AI Agents 相关度: 8/10

Sim2Sea: Sim-to-Real Policy Transfer for Maritime Vessel Navigation in Congested Waters

Xinyu Cui, Xuanfa Jin, Xue Yan, Yongcheng Zeng, Luoyang Sun, Siying Wei, Ruizhi Zhang, Jian Zhao, Haifeng Zhang, Jun Wang
arXiv: 2603.04057v1 发布: 2026-03-04 更新: 2026-03-04

AI 摘要

Sim2Sea框架通过仿真到真实的迁移,实现了拥挤水域中无人船的自主导航。

主要贡献

  • 开发了GPU加速的并行水域仿真器
  • 设计了双流时空策略和基于速度障碍的动作屏蔽机制
  • 提出了有针对性的领域随机化方案

方法论

利用并行仿真、时空策略和领域随机化,训练仿真环境中的策略,并零样本迁移到真实世界。

原文摘要

Autonomous navigation in congested maritime environments is a critical capability for a wide range of real-world applications. However, it remains an unresolved challenge due to complex vessel interactions and significant environmental uncertainties. Existing methods often fail in practical deployment due to a substantial sim-to-real gap, which stems from imprecise simulation, inadequate situational awareness, and unsafe exploration strategies. To address these, we propose \textbf{Sim2Sea}, a comprehensive framework designed to bridge simulation and real-world execution. Sim2Sea advances in three key aspects. First, we develop a GPU-accelerated parallel simulator for scalable and accurate maritime scenario simulation. Second, we design a dual-stream spatiotemporal policy that handles complex dynamics and multi-modal perception, augmented with a velocity-obstacle-guided action masking mechanism to ensure safe and efficient exploration. Finally, a targeted domain randomization scheme helps bridge the sim-to-real gap. Simulation results demonstrate that our method achieves faster convergence and safer trajectories than established baselines. In addition, our policy trained purely in simulation successfully transfers zero-shot to a 17-ton unmanned vessel operating in real-world congested waters. These results validate the effectiveness of Sim2Sea in achieving reliable sim-to-real transfer for practical autonomous maritime navigation.

标签

自主导航 仿真到真实 强化学习 无人船 领域随机化

arXiv 分类

cs.RO cs.AI