In this work we present a variational formulation for a multilayer perceptron neural network. With this formulation any learning task for the neural network is defined in terms of finding a function that is an extremal for some functional. Thus the multi-layer perceptron provides a direct method for solving general variational problems. The application of this numerical method is investigated through an optimal control example, the aircraft landing problem. Using a multilayer perceptron neural network, the optimal control of the aircraft was determined by locating the extremal value of a variational problem formulated using the state variables of the aircraft
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this work we present a variational formulation for a multilayer perceptron neural network. With t...
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...
A dual neural network architecture for the solution of aircraft control problems is presented. The n...
Abstract:- The paper presents neuro–adaptive optimal control system with direct application to the a...
In this work an extended class of multilayer perceptron is presented. This includes independent para...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this work we present a variational formulation for a multilayer perceptron neural network. With t...
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...
A dual neural network architecture for the solution of aircraft control problems is presented. The n...
Abstract:- The paper presents neuro–adaptive optimal control system with direct application to the a...
In this work an extended class of multilayer perceptron is presented. This includes independent para...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this paper, a new neural network approach/architecture, called the “Cost Function Based Single Ne...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this thesis, the optimal control of a hypersonic vehicle in ascent through the atmosphere is deve...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...
In this paper, neural networks are trained to learn the optimal time, the initial costates, and the ...