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arxiv: 1702.00135 · v2 · pith:2UR4CMUSnew · submitted 2017-02-01 · 💻 cs.SY

Analysis of Unprotected Intersection Left-Turn Conflicts based on Naturalistic Driving Data

classification 💻 cs.SY
keywords drivingltapscenariosanalysisbuildconflictsdataleft
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Analyzing and reconstructing driving scenarios is crucial for testing and evaluating automated vehicles. This research analyzed left turn / straight-driving conflicts at unprotected intersections by extracting actual vehicle motion data from a naturalistic driving database collected by the University of Michigan. Nearly 7,000 Left turn across path opposite direction (LTAP/OD) events involving heavy trucks and light vehicles were extracted and used to build a stochastic model of such LTAP/OD scenarios. Statistical analysis showed that vehicle type is a significant factor, whereas the change of season seems to have limited influence on the statistical nature of the conflict. The results can be used to build HAV testing environments to simulate the LTAP/OD crash cases in a stochastic manner, which is among the top NHTSA identified priority light-vehicle pre-crash scenarios.

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