非高斯测量噪声下再入螺旋目标的估计与拦截

Aastha Dak, Asfia Urooj, R. Radhakrishnan
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引用次数: 0

摘要

本文研究了具有螺旋运动再入弹道目标的跟踪与拦截问题。拦截是由拦截导弹实现的,拦截导弹使用内置导引头收集所需的测量数据,从而产生对目标状态的准确估计。由于在雷达测量中观察到显著的异常值,因此重新审视了这些测量被高斯噪声破坏的通常假设。由于传统的估计量在测量异常值存在时容易发散,本文提出了一种结合最大相关熵(MC)准则的准确且稳健的估计算法。为此,提出了一种基于柯西核的MC无气味卡尔曼滤波器(CM-UKF),用于精确的状态估计。同时,实现了比例导航制导(PNG)规律,实现了可能的拦截。通过评估状态的平均脱靶距离和均方根误差(RMSE),比较了基于PNG律的CM-UKF与传统UKF和基于高斯核的MC-UKF (MC-UKF)的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation and Interception of a Spiralling Target on Reentry in the Presence of non-Gaussian Measurement Noise
This work addresses the problem of tracking and interception of a ballistic target having spiralling motion on re-entry. Interception is achieved by an interceptor missile which collects the required measurements using an inbuilt seeker, such that accurate estimates for target states are generated. The usual assumption that these measurements are corrupted by Gaussian noise is revisited, as significant outliers are observed in radar measurements. Since the conventional estimators tend to diverge in the presence of measurement outliers, this work propose an accurate and robust estimation algorithm by incorporating the maximum correntropy (MC) criterion. Hence, a Cauchy kernel based MC unscented Kalman filter (CM-UKF) is proposed for accurate state estimation. Also, proportional navigation guidance (PNG) law is implemented such that a possible interception is realized. The estimation accuracy of CM-UKF along with the PNG law is compared with that of the traditional UKF and Gaussian kernel based MC UKF (MC-UKF), by evaluating the average miss-distance and root mean square error (RMSE) in states.
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