Performance characterization of space-time adaptive processing algorithms for distributed target detection in non-ideal environments

K. McDonald, Rick S. Blum
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引用次数: 6

Abstract

The use of adaptive algorithms to mitigate the detrimental effects of noise on receivers employing antenna arrays is instrumental in modern day radar systems applications. In most of these algorithms, the target is assumed to be confined to only one range cell. Under practical operating conditions, the target can actually be distributed across several range cells. This signal contamination causes the performance of the adaptive algorithm to degrade. Also, a covariance matrix is used for clutter-plus-noise in the design of the adaptive algorithm. This quantity is usually characterized by using samples taken from range cells surrounding the test cell. Performance suffers if the underlying test cell covariance matrix is different from the average covariance matrix of the surrounding range cells. We analyze a space-time adaptive processing (STAP) algorithm designed to utilize signal contamination to the advantage of the receiver. Expressions for performance, incorporating the possibility of covariance matrix mismatch, are developed for such distributed target scenarios. Numerical analysis illustrates that the presented algorithm functions significantly better than traditional STAP algorithms in signal contaminated environments. This investigation also shows how variations in the parameters that describe covariance matrix mismatch affect performance.
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非理想环境下分布式目标检测的时空自适应处理算法性能表征
使用自适应算法来减轻噪声对采用天线阵列的接收机的有害影响在现代雷达系统应用中是有用的。在这些算法中,大多数假设目标被限制在一个距离单元中。在实际操作条件下,目标实际上可以分布在多个距离单元中。这种信号污染导致自适应算法的性能下降。在自适应算法的设计中,采用协方差矩阵对杂波加噪声进行处理。该数量通常通过使用从测试单元周围的量程单元中采集的样品来表征。如果底层测试单元协方差矩阵与周围距离单元的平均协方差矩阵不同,则性能会受到影响。我们分析了一种时空自适应处理(STAP)算法,该算法旨在利用信号污染对接收机有利。考虑协方差矩阵不匹配可能性的性能表达式针对这种分布式目标场景进行了开发。数值分析表明,该算法在信号污染环境下的性能明显优于传统的STAP算法。本研究还显示了描述协方差矩阵不匹配的参数的变化如何影响性能。
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