Machine Learning-based Modeling and Uncertainty Quantification for Radar Cross Section of a Cone-like Target

Dan Guo, Jia Zhai, Xiaodan Xie, Hongcheng Yin, Yong Zhu
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引用次数: 2

Abstract

Radar cross section (RCS) plays an important role in the recognition of targets. RCS varies dramatically with the incident angle and the size of targets, and it is difficult to accurately predict the RCS values. In this paper, an efficient modeling and uncertainty quantification method based on the support vector machine and the k-nearest neighbor is proposed for the RCS prediction of cone-like targets. The proposed method is compared with two uncertainty quantification methods, an ensemble based on lower upper bound estimation and a neural network with dropout. The root mean square error, the prediction interval coverage probability, the mean prediction interval width and the computation time are used as the performance metrics, and the experimental results demonstrate that the proposed method is superior to the compared methods in accuracy and efficiency.
基于机器学习的锥形目标雷达截面建模与不确定性量化
雷达截面(RCS)在目标识别中起着重要的作用。RCS随入射角和目标尺寸变化很大,很难准确预测RCS值。本文提出了一种基于支持向量机和k近邻的锥形目标RCS预测的高效建模和不确定性量化方法。将该方法与基于下界估计的集成和带dropout的神经网络两种不确定性量化方法进行了比较。以均方根误差、预测区间覆盖概率、平均预测区间宽度和计算时间作为性能指标,实验结果表明,该方法在精度和效率上都优于同类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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