Graph Neural Networks have been applied to learn the flight and structural dynamics of an High Altitude Long Endurance aircraft in discrete gust. The graph network methodology allows building a model for structural displacements, loads and aircraft flight dynamics leveraging on the inductive bias given by the physical connections. The results show promising capabilities in model approximation and potential for symbolic identification of aerodynamics and structural forces
In this paper, identification of dynamic stall effect of rotor blade is considered. Recurrent Neural...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
International audienceFlight simulators have been part of aviation history since its beginning. With...
Graph Neural Networks have been applied to learn the flight and structural dynamics of an High Altit...
The prediction and monitoring of aircraft structural fatigue damage is vital for the safe operation ...
A fast, reliable, and accurate methodology for predicting aerodynamic coefficients of airfoils and t...
Aircraft design requires a multitude of aerodynamic data and providing this solely based on high-qua...
Neural networks were used to model wing bending-moment loads, torsion loads, and control surface hin...
A reliable and fast method of predicting complex aerodynamic coefficients for flight simulation is p...
rajkumar, jbardina @ mail.arc.nasa.gov Basic aerodynamic coefficients are modeled as functions of an...
Deep learning technology has been widely used in various field in recent years. This study intends t...
A Recurrent Neural Network controller for the alleviation of gust loads on a regional transport airc...
Artificial neural networks are an established technique for constructing non-linear models of multi-...
The use of neural networks and efficient identification algorithms in aerodynamic modeling could sub...
Wind estimation plays an important role in many aspects of our world, both for nowcasting and foreca...
In this paper, identification of dynamic stall effect of rotor blade is considered. Recurrent Neural...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
International audienceFlight simulators have been part of aviation history since its beginning. With...
Graph Neural Networks have been applied to learn the flight and structural dynamics of an High Altit...
The prediction and monitoring of aircraft structural fatigue damage is vital for the safe operation ...
A fast, reliable, and accurate methodology for predicting aerodynamic coefficients of airfoils and t...
Aircraft design requires a multitude of aerodynamic data and providing this solely based on high-qua...
Neural networks were used to model wing bending-moment loads, torsion loads, and control surface hin...
A reliable and fast method of predicting complex aerodynamic coefficients for flight simulation is p...
rajkumar, jbardina @ mail.arc.nasa.gov Basic aerodynamic coefficients are modeled as functions of an...
Deep learning technology has been widely used in various field in recent years. This study intends t...
A Recurrent Neural Network controller for the alleviation of gust loads on a regional transport airc...
Artificial neural networks are an established technique for constructing non-linear models of multi-...
The use of neural networks and efficient identification algorithms in aerodynamic modeling could sub...
Wind estimation plays an important role in many aspects of our world, both for nowcasting and foreca...
In this paper, identification of dynamic stall effect of rotor blade is considered. Recurrent Neural...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
International audienceFlight simulators have been part of aviation history since its beginning. With...