Application of Improved Genetic Algorithm to Unmanned Surface Vehicle Path Planning

Yang Long, Yixin Su, Huajun Zhang, Ming Li
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引用次数: 9

Abstract

Lake patrol is an important part of lake water environment management and the path planning is the key problem to lake patrol. In order to solve this kind of path planning problem, an improved genetic algorithm is proposed. A new initial population method is proposed to create a better quality of the initial population, and the adaptive crossover probability and mutation probability are designed. In this paper, the grid method is used to construct the working environment of the lake patrol unmanned surface vehicle (USV). Compared with the traditional genetic algorithm, the improved genetic algorithm can obtain the shorter and safer non-collision path in different lake environments. The simulation results demonstrate that the path planning of the lake patrol USV with the improved genetic algorithm is reasonable and effective.
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改进遗传算法在无人地面车辆路径规划中的应用
湖泊巡逻是湖泊水环境管理的重要组成部分,路径规划是湖泊巡逻的关键问题。为了解决这类路径规划问题,提出了一种改进的遗传算法。为了获得更好的初始种群质量,提出了一种新的初始种群方法,并设计了自适应交叉概率和突变概率。本文采用网格化方法构建了湖巡无人水面车的工作环境。与传统的遗传算法相比,改进的遗传算法在不同的湖泊环境下可以获得更短、更安全的无碰撞路径。仿真结果表明,采用改进的遗传算法对湖泊巡逻无人潜航器进行路径规划是合理有效的。
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