This paper discusses a neural network tool for more effective aircraft design evaluations during wind tunnel tests. Using a hybrid neural network optimization method, we have produced fast and reliable predictions of aerodynamical coefficients, found optimal flap settings, and flap schedules. For validation, the tool was tested on a 55% scale model of the USAF/NASA Subsonic High Alpha Research Concept aircraft (SHARC). Four different networks were trained to predict coefficients of lift, drag, moment of inertia, and lift drag ratio (C(sub L), C(sub D), C(sub M), and L/D) from angle of attack and flap settings. The latter network was then used to determine an overall optimal flap setting and for finding optimal flap schedules
Nonlinear mathematical-programming-based design optimization can be an elegant method. However, the ...
This paper presents a systematic neural network approach based on the concept for Learning from Exam...
A reliable and fast method of predicting complex aerodynamic coefficients for flight simulation is p...
A fast, reliable, and accurate methodology for predicting aerodynamic coefficients of airfoils and t...
The neural network and regression methods of NASA Glenn Research Center s COMETBOARDS design optimiz...
Delta wing formed a vortical flow on its surface which produced higher lift compared to conventional...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
It is proposed that an artificial neural network be used to construct an intelligent data acquisitio...
At the NASA Glenn Research Center, NASA Langley Research Center's Flight Optimization System (FLOPS)...
The high-lift performance of a multi-element airfoil was optimized by using neural-net predictions t...
rajkumar, jbardina @ mail.arc.nasa.gov Basic aerodynamic coefficients are modeled as functions of an...
The ability of artificial neural networks (ANN) to model the unsteady aerodynamic force coefficients...
The use of neural networks to minimize the amount of data required to completely define the aerodyna...
In this work Artificial Neural Networks (ANN) are used for a multi-target optimization of the aerody...
This work proposes a novel multi-output neural network for the prediction of the lift coefficient of...
Nonlinear mathematical-programming-based design optimization can be an elegant method. However, the ...
This paper presents a systematic neural network approach based on the concept for Learning from Exam...
A reliable and fast method of predicting complex aerodynamic coefficients for flight simulation is p...
A fast, reliable, and accurate methodology for predicting aerodynamic coefficients of airfoils and t...
The neural network and regression methods of NASA Glenn Research Center s COMETBOARDS design optimiz...
Delta wing formed a vortical flow on its surface which produced higher lift compared to conventional...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
It is proposed that an artificial neural network be used to construct an intelligent data acquisitio...
At the NASA Glenn Research Center, NASA Langley Research Center's Flight Optimization System (FLOPS)...
The high-lift performance of a multi-element airfoil was optimized by using neural-net predictions t...
rajkumar, jbardina @ mail.arc.nasa.gov Basic aerodynamic coefficients are modeled as functions of an...
The ability of artificial neural networks (ANN) to model the unsteady aerodynamic force coefficients...
The use of neural networks to minimize the amount of data required to completely define the aerodyna...
In this work Artificial Neural Networks (ANN) are used for a multi-target optimization of the aerody...
This work proposes a novel multi-output neural network for the prediction of the lift coefficient of...
Nonlinear mathematical-programming-based design optimization can be an elegant method. However, the ...
This paper presents a systematic neural network approach based on the concept for Learning from Exam...
A reliable and fast method of predicting complex aerodynamic coefficients for flight simulation is p...