary differential equa...
In this paper, we study a class of optimal stochastic control problems involving two different time ...
The present paper aims at studying stochastic singularly perturbed control systems. We begin by reca...