Abstract

Short distance travel and commute being inevitable, safe route planning in pandemics for micro-mobility, i.e., cycling and walking, is extremely important for the safety of oneself and others. Hence, we propose an application-based solution using COVID-19 occurrence data and a multi-criteria route planning technique for cyclists and pedestrians. This study aims at objectively determining the routes based on various criteria on COVID-19 safety of a given route while keeping the user away from potential COVID-19 transmission spots. The vulnerable spots include places such as a hospital or medical zones, contained residential areas, and roads with a high connectivity and influx of people. The proposed algorithm returns a multi-criteria route modeled on COVID-19-modified parameters of micro-mobility and betweenness centrality considering COVID-19 avoidance as well as the shortest available safe route for user ease and shortened time of outside environment exposure. We verified our routing algorithm in a part of Delhi, India, by visualizing containment zones and medical establishments. The results with COVID-19 data analysis and route planning suggest a safer route in the context of the coronavirus outbreak as compared to normal navigation and on average route extension is within 8%–12%. Moreover, for further advancement and post-COVID-19 era, we discuss the need for adding open data policy and the spatial system architecture for data usage, as a part of a pandemic strategy. The study contributes new micro-mobility parameters adapted for COVID-19 and policy guidelines based on aggregated contact tracing data analysis maintaining privacy, security, and anonymity.

Highlights

  • In the COVID-19 pandemic, public transport like buses, metro, and vehicle sharing services are seldom available or used

  • Recent studies in medical science have found that airborne transmission may be the dominant route of COVID-19 spread [2]

  • Cycling and walking leave commuters more exposed to COVID-19 as compared to enclosed vehicles like cars

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Summary

Introduction

In the COVID-19 pandemic, public transport like buses, metro, and vehicle sharing services are seldom available or used. The background studies involved looking at the ground situation prevalent in times of pandemic, identifying the problem scenario and analyzing the causative factors leading to the problem. This led to counteractive measures of exploring technical aspects that might offer solutions to parts of the problem. We implement a routing algorithm next to factor in COVID-19 zones and the roads passing through the zones where the system calls upon a betweenness centrality concept, explained

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