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Fleet analysis of headway distance for autonomous driving
Institution:1. Center for Injury Research and Prevention at the Children''s Hospital of Philadelphia, 3535 Market Street, Suite 1150, Philadelphia, PA, 19104, United States;2. Monash University Accident Research Centre, 21 Alliance Lane, Clayton VIC 3800, Melbourne, Australia;1. National Center for Injury Prevention and Control, Centers for Disease Prevention and Control, 4770 Buford Highway, N.E., MS F62, Atlanta, GA 30341, United States;2. Oak Ridge Institute for Science and Education, 1299 Bethel Valley Rd., Oak Ridge, TN 3783, United States;1. Virginia Tech Transportation Institute, United States;2. Motorcycle Safety Foundation, United States
Abstract:IntroductionModern automobiles are going through a paradigm shift, where the driver may no longer be needed to drive the vehicle. As the self-driving vehicles are making their way to public roads the automakers have to ensure the naturalistic driving feel to gain drivers’ confidence and accelerate adoption rates.MethodThis paper filters and analyzes a subset of radar data collected from SHRP2 with focus on characterizing the naturalistic headway distance with respect to the vehicle speed.ResultsThe paper identifies naturalistic headway distance and compares it with the previous findings from the literature.ConclusionA clear relation between time headway and speed was confirmed and quantified. A significant difference exists among individual drivers which supports a need to further refine the analysis.Practical applicationsBy understanding the relationship between human driving and their surroundings, the naturalistic driving behavior can be quantified and used to increase the adoption rates of autonomous driving. Dangerous and safety-compromising driving can be identified as well in order to avoid its replication in the control algorithms.
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