Simulating Spatio-Temporal Patterns of Bicycle Flows with an Agent-Based Model

Publikation: Beitrag in FachzeitschriftArtikelPeer-reviewed

Abstract

Transport planning strategies regard cycling promotion as a suitable means for tackling problems connected with motorized traffic such as limited space, congestion, and pollution. However, the evidence base for optimizing cycling promotion is weak in most cases, and information on bicycle patterns at a sufficient resolution is largely lacking. In this paper, we propose agent-based modeling to simulate bicycle traffic flows at a regional scale level for an entire day. The feasibility of the model is demonstrated in a use case in the Salzburg region, Austria. The simulation results in distinct spatio-temporal bicycle traffic patterns at high spatial (road segments) and temporal (minute) resolution. Scenario analysis positively assesses the model’s level of complexity, where the demographically parametrized behavior of cyclists outperforms stochastic null models. Validation with reference data from three sources shows a high correlation between simulated and observed bicycle traffic, where the predictive power is primarily related to the quality of the input and validation data. In conclusion, the implemented agent-based model successfully simulates bicycle patterns of 186,000 inhabitants within a reasonable time. This spatially explicit approach of modeling individual mobility behavior opens new opportunities for evidence-based planning and decision making in the wide field of cycling promotion
OriginalspracheEnglisch
Aufsatznummer88
FachzeitschriftISPRS International Journal of Geo-Information
Jahrgang10
Ausgabenummer2
DOIs
PublikationsstatusVeröffentlicht - 20 Feb. 2021

Bibliographische Notiz

Funding Information:
Funding: This research was funded by Austrian Research Promotion Agency through the FamoS project, grant number 855034; and by the Austrian Science Fund through the Doctoral College GIScience at the University of Salzburg, grant number DK W 1237-N23.

Funding Information:
Acknowledgments: Open Access Funding by the Austrian Science Fund (FWF). The authors would also like to thank Bike Citizens for providing trajectory data from their mobile application (https:// www.bikecitizens.net/app/ (accessed on 19 February 2021)), Strava Metro for providing aggregated and de-identified trajectory data (https://www.strava.com/mobile (accessed on 19 February 2021)), and the City Administration of Salzburg for providing counts data.

Schlagwörter

  • bicycle traffic
  • human mobility
  • transport model
  • agent-based modeling
  • GAMA

Systematik der Wissenschaftszweige 2012

  • 211 Andere Technische Wissenschaften
  • 102 Informatik

Dieses zitieren