Accéder directement au contenu Accéder directement à la navigation
Chapitre d'ouvrage

Passenger On Social Media : A Real Time Estimator of the State of the US Air Transportation System

Abstract : This paper aims at investigating further the use of the social media Twitter as a real-time estimator of the US Air Transportation system. Two different machine learning regressors have been trained on this 2017 passenger-centric dataset and tested on the first two months of 2018 for the estimation of air traffic delays at departure and arrival at 34 different US airports. Using three different levels of content-related features created from the flow of social media posts led to the extraction of useful information about the current state of the air traffic system. The resulting methods yield higher estimation performances than traditional state-of-the-art and off-the-shelf time-series forecasting techniques performed on flight-centric data for more than 28 airports. Moreover the features extracted can also be used to start a passenger-centric analysis of the Air Transportation system. This paper is the continuation of previous works focusing on estimating air traffic delays leveraging a real-time publicly available passenger-centered data source. The results of this study suggest a method to use passenger-centric data-sources as an estimator of the current state of the different actors of the air transportation system in real-time.
Type de document :
Chapitre d'ouvrage
Liste complète des métadonnées

https://hal-enac.archives-ouvertes.fr/hal-03644194
Contributeur : Daniel Delahaye Connectez-vous pour contacter le contributeur
Soumis le : mardi 19 avril 2022 - 07:37:48
Dernière modification le : jeudi 21 avril 2022 - 03:29:47

Identifiants

  • HAL Id : hal-03644194, version 1

Collections

Citation

Philippe Monmousseau, Aude Marzuoli, Eric Feron, Daniel Delahaye. Passenger On Social Media : A Real Time Estimator of the State of the US Air Transportation System. Springer. Air Traffic Management and Systems IV. Selected Papers of the 6th ENRI International Workshop on ATM/CNS. Lecture Notes in Electrical Engineering 731., 2021. ⟨hal-03644194⟩

Partager

Métriques

Consultations de la notice

21