Ultra narrow band adaptive tomographic radar

M. Wicks, B. Himed, J. Bracken, H. Bascom, J. Clancy
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引用次数: 59

Abstract

This paper addresses the issue of spatial diversity in radar applications. Typically, information concerning ground and air targets is obtained via monostatic radar. Increased information is often equated with increased bandwidth in these radar systems. However, geometric diversity obtained through multistatic radar operations also affords the user the opportunity to obtain additional information concerning threat targets. With the appropriate signal processing, this translates directly into increased probability of detection and reduced probability of false alarm. In the extreme case, only discrete ultra narrow band (UNB) frequencies of operation may be available for both commercial and military applications. With limited spectrum, UNB in the limiting case, the need for geometric diversity becomes imperative. This occurs because the electromagnetic spectrum available for commercial and military radar applications is continuously being eroded while the need for increased information via radio frequency (RF) detection of threat targets is increasing. In addition, geometric diversity improves target position accuracy and image resolution, which would otherwise remain unavailable with monostatic radar.
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超窄带自适应层析雷达
本文讨论了雷达应用中的空间分异问题。通常,有关地面和空中目标的信息是通过单站雷达获得的。在这些雷达系统中,信息的增加通常等同于带宽的增加。然而,通过多基地雷达操作获得的几何多样性也为用户提供了获得有关威胁目标的额外信息的机会。通过适当的信号处理,这直接转化为增加检测概率和减少误报概率。在极端情况下,只有离散的超窄带(UNB)工作频率可用于商业和军事应用。由于频谱有限,UNB在极限情况下,对几何多样性的需求变得势在必行。这是因为商业和军事雷达应用的电磁频谱不断受到侵蚀,而通过无线电频率(RF)检测威胁目标的信息需求也在增加。此外,几何多样性提高了目标定位精度和图像分辨率,否则单站雷达将无法实现。
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