This study presents an advanced system for monitoring and forecasting tourist flows in the Aosta Valley using distributed sensor technologies, cameras, and machine learning algorithms. This innovative system is designed to provide real-time data on arrivals and presences throughout the region, helping to manage traffic and tourism resources more effectively. The research analyzes data collected from portals equipped for traffic detection. Through a multi-phase approach, the project integrates and analyzes over 41 million vehicle passages to support informed decisions for regional economic and social policies. Furthermore, computational processes were conducted to optimize the analysis of the vehicle flow, reducing the dataset and focusing on checkpoints and vehicle categories. This type of time series revealed high stationarity, allowing the use of the eXtreme Gradient Boosting (XGBoost) algorithm for more accurate forecasts than Deep Learning models and other Machine Learning algorithms, such as those highlighted in terms of MAE and MSE. The results represent a significant step forward in managing tourist flows and improving the Aosta Valley’s operational efficiency and visitor experience.

MONTUR project: Dataset for understanding and forecasting tourist flows / Alderighi, M., Ciano, T., Ferrara, M., Santoro, D.. - In: PLOS ONE. - ISSN 1932-6203. - 20:10(2025). [10.1371/journal.pone.0335190]

MONTUR project: Dataset for understanding and forecasting tourist flows

Ferrara, Massimiliano
Supervision
;
2025-01-01

Abstract

This study presents an advanced system for monitoring and forecasting tourist flows in the Aosta Valley using distributed sensor technologies, cameras, and machine learning algorithms. This innovative system is designed to provide real-time data on arrivals and presences throughout the region, helping to manage traffic and tourism resources more effectively. The research analyzes data collected from portals equipped for traffic detection. Through a multi-phase approach, the project integrates and analyzes over 41 million vehicle passages to support informed decisions for regional economic and social policies. Furthermore, computational processes were conducted to optimize the analysis of the vehicle flow, reducing the dataset and focusing on checkpoints and vehicle categories. This type of time series revealed high stationarity, allowing the use of the eXtreme Gradient Boosting (XGBoost) algorithm for more accurate forecasts than Deep Learning models and other Machine Learning algorithms, such as those highlighted in terms of MAE and MSE. The results represent a significant step forward in managing tourist flows and improving the Aosta Valley’s operational efficiency and visitor experience.
2025
27-ott-2025
Inglese
20
10
12
https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0335190
Comitato scientifico
Machine learning; Forecasting; Tourism flows;
Internazionale
Open access funding provided by PRIN PNRR 2022 joint with the project European Union under the NextGeneration EU Programme within the Plan “PNRR - Missione 4 “Istruzione e Ricerca” - Componente C2 Investimento 1.1 “Fondo per il Programma Nazionale di Ricerca e Progetti di Rilevante Interesse Nazionale (PRIN)” by the Italian Ministry of University and Research (MUR), Project title: “Climate risk and uncertainty: environmental sustainability and asset pricing”. Project code “P20225MJW8” (CUP: E53D23016470001), MUR D.D. financing decree n. 1409 of 14/09/2022.
No
Alderighi, Marco; Ciano, Tiziana; Ferrara, Massimiliano; Santoro, Domenico
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
MONTUR project: Dataset for understanding and forecasting tourist flows / Alderighi, M., Ciano, T., Ferrara, M., Santoro, D.. - In: PLOS ONE. - ISSN 1932-6203. - 20:10(2025). [10.1371/journal.pone.0335190]
4
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.12318/161566
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