论文标题

使用高斯流程运动计划,在海上环境中无人体表面车辆的完全自主框架

A Fully-autonomous Framework of Unmanned Surface Vehicles in Maritime Environments using Gaussian Process Motion Planning

论文作者

Meng, Jiawei, Humne, Ankita, Bucknall, Richard, Englot, Brendan, Liu, Yuanchang

论文摘要

无人的地表车辆(USV)对海上行业越来越多的部门的重要性越来越重要,包括海上勘探,海洋运输和国防行动。 USV使用和部署使用和部署的主要因素是通过使用自主导航系统来提高操作灵活性,从而产生优化的轨迹。与陆地环境中的路径规划不同,海上环境中的规划更加要求,因为有必要确保采取缓解行动,以应对风和洋流的重要,随机且通常是不可预测的环境影响。本文以这些必要的要求为动机的主要基础,提出了一个新型运动计划者,称为GPMP2*,将基于GP的基于GP的运动计划者GPMP2的应用范围扩展到了复杂的海上环境中。基于蒙特卡洛的随机性的插值策略已被创新地添加到GPMP2*中,以产生一种名为GPMP2*的新算法,该算法具有蒙特 - 卡洛随机性(MC-GPMP2*),这可以增加所产生的路径的多样性。与Algorithm Design同时,已经提出了一个基于ROS的全自动框架,用于先进的无人体表面车辆WAM-V 20 USV。拟议的运动计划者以及完全自治的框架的实用性已在ROS的一个离岸风电场的模拟检查任务中得到了验证。

Unmanned surface vehicles (USVs) are of increasing importance to a growing number of sectors in the maritime industry, including offshore exploration, marine transportation and defence operations. A major factor in the growth in use and deployment of USVs is the increased operational flexibility that is offered through use of autonomous navigation systems that generate optimised trajectories. Unlike path planning in terrestrial environments, planning in the maritime environment is more demanding as there is need to assure mitigating action is taken against the significant, random and often unpredictable environmental influences from winds and ocean currents. With the focus of these necessary requirements as the main basis of motivation, this paper proposes a novel motion planner, denoted as GPMP2*, extending the application scope of the fundamental GP-based motion planner, GPMP2, into complex maritime environments. An interpolation strategy based on Monte-Carlo stochasticity has been innovatively added to GPMP2* to produce a new algorithm named GPMP2* with Monte-Carlo stochasticity (MC-GPMP2*), which can increase the diversity of the paths generated. In parallel with algorithm design, a ROS based fully-autonomous framework for an advanced unmanned surface vehicle, the WAM-V 20 USV, has been proposed. The practicability of the proposed motion planner as well as the fully-autonomous framework have been functionally validated in a simulated inspection missions for an offshore wind farm in ROS.

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