蚁群优化算法
计算机科学
算法
路径(计算)
局部最优
节点(物理)
数学优化
运动规划
趋同(经济学)
蚁群
启发式
人工智能
数学
机器人
工程类
经济
程序设计语言
结构工程
经济增长
作者
Lina Wang,Hejing Wang,Xin Yang,Yanfeng Gao,Xiaohong Cui,Binrui Wang
标识
DOI:10.3389/fnbot.2022.955179
摘要
Aiming at the problems of slow convergence and easy fall into local optimal solution of the classic ant colony algorithm in path planning, an improved ant colony algorithm is proposed. Firstly, the Floyd algorithm is introduced to generate the guiding path, and increase the pheromone content on the guiding path. Through the difference in initial pheromone, the ant colony is guided to quickly find the target node. Secondly, the fallback strategy is applied to reduce the number of ants who die due to falling into the trap to increase the probability of ants finding the target node. Thirdly, the gravity concept in the artificial potential field method and the concept of distance from the optional node to the target node are introduced to improve the heuristic function to make up for the fallback strategy on the convergence speed of the algorithm. Fourthly, a multi-objective optimization function is proposed, which comprehensively considers the three indexes of path length, security, and energy consumption and combines the dynamic optimization idea to optimize the pheromone update method, to avoid the algorithm falling into the local optimal solution and improve the comprehensive quality of the path. Finally, according to the connectivity principle and quadratic B-spline curve optimization method, the path nodes are optimized to shorten the path length effectively.
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