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An Autonomous Path Planning Model for Unmanned Ships Based on Deep Reinforcement Learning

机译:基于深度强化学习的无人舰船自主路径规划模型

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摘要

Deep reinforcement learning (DRL) has excellent performance in continuous control problems and it is widely used in path planning and other fields. An autonomous path planning model based on DRL is proposed to realize the intelligent path planning of unmanned ships in the unknown environment. The model utilizes the deep deterministic policy gradient (DDPG) algorithm, through the continuous interaction with the environment and the use of historical experience data; the agent learns the optimal action strategy in a simulation environment. The navigation rules and the ship’s encounter situation are transformed into a navigation restricted area, so as to achieve the purpose of planned path safety in order to ensure the validity and accuracy of the model. Ship data provided by ship automatic identification system (AIS) are used to train this path planning model. Subsequently, the improved DRL is obtained by combining DDPG with the artificial potential field. Finally, the path planning model is integrated into the electronic chart platform for experiments. Through the establishment of comparative experiments, the results show that the improved model can achieve autonomous path planning, and it has good convergence speed and stability.
机译:深度强化学习(DRL)在连续控制问题中具有出色的表现,并且广泛用于路径规划和其他领域。提出了一种基于DRL的自主路径规划模型,以实现未知环境下无人舰船的智能路径规划。该模型通过与环境的持续交互以及使用历史经验数据,利用了深度确定性策略梯度(DDPG)算法;代理可以在模拟环境中学习最佳行动策略。将导航规则和船舶的相遇情况转换为导航限制区域,以达到计划的路径安全的目的,以确保模型的有效性和准确性。船舶自动识别系统(AIS)提供的船舶数据用于训练此路径规划模型。随后,通过将DDPG与人工势场相结合来获得改进的DRL。最后,将路径规划模型集成到电子海图平台中进行实验。通过建立对比实验,结果表明改进后的模型可以实现自主路径规划,收敛速度快,稳定性好。

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