DOAJ Open Access 2026

Probabilistic Modeling of Urban Vehicle Traffic Under COVID-19 Mobility Restrictions Using AI-Based Video Data: A Case Study in Cluj-Napoca

Nicolae Filip Calin Iclodean Marius Deac

Abstrak

The COVID-19 pandemic and the resulting mobility restrictions significantly disrupted urban traffic patterns. This study quantitatively assesses the impact of these restrictions on vehicle flow at a signalized central intersection in Cluj-Napoca, Romania, through an integrated methodology combining continuous radar-based traffic measurements and AI (Artificial Intelligence)-assisted video analysis. Traffic data were collected before the pandemic (November 2019) and during the lockdown period (April 2020), enabling a comparative evaluation of flow characteristics and vehicle arrival patterns. Under constrained observational conditions, vehicle arrivals were modeled using a probabilistic framework grounded in Poisson distribution. The findings indicate a dramatic contraction of mobility demand, with traffic volumes declining in 2020 to 9.55% of pre-pandemic levels. The probabilistic assessment highlights the predominance of free-flow regimes under reduced demand and confirms the adequacy of the Poisson model in low-density traffic scenarios. The obtained results contribute to a better understanding of urban traffic dynamics under extreme mobility disruptions and provide a transferable methodological framework for probabilistic traffic modeling, resilience-oriented urban mobility planning, and data-driven traffic management.

Penulis (3)

N

Nicolae Filip

C

Calin Iclodean

M

Marius Deac

Format Sitasi

Filip, N., Iclodean, C., Deac, M. (2026). Probabilistic Modeling of Urban Vehicle Traffic Under COVID-19 Mobility Restrictions Using AI-Based Video Data: A Case Study in Cluj-Napoca. https://doi.org/10.3390/vehicles8030059

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Informasi Jurnal
Tahun Terbit
2026
Sumber Database
DOAJ
DOI
10.3390/vehicles8030059
Akses
Open Access ✓