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A Novel Recurrent Convolutional Neural Network-Based Estimation Method for Switching Guidance Law

机译:一种新型复发性卷积神经网络的切换指导法的估算方法

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摘要

This paper presents a recurrent convolutional neural network-based estimation method of guidance parameters of the pursuer under augmented proportional navigation (APN) guidance law with a time-varying switching navigation ratio. For the highly maneuvering pursuit-evasion process, realistic factors in the guidance law estimation are considered, such as the pursuer's estimation error and delay of the evader's acceleration in the APN guidance law. In view of the enormous measurement data, time dependency, transient change and unknown factors' disturbance in switching guidance law estimation, a novel neural network structure is built. 1-D CNN layer is used to extract features from enormous data obtained by the multiple previous measurements. The features extracted are processed by the recurrent cell to exploit the time dependency and eliminate the error caused by unknown factors. The result of ablation test shows the proposed RCNN's improved performance over single CNN or RNN. Compared to the multiple model guidance law estimation method, the proposed method can simplify the design of guidance law estimation system and reduce calculation load. The estimation result for switching guidance law shows the proposed method has higher accuracy and faster convergence rate than traditional interactive multiple model methods.
机译:本文提出了一种经常性的卷积神经网络基于追溯参数的追溯参数,其在增强比例导航(APN)指导法下具有时变的切换导航率。对于高机动的追求逃避过程,考虑了指导法估计中的现实因素,例如追求估计误差和避难者在APN指导法中的加速延迟。鉴于巨大的测量数据,时间依赖性,瞬态变化和未知因素在切换指导法估计方面的干扰,建立了一种新型神经网络结构。 1-D CNN层用于从多个先前测量获得的巨大数据中提取特征。提取的特征由反复电池处理,以利用时间依赖性并消除由未知因素引起的误差。消融测试的结果表明,所提出的RCNN改进的单一CNN或RNN的性能。与多模型引导法估算方法相比,所提出的方法可以简化指导法估算系统的设计并减少计算负荷。切换指导法的估计结果显示了所提出的方法具有比传统的交互式多模型方法更高的准确性和更快的会聚率。

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