Abstract

COVID-19 has dramatically struck each section of our society: health, economy, employment, and mobility. This work presents a data-driven characterization of the impact of COVID-19 pandemic on public and private mobility in a mid-size city in Spain (Fuenlabrada). Our analysis used real data collected from the public transport smart card system and a Bluetooth traffic monitoring network, from February to September 2020, thus covering relevant phases of the pandemic. Our results show that, at the peak of the pandemic, public and private mobility dramatically decreased to and of their pre-COVID-19 values, after which the latter experienced a faster recovery. In addition, our analysis of daily patterns evidenced a clear change in the behavior of users towards mobility during the different phases of the pandemic. Based on these findings, we developed short-term predictors of future public transport demand to provide operators and mobility managers with accurate information to optimize their service and avoid crowded areas. Our prediction model achieved a high performance for pre- and post-state-of-alarm phases. Consequently, this work contributes to enlarging the knowledge about the impact of pandemic on mobility, providing a deep analysis about how it affected each transport mode in a mid-size city.

Highlights

  • Accepted: 26 September 2021In December 2019, the world started facing an unprecedented global crisis caused by the new coronavirus (COVID-19)

  • We used real public transport and private vehicle data collected from the Smart Card Data (SCD) system operating in the region and a Bluetooth

  • These phases can be grouped in 3 distinct periods according to the state of alarm declared in the country, as it is shown in Timeline 2 in Figure 1, which we will employ to extract average daily patterns and perform predictions

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Summary

Introduction

In December 2019, the world started facing an unprecedented global crisis caused by the new coronavirus (COVID-19). Because of the severity of the pandemic, governments throughout the world limited or stopped every non-essential economic and commercial activity These decisions resulted in important changes in people’s usual life and behavior: remote work was promoted, unnecessary journeys were restricted, educational institutions migrated to online teaching strategies, and events and public gatherings were canceled. We develop a short-term predictor of public transport demand adapted to the sequence of phases within the course of the pandemic: severe restrictions in the outbreak, deescalation, and “new normality”. To this effect, we used real public transport and private vehicle data collected from the Smart Card Data (SCD) system operating in the region and a Bluetooth.

Related Work
Case Study Description
Public Transport Network and Dataset
Bluetooth Traffic Monitoring Network and Dataset
Mobility Changes Produced by COVID-19
Evolution of Private and Public Mobility
Daily Patterns of Private and Public Transport Mobility
Private Mobility Daily Patterns
Public Transport Mobility Daily Patterns
Prediction of Public Transport Demand in COVID-19 Times
Methodology
Performance Evaluation
Findings
Distinct Mobility Patterns in Each Phase of the Pandemic
Full Text
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