Using Low-Cost Smartphone Sensor Data For Locating Accident Risk Spots In A Road Network

  • Claus Aichinger (Speaker)
  • , Philippe Nitsche
  • , Rainer Stütz
  • , Marko Harnisch

Research output: Chapter in Book or Conference ProceedingsConference Proceedings with Poster Presentationpeer-review

Abstract

This paper investigates the use of smartphones in vehicle fleets for identifying high-risk locations in a road network, before a crash may have happened. A novel method is proposed on how to use smartphone GPS and motion sensor data to automatically recognize critical car driving situations and near-misses such as emergency braking, evasion manoeuvres or sudden driving speed changes. In the area of Vienna, Austria, approximately 200 hours of driving data were collected with a dedicated smartphone app, from about 100 drivers covering more than 8,000 km. Additionally, various near-miss manoeuvres were measured on a closed test track under controlled conditions. In post-processing, this data was analysed in terms of driver-specific thresholds for critical driving situations. Results show that by using this modelling approach, critical situations can be accurately identified and geographically located with smartphones. An interface to traffic management would allow near-miss information to be used along accident data in the improvement of safety and efficiency of a traffic system. A combination of the proposed method with digital maps enables future applications for traffic and fleet managers, such as a "road safety hazard map".
Original languageEnglish
Title of host publicationProceedings of 6th Transport Research Arena, April 18-21, 2016, Warsaw, Poland
Publication statusPublished - 2016
EventKonferenz: TRA 2016 -
Duration: 18 Apr 201621 Apr 2016

Conference

ConferenceKonferenz: TRA 2016
Period18/04/1621/04/16

Research Field

  • Former Research Field - Mobility Systems

Keywords

  • Road safety; Smartphone; Near-miss recognition; Driving manoeuvre; Crash risk

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