Improved heuristic and evolutionary methods for tactical missile mission planning

Cagatay Tanil
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引用次数: 2

Abstract

In this paper, improved heuristic and evolutionary methods are presented for pre-launch trajectory optimization of a tactical missile. Computation time and trajectory length are minimized as objectives whereas maneuverability of the missile, total amount of fuel, obstacles, no-fly zones, islands, shorelines are considered to be constraints. There are two main methods developed for this purpose. One method is based on heuristic search by adaptive-based A* algorithm. In this method, sub-optimal path is obtained by constructing a network in which node distance (leg length) and node intensity can be changed adaptively with respect to mission environment in the search time. This enhancement in conventional A* method leads to closer optimal trajectories in less computation load especially in complex mission scenarios such as shorelines having narrow pass, too many unintended targets or friends etc. The other proposed path planning method is improved genetic algorithm. This algorithm has a variable-length chromosome and a real-valued encoding as well as an intelligent population creation method that produces feasible individuals only. By means of starting with a feasible population, it is observed that convergence time is far less than using random creation of initial population. Furthermore, for rapid analysis and comparison of the two proposed methods in different environments, a generic graphical user interface (MPT-The Mission Planning Tool) is developed.
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战术导弹任务规划的改进启发式和进化方法
针对战术导弹发射前弹道优化问题,提出了改进的启发式和进化方法。以计算时间和弹道长度最小化为目标,以导弹机动性、燃料总量、障碍物、禁飞区、岛屿、海岸线为约束条件。为此目的开发了两种主要方法。一种方法是基于自适应A*算法的启发式搜索。该方法通过构建一个节点距离(腿长)和节点强度在搜索时间内可随任务环境自适应变化的网络来获得次优路径。这种对传统A*方法的改进可以在更少的计算负荷下获得更接近的最优轨迹,特别是在复杂的任务场景中,如海岸线有狭窄的通道,太多的意外目标或朋友等。另一种路径规划方法是改进的遗传算法。该算法具有变长染色体和实值编码,以及只产生可行个体的智能种群生成方法。从可行种群开始,收敛时间远小于随机创建初始种群。此外,为了在不同环境下快速分析和比较两种提出的方法,开发了一个通用图形用户界面(mpt -任务规划工具)。
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