INTRODUCTION: The flight distances of javelins are determined by the release parameters as well as by the forces acting on the javelin during flight. The flight phase of the javelin has been under investigation by many researchers using engineering approaches to model the flight phase. The objective is to allow an optimization of the release parameters for maximizing the flight distance. The measurement of release parameters as well as wind influence is not very precise. This means that the models are based on already distorted data. Artificial neural networks (NNs, Haykin 1994) are powerful information processing tools that allow to construct a input-output model of a problem by learning from examples. They are able to generalize , i.e. to...
Abstract. The problem of flying object’s trajectory prediction in material transportation by throwin...
An ANN is an information or signal processing system consisting of a large number of simple processi...
Artificial neural networks' ability to learn, categorize, generalize and self organize make them pot...
In this study, a modeling method based on Multi-Layer-Perceptron neural networks (MLP) is presented,...
The javelin event, using both men's old and new rules javelins, has been reported in the literature ...
In this study, optimization of javelin flight distance was carried out using a genetic algorithm. Ja...
Flight simulators have been part of aviation history since its beginning. With the development of mo...
Artificial neural networks are an established technique for constructing non-linear models of multi-...
A helicopter's airspeed and sideslip angle is difficult to measure at speeds below 50 knots. This pa...
Background: Musculoskeletal models have been used to estimate the muscle and joint contact forces ex...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
Neural network procedures were explored with the objectives to control a delta wing in the non-linea...
Wind estimation plays an important role in many aspects of our world, both for nowcasting and foreca...
In this study a neural network based method is developed for the prediction of separation characteri...
The ability of artificial neural networks (ANN) to model the unsteady aerodynamic force coefficients...
Abstract. The problem of flying object’s trajectory prediction in material transportation by throwin...
An ANN is an information or signal processing system consisting of a large number of simple processi...
Artificial neural networks' ability to learn, categorize, generalize and self organize make them pot...
In this study, a modeling method based on Multi-Layer-Perceptron neural networks (MLP) is presented,...
The javelin event, using both men's old and new rules javelins, has been reported in the literature ...
In this study, optimization of javelin flight distance was carried out using a genetic algorithm. Ja...
Flight simulators have been part of aviation history since its beginning. With the development of mo...
Artificial neural networks are an established technique for constructing non-linear models of multi-...
A helicopter's airspeed and sideslip angle is difficult to measure at speeds below 50 knots. This pa...
Background: Musculoskeletal models have been used to estimate the muscle and joint contact forces ex...
Neural networks are being developed at McDonnell Douglas Corporation to provide an onboard model of ...
Neural network procedures were explored with the objectives to control a delta wing in the non-linea...
Wind estimation plays an important role in many aspects of our world, both for nowcasting and foreca...
In this study a neural network based method is developed for the prediction of separation characteri...
The ability of artificial neural networks (ANN) to model the unsteady aerodynamic force coefficients...
Abstract. The problem of flying object’s trajectory prediction in material transportation by throwin...
An ANN is an information or signal processing system consisting of a large number of simple processi...
Artificial neural networks' ability to learn, categorize, generalize and self organize make them pot...