Litcius/Paper detail

Estimating E-Scooter Traffic Flow Using Big Data to Support Planning for Micromobility

Chen Feng, Junfeng Jiao, Haofeng Wang

2020Journal of Urban Technology48 citationsDOI

Abstract

Dockless e-scooter sharing, as a new shared micromobility service, has quickly gained popularity in recent years. In this paper, we present a practical approach to estimating e-scooter flow patterns without knowing the actual routes taken by the e-scooter riders. Our method takes advantage of a huge open dataset that contains the origins and destinations of millions of trips. We show that our models can help cities better support the emerging shared micromobility service. The additional information generated in the modeling process can also be useful for a more refined analysis of e-scooter trips.

Topics & Concepts

TRIPS architecturePopularityService (business)Big dataComputer scienceDestinationsProcess (computing)BusinessTransport engineeringInternet privacyGeographyMarketingEngineeringData miningTourismPsychologySocial psychologyOperating systemArchaeologySmart Parking Systems ResearchUrban Transport and AccessibilityTransportation and Mobility Innovations
Estimating E-Scooter Traffic Flow Using Big Data to Support Planning for Micromobility | Litcius