The fusion-based Path Planning for Near Seabed Autonomous Underwater Vehicles

Tianlong Yang, Yanhui Wei, Yongkang Hou, Tian Yu
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Abstract

Autonomous underwater vehicles (AUVs) have played a huge role in deep-sea operations and exploration. However, with the limited energy, AUV faces obstacles in complex underwater environments such as seamounts and trenches during near bottom operations. Therefore, planning the reasonable and efficient path is one of the important conditions for AUV to achieve underwater operations[1]. A new path planning method that combines improved RRT strategy and dynamic window analysis (DWA) is proposed to address the impact of underwater hydrodynamic forces and complex underwater environments on AUV during near bottom navigation. This proposed path planner has the following two advantages: one is to improve the global planning performance compared with the traditional RRT algorithm, and the other is to guarantee the real-time local planning capability via the DWA method. The superior performance of the developed planning algorithm is verified in the numerical examples.
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基于融合的近海床自主水下航行器路径规划
自主水下航行器(auv)在深海作业和勘探中发挥了巨大的作用。然而,由于能量有限,水下航行器在近海底作业时面临着海山、海沟等复杂水下环境的障碍。因此,规划合理高效的路径是AUV实现水下作业的重要条件之一[1]。针对水下动力力和复杂水下环境对水下航行器近底航行的影响,提出了一种将改进的RRT策略与动态窗口分析相结合的路径规划方法。本文提出的路径规划器具有以下两个优点:一是与传统的RRT算法相比,提高了全局规划性能;二是通过DWA方法保证了局部规划的实时性。数值算例验证了该规划算法的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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