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Tourist Flow Simulation in GAMA Using Historical Data Parameters

Ivan Majic (), Johannes Scholz (), Rizwan Bulbul () and Stefanie Wallinger ()
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Ivan Majic: Graz University of Technology
Johannes Scholz: Graz University of Technology
Rizwan Bulbul: Graz University of Technology
Stefanie Wallinger: FH Salzburg

A chapter in Information and Communication Technologies in Tourism 2023, 2023, pp 255-260 from Springer

Abstract: Abstract Decision makers in the tourism sector deal with various issues and need high-quality information to support their decisions. We propose a data-centric approach that analyses historical point of interest (POI) check-in data to determine parameters for an Agent Based Model (ABM). ABM simulation is then run multiple times to simulate possible outcomes in terms of the tourist flow. We have tested the proposed approach on the city of Salzburg using check-in data from Salzburg Card users across 29 POIs. These data were used to parameterize the ABM model with the number of people, the number of POIs a person visits per day, and the preference for selecting POIs to visit. The simulation was performed in GAMA ABM platform and the spatial environment was based on buildings and roads from OpenStreetMap (OSM). Simulation for the duration of 1 day has been repeated 50 times to generate POI visiting patterns. The simulation results have been compared to the ground truth data for the same day and they show that the approach can recreate the long-term pattern of POI visits, but has over-estimated several POIs that had lower visitor counts on that specific day.

Keywords: ABM; Geo-simulation; Tourism (search for similar items in EconPapers)
Date: 2023
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Citations: View citations in EconPapers (1)

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Persistent link: https://EconPapers.repec.org/RePEc:spr:prbchp:978-3-031-25752-0_27

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DOI: 10.1007/978-3-031-25752-0_27

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