Nonnegative Matrix Factorization to understand Spatio-Temporal Traffic Pattern Variations during COVID-19: A Case Study
Due to the rapid developments in Intelligent Transportation System (ITS) and increasing trend in the number of vehicles on road, abundant of road traffic data is generated and available. Understanding spatio-temporal traffic patterns from this data is crucial and has been effectively helping in traf...
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Zusammenfassung: | Due to the rapid developments in Intelligent Transportation System (ITS) and
increasing trend in the number of vehicles on road, abundant of road traffic
data is generated and available. Understanding spatio-temporal traffic patterns
from this data is crucial and has been effectively helping in traffic
plannings, road constructions, etc. However, understanding traffic patterns
during COVID-19 pandemic is quite challenging and important as there is a huge
difference in-terms of people's and vehicle's travel behavioural patterns. In
this paper, a case study is conducted to understand the variations in
spatio-temporal traffic patterns during COVID-19. We apply nonnegative matrix
factorization (NMF) to elicit patterns. The NMF model outputs are analysed
based on the spatio-temporal pattern behaviours observed during the year 2019
and 2020, which is before pandemic and during pandemic situations respectively,
in Great Britain. The outputs of the analysed spatio-temporal traffic pattern
variation behaviours will be useful in the fields of traffic management in
Intelligent Transportation System and management in various stages of pandemic
or unavoidable scenarios in-relation to road traffic. |
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DOI: | 10.48550/arxiv.2111.03592 |