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Journal Article

Citation

Chevalier A, Clarke E, Chevalier AJ, Brown J, Coxon K, Ivers R, Keay L. Traffic Injury Prev. 2017; 18(8): 845-851.

Affiliation

The George Institute for Global Health, Sydney Medical School, The University of Sydney , PO Box M201, Missenden Rd, NSW 2050 Australia.

Copyright

(Copyright © 2017, Informa - Taylor and Francis Group)

DOI

10.1080/15389588.2017.1315636

PMID

28379077

Abstract

OBJECTIVE: Real world driving studies, including those involving speeding alert devices and autonomous vehicles, can gauge an individual vehicle's speeding behaviour by comparing measured speed with mapped speed zone data. However, there are complexities with developing and maintaining a database of mapped speed zones over a large geographic area that may lead to inaccuracies within the dataset. When this approach is applied to large-scale real world driving data or speeding alert device data to determine speeding behaviour, these inaccuracies may result in invalid identification of speeding. We investigated speeding events based on service-provider speed zone data.

METHODS: We compared service provider speed zone data (Speed Alert by Smart Car Technologies Pty Ltd) against a second set of speed zone data (Google Maps Application Programming Interface (API) mapped speed zones).

RESULTS: We found a systematic error in the zones where speed limits of 50-60 km per hour, typical of local roads, were allocated to high speed motorways, which produced false speed limits in the speed zone database. The result was detection of false-positive high-range speeding. Through comparison of the service provider speed zone data against a second set of speed zone data, we were able to identify and eliminate data most affected by this systematic error, thereby establishing a dataset of speeding events with a high level of sensitivity (a true positive rate of 92% or 6412/6960).

CONCLUSIONS: Mapped speed zones can be a source of error in real world driving examining vehicle speed. We explored the types of inaccuracies found within speed zone data, and recommend a second set of speed zone data be utilised when investigating speeding behaviour or developing mapped speed zone data to minimise inaccuracy in estimates of speeding.


Language: en

Keywords

driving data; in-vehicle monitoring; real world; speed zone; speeding

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