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Deep Learning Midcourse Guidance for Interceptor Missile

机译:拦截弹的深度学习中途制导

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摘要

A midcourse guidance method of interceptor missile based on Long Short-Term Memory deep learning networks is studied in this paper. Comparing with the guidance method using traditional neural networks, the miss distance of this method is significantly reduced. In the simulation process, the real-time states of interceptor missile are taken as the inputs of deep learning networks, and the trajectory integration is carried out with the output vector. Moreover, the guidance method is improved by changing three characters: the density of the selected sample trajectory, the size of the sample airspace and the size of the simulation airspace. Also, simulations of the trajectories pointing to the random prediction intercept points selected in a certain simulation space are carried out. Different deep learning guidance rules should be selected according to different application conditions.
机译:本文研究了一种基于长短期记忆深度学习网络的拦截弹中段制导方法。与使用传统神经网络的制导方法相比,该方法的遗漏距离大大减少了。在仿真过程中,以拦截弹的实时状态作为深度学习网络的输入,并利用输出矢量进行弹道积分。此外,通过改变三个特征来改进制导方法:选择的样本轨迹的密度,样本空域的大小和模拟空域的大小。另外,对指向在某个模拟空间中选择的随机预测交点的轨迹进行模拟。应根据不同的应用条件选择不同的深度学习指导规则。

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