The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of model-based, iterative learning strategies we propose an alternative definition and construction of the temporal difference error arising in policy iteration strategies. In such architectures, the error is computed via the evolution of the Hamiltonian function (or, possibly, of its integral) along the trajectories of the closed-loop system. Herein the temporal difference error is instead obtained via two subsequent steps: first the dynamics of the underlying costate variable in the Hamiltonian system is steered by means of a (virtual) control input in such a way that the stable invariant manifold becomes externally attractive. Then, the distance...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
This chapter presents adaptive solutions to the optimal tracking problem of nonlinear discrete-time ...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
In this article, we consider an iterative adaptive dynamic programming (ADP) algorithm within the Ha...
This paper presents a Hamiltonian-driven framework of adaptive dynamic programming (ADP) for continu...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
This chapter presents a Hamiltonian-driven framework of adaptive dynamic programming (ADP) for conti...
In optimal control problems with infinite time horizon, arising in economic growth models, the analy...
Abstract — This paper is concerned with a new discrete-time policy iteration adaptive dynamic progra...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
This paper presents a reinforcement learning framework for continuous-time dynamical systems without...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
This chapter presents adaptive solutions to the optimal tracking problem of nonlinear discrete-time ...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
The infinite-horizon optimal control problem for nonlinear systems is studied. In the context of mod...
In this article, we consider an iterative adaptive dynamic programming (ADP) algorithm within the Ha...
This paper presents a Hamiltonian-driven framework of adaptive dynamic programming (ADP) for continu...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
This chapter presents a Hamiltonian-driven framework of adaptive dynamic programming (ADP) for conti...
In optimal control problems with infinite time horizon, arising in economic growth models, the analy...
Abstract — This paper is concerned with a new discrete-time policy iteration adaptive dynamic progra...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
This paper presents a reinforcement learning framework for continuous-time dynamical systems without...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
This chapter presents adaptive solutions to the optimal tracking problem of nonlinear discrete-time ...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...