%0 Journal Article %A Han Wei %A Wu Jian %A Yang Shun %A Zhang Sumin %T Autonomous driving in the uncertain traffic -- a deep reinforcement learning approach %D 2018 %R 10.19682/j.cnki.1005-8885.2018.1024 %J 中国邮电高校学报(英文) %P 21-30 %V 25 %N 6 %X Driving in the complex traffic safely and efficiently is a difficult task for autonomous vehicle because of the stochastic characteristics of engaged human drivers. Deep reinforcement learning (DRL), which combines the abstract representation capability of deep learning (DL) and the optimal decision making and control capability of reinforcement learning (RL), is a good approach to address this problem. Traffic environment is built up by combining intelligent driver model (IDM) and lane-change model as behavioral model for vehicles. To increase the stochastic of the established traffic environment, tricks such as defining a speed distribution with cutoff for traffic cars and using various politeness factors to represent distinguished lane-change style, are taken. For training an
artificial agent to achieve successful strategies that lead to the greatest long-term rewards and sophisticated maneuver, deep deterministic policy gradient (DDPG) algorithm is deployed for learning. Reward function is designed to get a trade-off between the vehicle speed, stability and driving safety. Results show that the proposed approach can achieve good autonomous maneuvering in a scenario of complex traffic behavior through interaction with the environment. %U https://jcupt.bupt.edu.cn/CN/10.19682/j.cnki.1005-8885.2018.1024