Recently, Professor Wang Chen's team at the School of Transportation of Southeast University, and Professor Xie Yuanchang's team from the University of Massachusetts Lowell, have made a significant breakthrough in the risk modeling of single-vehicle road departures on curved sections of highways (SVROR). To more realistically represent the dynamic risk of vehicles when turning on highways, this study, for the first time, introduced the diquark-antidiquark particle structure from high-energy physics and proposed a method for measuring the driving risk on highway single-vehicle curved sections (SVROR-CRM). This research has filled the gaps in the field of crash risk measure (CRM) for single-vehicle accidents, and the method can effectively quantify the risk of SVROR accidents, identify the driving risk trajectories, high-risk locations, and risk periods on horizontal curves of highways.
In highway curves, single-vehicle run-off-road (SVROR) accidents are influenced by multi-dimensional factors such as road alignment, road configuration characteristics, vehicle motion, driver operation, and traffic environment, which often lead to vehicle rollovers and severe casualties. However, the existing methods for measuring accident risks (such as traffic conflict technology, safety field theory) mainly focus on the collision risks between traffic participants, such as vehicle-to-vehicle and vehicle-to-pedestrian conflicts, and there is no risk measurement method specifically for modeling the risk of SVROR accidents on horizontal curves. In light of the limitations of current research and the development trend of connected vehicle (CV) technology, this study, relying on the high-granularity characteristics of CV data, has pioneered a method for measuring the risk of SVROR accidents. The main contributions are: