强化学习
计算机科学
概率逻辑
人工智能
职位(财务)
风险分析(工程)
财务
医学
经济
作者
Guofa Li,Yifan Yang,Shen Li,Xingda Qu,Nengchao Lyu,Shengbo Eben Li
标识
DOI:10.1016/j.trc.2021.103452
摘要
Driving safety is the most important element that needs to be considered for autonomous vehicles (AVs). To ensure driving safety, we proposed a lane change decision-making framework based on deep reinforcement learning to find a risk-aware driving decision strategy with the minimum expected risk for autonomous driving. Firstly, a probabilistic-model based risk assessment method was proposed to assess the driving risk using position uncertainty and distance-based safety metrics. Then, a risk aware decision making algorithm was proposed to find a strategy with the minimum expected risk using deep reinforcement learning. Finally, our proposed methods were evaluated in CARLA in two scenarios (one with static obstacles and one with dynamically moving vehicles). The results show that our proposed methods can generate robust safe driving strategies and achieve better driving performances than previous methods.
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