This paper presents an exhaustive study of the arrivals process at eight major European airports. Using inbound traffic data, we define, compare, and contrast a data-driven in-homogeneous Poisson and Pre-Scheduled Random Arrivals (PSRA) point process with respect to their ability to predict future demand. As part of this analysis, we show the weaknesses and difficulties of using a non-homogeneous Poisson process to model the arrivals stream. On the other hand, our novel and simple data-driven (PSRA) model captures and predicts the main properties of the typical arrivals stream with good accuracy. These results have important implication for the modeling and simulation-based analyses of inbound traffic and can improve the use of available capacity, thus reducing air traffic delays. In a nutshell, the results lead to the conclusion that, in the European context, the (PSRA) model provides more accurate predictions.

Lancia, C., Lulli, G. (2020). Predictive modeling of inbound demand at major European airports with Poisson and Pre-Scheduled Random Arrivals. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 280(1 (1 January 2020)), 179-190 [10.1016/j.ejor.2019.06.056].

Predictive modeling of inbound demand at major European airports with Poisson and Pre-Scheduled Random Arrivals

Lulli G.
2020

Abstract

This paper presents an exhaustive study of the arrivals process at eight major European airports. Using inbound traffic data, we define, compare, and contrast a data-driven in-homogeneous Poisson and Pre-Scheduled Random Arrivals (PSRA) point process with respect to their ability to predict future demand. As part of this analysis, we show the weaknesses and difficulties of using a non-homogeneous Poisson process to model the arrivals stream. On the other hand, our novel and simple data-driven (PSRA) model captures and predicts the main properties of the typical arrivals stream with good accuracy. These results have important implication for the modeling and simulation-based analyses of inbound traffic and can improve the use of available capacity, thus reducing air traffic delays. In a nutshell, the results lead to the conclusion that, in the European context, the (PSRA) model provides more accurate predictions.
Articolo in rivista - Articolo scientifico
Air traffic; Data-driven modeling; Demand prediction; Transportation
English
17-lug-2019
2020
280
1 (1 January 2020)
179
190
none
Lancia, C., Lulli, G. (2020). Predictive modeling of inbound demand at major European airports with Poisson and Pre-Scheduled Random Arrivals. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 280(1 (1 January 2020)), 179-190 [10.1016/j.ejor.2019.06.056].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/327500
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