Generation of dual missile strategies using genetic algorithms

P. A. Creaser, B. A. Stacey
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引用次数: 5

Abstract

The use of multiple missiles in order to improve the kill probability of a target is studied. The use of the same guidance law or strategy for two missiles fired from approximately the same position does not make the best use of the two to one numerical advantage during the engagement. The use of different guidance strategies is put forward as a method to improve the kill probability. The objective is to produce different intercept trajectories for the two missiles. In this study a medium to short range air-to-air engagement scenario using two active mono-pulse radar based homing missiles is considered. A genetic algorithm (GA) is used to generate two guidance laws which produce different trajectories for intercept and also improve the overall performance of the two missile system. The individual guidance laws produced by the GA are implemented using radial basis function neural networks (RBFN). The laws generate significantly different trajectories for the two missiles, producing a combination of side on and head on intercepts in some scenarios. Their performance and robustness is demonstrated and compared to two modern guidance laws by simulation. The dual RBFN laws are shown to outperform the two analytical laws and have a similar level of robustness.
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利用遗传算法生成双导弹策略
研究了利用多导弹提高目标杀伤概率的方法。使用相同的制导律或策略从大致相同的位置发射的两枚导弹不能在交战期间最好地利用二比一的数字优势。提出了采用不同制导策略来提高杀伤概率的方法。目标是为两种导弹制造不同的拦截轨迹。本文研究了一种采用双主动单脉冲雷达制导导弹的中短程空对空交战方案。采用遗传算法生成两种制导律,产生不同的拦截轨迹,提高了两种导弹系统的综合性能。利用径向基函数神经网络(RBFN)实现遗传算法生成的个体制导律。这些定律为两种导弹产生了明显不同的轨迹,在某些情况下产生了侧面和正面拦截的组合。仿真验证了该制导律的性能和鲁棒性,并与两种现代制导律进行了比较。双RBFN定律被证明优于两个分析定律,并且具有相似的鲁棒性水平。
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