A dual neural network architecture for the solution of aircraft control problems is presented. The neural network structure, consisting of an action network and a critic network, is used to approximately solve the dynamic programming equations associated with optimal control with a high degree of accuracy. Numerical results from applying this methodology to optimally control the longitudinal dynamics of an aircraft are presented. The novelty in this synthesis of the optimal controller network is that it needs no external training inputs; it needs no a priori knowledge of the form of control. Numerical experiments with neural-network-based control as well as other pointwise optimal control techniques are presented. These results show that th...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
A nonlinear control system comprising a network of networks is taught by the use of a two-phase lear...
Dynamic Programming is an exact method of determining optimal control for a discretized system. Unfo...
In this study an adaptive critic based neural network controller is developed to obtain near optimal...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
Abstract:- The paper presents neuro–adaptive optimal control system with direct application to the a...
Thesis (M.S)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering"July ...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
Approximate dynamic programming formulation implemented with an “adaptive critic-based” neural netwo...
In this paper, approximate dynamic programming (ADP)based design tools are developed for adaptive co...
A model reference indirect adaptive neural control scheme that uses both off-line and online learnin...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
A nonlinear control system comprising a network of networks is taught by the use of a two-phase lear...
Dynamic Programming is an exact method of determining optimal control for a discretized system. Unfo...
In this study an adaptive critic based neural network controller is developed to obtain near optimal...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
Abstract:- The paper presents neuro–adaptive optimal control system with direct application to the a...
Thesis (M.S)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering"July ...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
Approximate dynamic programming formulation implemented with an “adaptive critic-based” neural netwo...
In this paper, approximate dynamic programming (ADP)based design tools are developed for adaptive co...
A model reference indirect adaptive neural control scheme that uses both off-line and online learnin...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
A nonlinear control system comprising a network of networks is taught by the use of a two-phase lear...
Dynamic Programming is an exact method of determining optimal control for a discretized system. Unfo...