Autonomous driving decision-making is a challenging task due to the inherent complexity and uncertainty in traffic. For example, adjacent vehicles may change their lane or overtake at any time to pass a slow vehicle or to help traffic flow. Anticipating the intention of surrounding vehicles, estimating their future states and integrating them into the decision-making process of an automated vehicle can enhance the reliability of autonomous driving in complex driving scenarios. This paper proposes a Prediction-based Deep Reinforcement Learning (PDRL) decision-making model that considers the manoeuvre intentions of surrounding vehicles in the decision-making process for highway driving. The model is trained using real traffic data and tested in various traffic conditions through a simulation platform. The results show that the proposed PDRL model improves the decision-making performance compared to a Deep Reinforcement Learning (DRL) model by decreasing collision numbers, resulting in safer driving.
翻译:由于交通的内在复杂性和不确定性,自主驾驶决策是一项具有挑战性的任务,例如,相邻车辆可随时改变其车道或超载,以通过慢速车辆或帮助交通流动;预期周围车辆的意图,估计其未来状态并将其纳入自动车辆的决策过程,可以提高在复杂驾驶情况下自主驾驶的可靠性;本文件建议采用基于预测的深加强化学习(PDRL)决策模式,在高速公路驾驶决策过程中考虑周围车辆的机动性意图;该模式可使用实际交通数据进行培训,并通过模拟平台在各种交通条件下测试;结果显示,拟议的PDRL模式通过减少碰撞次数,提高决策性能,与深加学习(DRL)模式相比,从而导致更安全的驾驶。