2008
DOI: 10.2174/1874447800802010094
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Computing Aircraft Position Prediction~!2008-08-05~!2008-10-18~!2008-11-28~!

Abstract: Air traffic is increasing world wide at a steady annual rate, and airport congestion is already a major issue for air traffic managers. This paper presents a model based on neural networks to predict the position of aircraft on the airport, during landing or takeoff. The same model can also be used to predict the behavior of other vehicles moving on the airport. The predictions help to detect near-collision situations earlier, giving air traffic controllers additional time to take remedial actions. The system … Show more

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“…The training procedure involves executing optimization algorithms with varying convergence times that depend mainly on the complexity of the problem. However, once the neural network has been trained, the computing procedure that is performed in real-time is deterministic [3].…”
Section: The Prediction Systemmentioning
confidence: 99%
“…The training procedure involves executing optimization algorithms with varying convergence times that depend mainly on the complexity of the problem. However, once the neural network has been trained, the computing procedure that is performed in real-time is deterministic [3].…”
Section: The Prediction Systemmentioning
confidence: 99%