UUV 3D Path Planning Based on PSO-ACO Fusion Algorithm

Yanliang Chen, Wenhui Luo, Min Wang, Yixin Su, Huajie Zhang
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Abstract

In order to solve the problems of difficult convergence and local optimal solution of ant colony optimization (ACO) algorithm, and low convergence accuracy of particle swarm optimization (PSO) algorithm, a particle swarm optimization ant colony optimization (PSO-ACO) fusion algorithm is proposed to deal with the three-dimensional (3D) path planning problem of unmanned underwater vehicle (UUV). In this algorithm: based on the idea of spatial stratification, a 3D grid model is established to build underwater environment model; PSO algorithm is used to pre search the path and quickly obtain the solution, which is used as the initial pheromone increment of ACO algorithm; the pheromone global updating method of ACO algorithm is improved: an adjusting factor is added to the pheromone global update equation to accelerate the convergence speed of ACO algorithm; the state transition equation of ACO algorithm is also improved, so that the algorithm has a greater probability to select the point with the largest weighted product of pheromone and heuristic information as the next path point. Experimental results show that the fusion algorithm effectively improves the global search ability and shortens the search time.
基于PSO-ACO融合算法的UUV三维路径规划
针对蚁群优化(ACO)算法难以收敛和局部最优解,粒子群优化(PSO)算法收敛精度低等问题,提出了一种粒子群优化蚁群优化(PSO-ACO)融合算法来处理无人水下航行器(UUV)的三维路径规划问题。该算法基于空间分层的思想,建立三维网格模型,构建水下环境模型;采用粒子群算法对路径进行预搜索,快速得到解,并将解作为蚁群算法的初始信息素增量;改进了蚁群算法的信息素全局更新方法:在信息素全局更新方程中加入调节因子,加快了蚁群算法的收敛速度;改进了蚁群算法的状态转移方程,使算法更有可能选择信息素与启发式信息加权乘积最大的点作为下一个路径点。实验结果表明,该融合算法有效地提高了全局搜索能力,缩短了搜索时间。
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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