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Autonomous Vehicles' Decision-Making Behavior in Complex Driving Environments Using Deep Reinforcement Learning

机译:深度强化学习在复杂驾驶环境中自动驾驶汽车的决策行为

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Automated vehicles (AV) are considered the key element of intelligent transportation systems in the future. Most studies about AV's behavior decision are based on oversimplified driving environments. With multiple conflicting objects and behaviors in the complex driving environment, traditional modeling methods cannot make effective behavior decisions. This paper proposes a deep reinforcement learning (DRL) method to solve the problem of AV's decision behavior modeling in complex environments. The DRL model is based on a deep deterministic policy gradient (DDPG), considering rule-based constraints. DDPG can make an action choice in a continuous-value space. Rule-based constrains are composed of safety constraints and dynamic constraints, added into the learning process to avoid unreasonable situations. Three reward functions are discussed in this paper. Compared with model convergence and validity, the reward function that integrated both safety and efficiency factors performs best. This study validated the effects of constraints and the validity of the model.
机译:自动驾驶汽车(AV)被认为是未来智能交通系统的关键要素。大多数有关AV行为决策的研究都是基于过于简化的驾驶环境。在复杂的驾驶环境中,由于存在多个相互冲突的对象和行为,因此传统的建模方法无法做出有效的行为决策。本文提出了一种深度强化学习(DRL)方法,以解决复杂环境中AV的决策行为建模问题。 DRL模型基于深度确定性策略梯度(DDPG),并考虑了基于规则的约束。 DDPG可以在连续值空间中选择操作。基于规则的约束由安全约束和动态约束组成,添加到学习过程中可避免出现不合理的情况。本文讨论了三个奖励函数。与模型的收敛性和有效性相比,集成了安全性和效率性因素的奖励函数表现最佳。这项研究验证了约束的影响和模型的有效性。

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