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Decision-Making for the Autonomous Navigation of Maritime Autonomous Surface Ships Based on Scene Division and Deep Reinforcement Learning

机译:基于场景师和深增强学习的海上自主地面船舶自主导航的决策

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This research focuses on the adaptive navigation of maritime autonomous surface ships (MASSs) in an uncertain environment. To achieve intelligent obstacle avoidance of MASSs in a port, an autonomous navigation decision-making model based on hierarchical deep reinforcement learning is proposed. The model is mainly composed of two layers: the scene division layer and an autonomous navigation decision-making layer. The scene division layer mainly quantifies the sub-scenarios according to the International Regulations for Preventing Collisions at Sea (COLREG). This research divides the navigational situation of a ship into entities and attributes based on the ontology model and Protégé language. In the decision-making layer, we designed a deep Q-learning algorithm utilizing the environmental model, ship motion space, reward function, and search strategy to learn the environmental state in a quantized sub-scenario to train the navigation strategy. Finally, two sets of verification experiments of the deep reinforcement learning (DRL) and improved DRL algorithms were designed with Rizhao port as a study case. Moreover, the experimental data were analyzed in terms of the convergence trend, iterative path, and collision avoidance effect. The results indicate that the improved DRL algorithm could effectively improve the navigation safety and collision avoidance.
机译:本研究侧重于在不确定环境中的海上自主表面船舶(质量)的自适应导航。为了在港口实现智能障碍物,提出了一种基于分层深度增强学习的自主导航决策模型。该模型主要由两层组成:场景分割层和自主导航决策层。场景分部层主要定量根据防止海上碰撞的国际法规(Colreg)的子情景。本研究将船舶的导航情况划分为基于本体模型和Protégé语言的实体和属性。在决策层中,我们设计了利用环境模型,船舶运动空间,奖励功能和搜索策略来学习量化子场景中的环境状态以培训导航策略的深度Q学习算法。最后,使用Rizhao Port作为研究案例,设计了两组深度增强学习(DRL)和改进的DRL算法的验证实验。此外,在收敛趋势,迭代路径和碰撞避免效果方面分析了实验数据。结果表明,改进的DRL算法可以有效地提高导航安全和避免碰撞。

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