In this paper, we present a new adaptive dynamic programming approach by integrating a reference network that provides an internal goal representation to help the systems learning and optimization. Specifically, we build the reference network on top of the critic network to form a dual critic network design that contains the detailed internal goal representation to help approximate the value function. This internal goal signal, working as the reinforcement signal for the critic network in our design, is adaptively generated by the reference network and can also be adjusted automatically. In this way, we provide an alternative choice rather than crafting the reinforcement signal manually from prior knowledge. In this paper, we adopt the onli...
Online Reinforcement Learning is a possible solution for adaptive nonlinear flight control. In this ...
This dissertation is focused on a general purpose new framework for machine intelligence based on ad...
In problems with complex dynamics and challenging state spaces, the dual heuristic programming (DHP)...
Abstract — In this paper, we present a new adaptive dynamic programming approach by integrating a re...
A data-driven adaptive tracking control approach is proposed for a class of continuous-time nonlinea...
In this paper, we propose a novel adaptive dynamic programming (ADP) architecture with three network...
This paper discusses strategies for and details of training procedures for the dual heuristic progra...
This paper discusses strategies for and details of training procedures for the dual heuristic progra...
In this paper we propose to integrate the recursive Levenberg-Marquardt method into the adaptive dyn...
Abstract In the present paper, we consider the implemen-tation of adaptive critic designs using neu...
Stability analysis and controller design are among the most important issues in feedback control pro...
To solve the problem of optimal control for nonlinear system, Actor Critic Designs (ACD) can be util...
This paper proposes a novel data-driven control approach to address the problem of adaptive optimal ...
Click on the DOI link below to access the article (may not be free).Using the Approximate Dynamic Pr...
This paper proposes a novel adaptive dynamic programming method, called Incremental model-based Glob...
Online Reinforcement Learning is a possible solution for adaptive nonlinear flight control. In this ...
This dissertation is focused on a general purpose new framework for machine intelligence based on ad...
In problems with complex dynamics and challenging state spaces, the dual heuristic programming (DHP)...
Abstract — In this paper, we present a new adaptive dynamic programming approach by integrating a re...
A data-driven adaptive tracking control approach is proposed for a class of continuous-time nonlinea...
In this paper, we propose a novel adaptive dynamic programming (ADP) architecture with three network...
This paper discusses strategies for and details of training procedures for the dual heuristic progra...
This paper discusses strategies for and details of training procedures for the dual heuristic progra...
In this paper we propose to integrate the recursive Levenberg-Marquardt method into the adaptive dyn...
Abstract In the present paper, we consider the implemen-tation of adaptive critic designs using neu...
Stability analysis and controller design are among the most important issues in feedback control pro...
To solve the problem of optimal control for nonlinear system, Actor Critic Designs (ACD) can be util...
This paper proposes a novel data-driven control approach to address the problem of adaptive optimal ...
Click on the DOI link below to access the article (may not be free).Using the Approximate Dynamic Pr...
This paper proposes a novel adaptive dynamic programming method, called Incremental model-based Glob...
Online Reinforcement Learning is a possible solution for adaptive nonlinear flight control. In this ...
This dissertation is focused on a general purpose new framework for machine intelligence based on ad...
In problems with complex dynamics and challenging state spaces, the dual heuristic programming (DHP)...