Analyzing and modeling network travel patterns during the Ukraine invasion using crowd-sourced pervasive traffic data
August 08, 2022 ยท Declared Dead ยท ๐ Social Science Research Network
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Authors
S. Travis Waller, Moeid Qurashi, Anna Sotnikova, Lavina Karva, Sai Chand
arXiv ID
2208.04297
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.SI,
stat.AP
Citations
13
Venue
Social Science Research Network
Last Checked
4 months ago
Abstract
In 2022, Ukraine is suffering an invasion which has resulted in acute impacts playing out over time and geography. This paper examines the impact of the ongoing disruption on traffic behavior using analytics as well as zonal-based network models. The methodology is a data-driven approach that utilizes obtained travel-time conditions within an evolutionary algorithm framework which infers origin-destination demand values in an automated process based on traffic assignment. Because of the automation of the implementation, numerous daily models can be approximated for multiple cities. The novelty of this paper versus the previously published core methodology includes an analysis to ensure the obtained data is appropriate since some data sources were disabled due to the ongoing disruption. Further, novelty includes a direct linkage of the analysis to the timeline of disruptions to examine the interaction in a new way. Finally, specific network metrics are identified which are particularly suited for conceptualizing the impact of conflict disruptions on traffic network conditions. The ultimate aim is to establish processes, concepts and analysis to advance the broader activity of rapidly quantifying the traffic impacts of conflict scenarios.
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