论文标题
预防目标取消的负载因子的优化
Optimization of loading factor preventing target cancellation
论文作者
论文摘要
基于样品矩阵反转的自适应算法属于雷达目标检测中使用的一类重要算法,以克服干扰协方差的先前不确定性。样品矩阵倒置问题通常不适合条件。此外,通过有用的信号对经验协方差矩阵的污染导致了这类自适应算法的性能显着降解。正则化(在雷达文献中也称为样品协方差加载)可用于应对原始问题的不良调节和通过所需信号对经验协方差的污染。但是,除非对协方差矩阵的结构和有用的信号穿透模型做出了强有力的假设,否则无法得出加载因子的最佳值。在本文中,提出了一种基于经验信号与干扰加噪声比(SINR)的最大化的载荷因子优化的迭代算法。所提出的解决方案不依赖于有关经验协方差矩阵和信号穿透模型的结构的任何假设。本文还提供了模拟示例,显示了提出的解决方案的有效性。
Adaptive algorithms based on sample matrix inversion belong to an important class of algorithms used in radar target detection to overcome prior uncertainty of interference covariance. Sample matrix inversion problem is generally ill conditioned. Moreover, the contamination of the empirical covariance matrix by the useful signal leads to significant degradation of performance of this class of adaptive algorithms. Regularization, also known in radar literature as sample covariance loading, can be used to combat both ill conditioning of the original problem and contamination of the empirical covariance by the desired signal. However, the optimum value of loading factor cannot be derived unless strong assumptions are made regarding the structure of covariance matrix and useful signal penetration model. In this paper an iterative algorithm for loading factor optimization based on the maximization of empirical signal to interference plus noise ratio (SINR) is proposed. The proposed solution does not rely on any assumptions regarding the structure of empirical covariance matrix and signal penetration model. The paper also presents simulation examples showing the effectiveness of the proposed solution.