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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Research Progress of Path Planning Methods for Autonomous Underwater Vehicle
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Research Progress of Path Planning Methods for Autonomous Underwater Vehicle

机译:自主水下车道路径规划方法的研究进展

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摘要

Path planning is a key technology for autonomous underwater vehicle (AUV) navigation. With the emphasis and research on AUV, AUV path planning technology is continuously developing. Path planning techniques generally include environment modelling methods and path planning algorithms. Based on a brief description of the environment modelling methods, this paper focuses on the path planning algorithms commonly used by AUV. According to the basic principles of the algorithm, the AUV path planning algorithms are divided into four categories: artificial potential field methods, geometric model search methods, random sampling methods, and intelligent bionic methods. In this review, we summarize in detail the development and application of various path planning algorithms in recent years. Meanwhile, we analyse the advantages and disadvantages of various algorithms and their improvement methods. Obstacles, ocean currents, and undersea terrain have an impact on AUV path planning. Therefore, how to deal with the complex underwater environment adds some limits to AUV path planning algorithms. In addition to the external environment, path planning algorithms also need to consider AUV’s physical constraints, such as energy constraints and motion constraints. Then, we analyse the motion constraints in AUV path planning. Finally, we discuss the development direction of AUV path planning algorithm. Time-varying ocean currents, special obstacles, multiobjective constraints, and practicability will be the problems that AUV path planning algorithms need to solve.
机译:路径规划是自主式水下航行器(AUV)导航的关键技术。随着重视和研究的水下机器人,水下机器人路径规划技术在不断发展。路径规划技术一般包括环境建模方法和路径规划算法。基于对环境建模方法的简要说明,本文着重对水下机器人常用的路径规划算法。根据算法的基本原理,水下机器人路径规划算法分为四类:人工势场的方法,几何模型的搜索方法,随机抽样的方法,以及智能仿生方法。在这次审查中,我们详细总结了近几年的发展和各种路径规划算法的应用。同时,我们分析的优势和各种算法的优缺点及其改进方法。障碍物,洋流,和海底地形对水下机器人路径规划的影响。因此,如何应对复杂的水下环境增加了一些限制,以水下机器人路径规划算法。除了外部环境,路径规划算法,还需要考虑AUV的物理限制,如能源约束和运动约束。然后,我们分析了水下机器人路径规划的运动约束。最后,我们讨论AUV路径规划算法的发展方向。随时间变化的洋流,特殊障碍,多目标约束和实用性将是AUV路径规划算法需要解决的问题。

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