Aeolus Ocean - A simulation environment for the autonomous COLREG-compliant navigation of Unmanned Surface Vehicles using Deep Reinforcement Learning and Maritime Object Detection

ArXiv Pub Date : 2023-07-13 DOI:10.48550/arXiv.2307.06688
A. Vekinis, S. Perantonis
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Abstract

Heading towards navigational autonomy in unmanned surface vehicles (USVs) in the maritime sector can fundamentally lead towards safer waters as well as reduced operating costs, while also providing a range of exciting new capabilities for oceanic research, exploration and monitoring. However, achieving such a goal is challenging. USV control systems must, safely and reliably, be able to adhere to the international regulations for preventing collisions at sea (COLREGs) in encounters with other vessels as they navigate to a given waypoint while being affected by realistic weather conditions, either during the day or at night. To deal with the multitude of possible scenarios, it is critical to have a virtual environment that is able to replicate the realistic operating conditions USVs will encounter, before they can be implemented in the real world. Such"digital twins"form the foundations upon which Deep Reinforcement Learning (DRL) and Computer Vision (CV) algorithms can be used to develop and guide USV control systems. In this paper we describe the novel development of a COLREG-compliant DRL-based collision avoidant navigational system with CV-based awareness in a realistic ocean simulation environment. The performance of the trained autonomous Agents resulting from this approach is evaluated in several successful navigations to set waypoints in both open sea and coastal encounters with other vessels. A binary executable version of the simulator with trained agents is available at https://github.com/aavek/Aeolus-Ocean
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Aeolus Ocean -使用深度强化学习和海上目标检测的无人水面车辆自主colreg兼容导航的仿真环境
在海上领域,无人水面航行器(usv)的自主导航可以从根本上带来更安全的水域,降低运营成本,同时也为海洋研究、勘探和监测提供了一系列令人兴奋的新功能。然而,实现这样的目标是具有挑战性的。无人潜航器控制系统必须安全可靠地遵守国际海上防碰撞规则(COLREGs),因为它们在白天或晚上航行到给定的航路点时,会受到实际天气条件的影响。为了应对多种可能的情况,在usv在现实世界中实施之前,拥有一个能够复制usv将遇到的实际操作条件的虚拟环境至关重要。这种“数字双胞胎”构成了深度强化学习(DRL)和计算机视觉(CV)算法可用于开发和指导USV控制系统的基础。在本文中,我们描述了在现实海洋模拟环境中基于cvv感知的COLREG-compliant基于drl的避碰导航系统的新发展。经过训练的自主智能体的性能在几次成功的航行中得到了评估,这些航行可以在公海和沿海遇到其他船只时设置航点。具有经过训练的代理的模拟器的二进制可执行版本可在https://github.com/aavek/Aeolus-Ocean上获得
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