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自适应蚁群算法的无人机航迹规划方法
引用本文:任波,于雷,韩李勋.自适应蚁群算法的无人机航迹规划方法[J].电光与控制,2007,14(6):36-39.
作者姓名:任波  于雷  韩李勋
作者单位:空军工程大学工程学院,西安,710038;空军工程大学工程学院,西安,710038;空军工程大学工程学院,西安,710038
基金项目:优秀博士学位论文创新基金 , 军队科技攻关项目
摘    要:为了提高无人机完成任务效率,在执行攻击任务前必需规划设计出高效的无人机飞行航路.提出了一种Q-学习的自适应蚁群算法的无人机航路规划方法,建立了基于真实地形数据和火力威胁区的威胁模型;针对传统蚁群算法在搜索过程中出现停滞现象,提出的Q-学习的自适应蚁群算法有效地解决了这一缺陷.并使用该算法对无人机的攻击任务航路进行了仿真计算,仿真结果表明该方法是一种有效的航路规划方法.

关 键 词:无人机  航路规划  蚁群算法  数学形态学  威胁空间建模
文章编号:1671-637X(2007)06-0036-04
修稿时间:2006-07-07

On path planning for UAVs based on adaptive ant system algorithm
REN Bo,YU Lei,HAN Li-xun.On path planning for UAVs based on adaptive ant system algorithm[J].Electronics Optics & Control,2007,14(6):36-39.
Authors:REN Bo  YU Lei  HAN Li-xun
Abstract:To improve the efficiency of UAVs in combat mission,a highly effective flight path must be worked out ahead of taking the mission.A path planning scheme for UAVs based on Ant-Q System is studied in the paper,which seems quite promising for the path planning problem.We present a threat model on the basis of real terrain data and fire threats.Since stagnation may appear during searching in use of traditional ant colonies algorithm,we put forward an adaptive Ant-Q system algorithm for solving the problem.We give a simulation example in Fig.3 and Fig.4 to show that the method has some good characteristics and is effective in the path planning.
Keywords:UAV  path planning  ant colonies algorithm  mathematical morphology  threat space modeling
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