In this study an adaptive critic based neural network controller is developed to obtain near optimal control laws for a nonlinear automatic flight control system. The adaptive critic approach consists of two neural networks. The first network, called the critic, captures the mapping between the states of a dynamical system and the co-states that arise in an optimal control problem. The second network, called the action network, maps the states of a system to the control. This study uses nonlinear aircraft models in the stall regions from a paper (Garrad and Jordan2 to develop optimal neural controllers for an aircraft; we then compare the results with singular perturbation based nonlinear controllers developed in the literature. The result...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
The feasibility of using artificial neural networks as control systems for modern, complex aerospace...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
A dual neural network architecture for the solution of aircraft control problems is presented. The n...
Ultimately the purpose of the nonlinear flight control system developed in this work is to pave the ...
Ultimately the purpose of the nonlinear flight control system developed in this work is to pave the ...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
Thesis (M.S)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering"July ...
Dynamic programming is an exact method of determining optimal control for a discretized system. Unfo...
A two-neural network approach to solving optimal control problems is described in this study. This a...
This paper proposes a novel nonlinear controller based on neural networks (NNs) for active suppressi...
We investigate the use of an `adaptive critic\u27 based controller to steer an agile missile with a ...
Adaptive control designs using neural networks (NNs) based on dynamic inversion are investigated fo...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
The feasibility of using artificial neural networks as control systems for modern, complex aerospace...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
A dual neural network architecture for the solution of aircraft control problems is presented. The n...
Ultimately the purpose of the nonlinear flight control system developed in this work is to pave the ...
Ultimately the purpose of the nonlinear flight control system developed in this work is to pave the ...
In this paper, adaptive critic based neural networks have been used to design a controller for a ben...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
Thesis (M.S)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering"July ...
Dynamic programming is an exact method of determining optimal control for a discretized system. Unfo...
A two-neural network approach to solving optimal control problems is described in this study. This a...
This paper proposes a novel nonlinear controller based on neural networks (NNs) for active suppressi...
We investigate the use of an `adaptive critic\u27 based controller to steer an agile missile with a ...
Adaptive control designs using neural networks (NNs) based on dynamic inversion are investigated fo...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
The feasibility of using artificial neural networks as control systems for modern, complex aerospace...