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首页> 外文期刊>International Journal of Aerospace Sciences >Performance Analysis of CFAR Detection of Fluctuating Radar Targets in Nonideal Operating Environments
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Performance Analysis of CFAR Detection of Fluctuating Radar Targets in Nonideal Operating Environments

机译:非理想运行环境中CFAR检测起伏不定的雷达目标的性能分析

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A constant false alarm rate in the presence of variable levels of noise is usually a requirement placed on any modern radar. The CA- and OS-CFAR detectors are the most widely used ones in the CFAR world. The cell-averaging (CA) is the optimum CFAR detector in terms of detection probability in homogeneous background when the reference cells have identical, independent and exponentially distributed signals. The ordered-statistic (OS) is an alternative to the CA processor, which trades a small loss in detection performance, relative to the CA scheme, in ideal conditions for much less performance degradation in non-ideal background environments. To benefice the merits of these well-known schemes, two modified versions (MX- & MN-CFAR) have been recently suggested. This paper is devoted to the detection performance evaluation of these modified versions as well as a novel one (ML-CFAR). Exact formulas for their false alarm and detection performances are derived, in the absence as well as in the presence of spurious targets. The results of these performances obtained for Rayleigh clutter and Rayleigh target indicate that the MN-CFAR scheme performs nearly as good as OS detector in the presence of outlying targets and all the developed versions perform much better than that processor when the background environment is homogeneous. When compared to CA-CFAR, the modified schemes perform better in an ideal condition, and behave much better in the presence of interfering targets.
机译:在任何现代雷达上,通常都要求在存在可变噪声水平时保持恒定的误报率。 CA和OS-CFAR检测器是CFAR世界中使用最广泛的检测器。就参考单元具有相同,独立且呈指数分布的信号而言,就均匀背景中的检测概率而言,单元平均(CA)是最佳CFAR检测器。有序统计(OS)是CA处理器的替代产品,相对于CA方案,CA处理器在检测性能上损失很小,而在非理想背景环境下,性能下降的幅度要小得多。为了受益于这些众所周知的方案的优点,最近提出了两个修改版本(MX-和MN-CFAR)。本文致力于这些修改版本以及一种新颖版本(ML-CFAR)的检测性能评估。在不存在虚假目标的情况下以及存在虚假目标的情况下,都可以得出有关其错误警报和检测性能的精确公式。对于瑞利杂波和瑞利目标获得的这些性能结果表明,在有远端目标的情况下,MN-CFAR方案的性能几乎与OS检测器一样好,并且当背景环境均匀时,所有开发的版本的性能都比该处理器好得多。与CA-CFAR相比,修改后的方案在理想条件下性能更好,并且在存在干扰目标的情况下表现更好。

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