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On compressive sensing applied to radar

机译:论压缩感知在雷达中的应用

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Compressive sensing (CS) techniques offer a framework for the detection and allocation of sparse signals with a reduced number of samples. Today, modern radar systems operate with high bandwidths-demanding high sample rates according to the Shannon-Nyquist theorem-and a huge number of single elements for phased array antennas. Often only a small amount of target parameters is the final output, arising the question, if CS could not be a good mean to reduce data size, complexity, weight, power consumption and costs of radar systems. There is only a small number of publications addressing the application of CS to radar, leaving several open questions. This paper addresses some aspects as a further step to CS-radar by presenting generic system architectures and implementation considerations. It is not the aim of this paper to investigate numerically efficient algorithms but to point to promising applications as well as arising problems.rnThree possible applications are considered: pulse compression, radar imaging, and air space surveillance with array antennas. Some simulation results are presented and enriched by the evaluation of real data acquired by an experimental radar system of Fraunhofer FHR.
机译:压缩感测(CS)技术为减少样本数量的稀疏信号的检测和分配提供了框架。今天,现代的雷达系统以高带宽运行-根据Shannon-Nyquist定理要求高采样率-以及用于相控阵天线的大量单个元件。最终的输出通常只有少量的目标参数,这就产生了一个问题,即CS是否不是减少雷达系统的数据大小,复杂性,重量,功耗和成本的好方法。关于CS在雷达中的应用的出版物很少,还存在一些悬而未决的问题。本文通过介绍通用系统架构和实现注意事项,介绍了一些方面,作为CS雷达的进一步措施。本文的目的不是研究数值有效的算法,而是指出有希望的应用以及出现的问题。考虑了三种可能的应用:脉冲压缩,雷达成像和阵列天线的空域监视。通过对Fraunhofer FHR实验雷达系统获取的真实数据进行评估,提出并丰富了一些仿真结果。

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