IEEE Access (Jan 2024)
Road Design on Human Driver Accidents Versus Automated Vehicle Failures: Comparison With Real-World Field Data
Abstract
This paper attempts to solve the problem of identifying the critical factors of road design on human driver (HD) accidents and automated vehicle (AV) failures. This study is of immediate importance for the safety of the road, which must facilitate the wide emergence of commercialized vehicle automation technologies. We overcome the weakness of the current literature that relies on simulation to capture the safety of the road for AVs, by using real-world field data. We drive commercially available vehicles with driving automation technologies and collect data on their driving failures on the real road network of South Korea over a span of 6,730 kilometers. We additionally gather data on detailed road geometry like road curvature and road width, traffic operation, and HD accidents for the same roads. We implement a machine learning method to predict if a given road link has had any HD accidents and AV failures. A cross-validation experiment shows high prediction accuracy for HD accidents around 94% and for AV accidents around 82%, despite the unbalanced dataset on safe and unsafe road links. Moreover, the machine learning results are interpreted with Shapley Additive exPlanation method, and we identify critical safety factors of road geometry and operation that are common and distinct for the HDs and AVs. We find that the safety of human-driven and AVs are both affected by the traffic operation variables, such as the traffic speed and volume during peak and non-peak hours. However, AV failures are affected by road geometry, such as road curvature, road width, and spacing between streetlights, more than the HD accidents. AVs are safer in road links with higher speed limits than HDs. Also, AV failures are affected differently by structures, such as shock absorbers and junctions, to the HD accidents. From these findings, we provide policy recommendations on the safe road design for both HDs and AVs.
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