基于遗传算法的约束车辆路径规划

M.B. Pellazar
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引用次数: 22

摘要

提出了一种基于遗传算法的自适应搜索方法,用于多飞行器在威胁密集环境中进行三维路径规划。本文描述了一种基于遗传算法的路线规划器,它能生成有效的车辆路线,并能很好地适应这些任务约束。基于遗传算法的飞行器路线规划的初步研究表明,这种方法是非常有前途的。本文通过集成完整的基于层次的任务管理系统,扩展了前人的研究。对几个实验结果进行了说明和讨论。这些实验主要集中在:(1)研究遗传算子类的有效构形;(2)确定将产生“接近最优”路线的GA操作员参数设置;(3)探索使用特定域的突变算子,称为“目标偏差突变”,以加快收敛;(4)将结果与著名的动态规划算法进行比较。
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Vehicle route planning with constraints using genetic algorithms
A route planning approach based on a class of adaptive search techniques called genetic algorithms (GAs) is presented for planning 3D routes for multiple air-vehicles through a threat dense environment. This paper describes a GA-based route planner which generates effective vehicle routes and elegantly accommodates these mission constraints. Preliminary studies on GA-based air-vehicle route planners has shown this approach to be very promising. This paper extends previous research through integration with a complete hierarchy-based mission management system. The results of several experiments are illustrated and discussed. The main thrust of these experiments focus on: (1) investigating effective configuration of classes of GA operators; (2) determining GA operator parameter settings that will produce "near-optimal" routes; (3) exploring the use of a domain-specific mutation operator, called "target bias mutation", for expediting convergence; and (4) comparing results against the well-known dynamic programming algorithm.<>
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