Journal ArticleUnknown
A deep reinforcement learning-based intelligent intervention framework for real-time proactive road safety management
Authors
Author Affiliations
Islamic University of Technology, Tokyo Institute of Technology
Published InAccident Analysis & Prevention
Year2021
Citations29
Abstract
We propose a variable speed limit (VSL) system for improving the safety of urban expressways in real time. The system has two main functions: monitoring traffic data and then using the data to assess crash risk through a real-time crash prediction model (RTCPM). When the risk is high, the system triggers VSL control to restore traffic conditions to normal. The study addresses several weaknesses in existing VSL-based real-time safety interventions. Existing models are not widely applicable due to varying detector spacing among different freeways, and even within a study area. Therefore, with the existing detector spacing as an input, a cell transmission model (CTM) is used to simulate traffic states for the desired cell size. A dynamic Bayesian network (DBN)…
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