Risk-anticipatory autonomous driving strategies considering vehicles' weights, based on hierarchical deep reinforcement learning
Di Chen, Hao Li, Zhicheng Jin, Huizhao Tu, Meixin Zhu

TL;DR
This paper presents a hierarchical deep reinforcement learning approach for autonomous driving that considers vehicle weights and risk anticipation to improve safety and efficiency, especially on highways with heavy vehicles.
Contribution
It introduces a novel risk indicator based on vehicle weights, a hybrid action space, and an attention-enhanced HPPO algorithm for safer, more realistic autonomous driving strategies.
Findings
Reduces likelihood of potential accidents.
Decreases consequences of collisions.
Maintains driving efficiency.
Abstract
Autonomous vehicles (AVs) have the potential to prevent accidents caused by drivers errors and reduce road traffic risks. Due to the nature of heavy vehicles, whose collisions cause more serious crashes, the weights of vehicles need to be considered when making driving strategies aimed at reducing the potential risks and their consequences in the context of autonomous driving. This study develops an autonomous driving strategy based on risk anticipation, considering the weights of surrounding vehicles and using hierarchical deep reinforcement learning. A risk indicator integrating surrounding vehicles weights, based on the risk field theory, is proposed and incorporated into autonomous driving decisions. A hybrid action space is designed to allow for left lane changes, right lane changes and car-following, which enables AVs to act more freely and realistically whenever possible. To…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic control and management · Transportation and Mobility Innovations
