基于优化A*和动态窗口法的无人水面车辆路径规划

Xiong Nan
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引用次数: 0

摘要

传统的无人地面车辆路径规划算法存在实时性差、路径规划效率低、容易陷入局部最优等问题。针对上述问题,本文提出了一种将优化a *算法与动态窗口法相结合的无人水面车辆路径规划算法。该算法首先对传统A*算法的代价函数和路径搜索方法进行了优化调整,其次采用双折线优化策略,大大减少了路径拐点的数量,提高了全局路径的平滑度。最后,通过在动态窗口法的评价函数中引入路径评价子函数,将优化后的A*算法与动态窗口法相结合。仿真结果表明,该算法在静态环境下的路径搜索效率较传统A*算法有明显提高,路径平滑度优于传统A*算法,在动态环境下具有良好的动态避障效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path Planning of Unmanned Surface Vehicle Integrating Optimized A* and Dynamic Window Approach
There are problems such as poor real-time performance, low efficiency of path planning, and easy to fall into local optimum when using traditional path planning algorithms for unmanned surface vehicle path planning. Aiming at the above problems, this paper proposes a path planning algorithm for unmanned surface vehicles that integrates the optimized A* algorithm and the dynamic window approach. The algorithm firstly optimizes and adjusts the cost function and path search method of the traditional A* algorithm, and secondly adopts the double broken line optimization strategy to greatly reduce the number of path inflection points and improve the smoothness of the global path. Finally, by introducing the path evaluation sub-function into the evaluation function of the dynamic window approach, the optimized A* algorithm is integrated with the dynamic window approach. The simulation results show that the path search efficiency of the algorithm in the static environment is significantly improved compared with the traditional A* algorithm, the smoothness of the path is better than that of the traditional A* algorithm, and it has a good dynamic obstacle avoidance effect in the dynamic environment.
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