On cycling risk and discomfort: urban safety mapping and bike route recommendations

Open access
Date
2019-05-16Type
- Working Paper
ETH Bibliography
yes
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Abstract
Bike usage in Smart Cities becomes paramount for sustainable urban development. Cycling provides tremendous opportunities for a more healthy lifestyle, lower energy consumption and carbon emissions as well as reduction of traffic jams. While the number of cyclists increase along with the expansion of bike sharing initiatives and infrastructures, the number of bike accidents rises drastically threatening to jeopardize the bike urban movement. This paper studies cycling risk and discomfort using a diverse spectrum of data sources about geolocated bike accidents and their severity. Empirical continuous spatial risk estimations are calculated via kernel density contours that map safety in a case study of Zurich city. The role of weather, time, accident type and severity are illustrated. Given the predominance of self-caused accidents, an open-source software artifact for personalized route recommendations is introduced. The software is also used to collect open baseline route data that are compared with alternative ones that minimize risk or discomfort. These contributions can provide invaluable insights for urban planners to improve infrastructure. They can also improve the risk awareness of existing cyclists' as well as support new cyclists, such as tourists, to safely explore a new urban environment by bike. Subjects: Computers and Society (cs. CY); Information Retrieval (cs. IR); Machine Learning (cs. LG); Machine Learning (stat. ML). Show more
Permanent link
https://doi.org/10.3929/ethz-b-000389402Publication status
publishedExternal links
Journal / series
arXivPages / Article No.
Publisher
Cornell UniversityOrganisational unit
03784 - Helbing, Dirk / Helbing, Dirk
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ETH Bibliography
yes
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