Proceedings of the 33rd European Modeling &Amp; Simulation Symposium 2021
DOI: 10.46354/i3m.2021.emss.023
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Airport passenger flow prediction using simulation data farming and machine learning

Abstract: Passenger flow management is an important issue at many airports around the world. There are high concentrations of passengers arriving and leaving the airport in waves of large volumes in short periods, particularly in big hubs. This might cause congestion in some locations depending on the layout of the terminal building. With a combination of real airport data, as well as synthetic data obtained through an airport simulator, a Long Short-Term Memory Recurrent Neural Network has been implemented to predict t… Show more

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