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Compressed sensing applied to weather radar.

机译:压缩感测应用于气象雷达。

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摘要

Over the last two decades, dual-polarimetric weather radar has proven to be a valuable instrument providing critical precipitation information through remote sensing of the atmosphere. Modern weather radar systems operate with high sampling rates and long dwell times on targets. Often only limited target information is desired, leading to a pertinent question: could lesser samples have been acquired in the first place? Recently, a revolutionary sampling paradigm -- compressed sensing (CS) -- has emerged, which asserts that it is possible to recover signals from fewer samples or measurements than traditional methods require without degrading the accuracy of target information. CS methods have recently been applied to point target radars and imaging radars, resulting in hardware simplification advantages, enhanced resolution, and reduction in data processing overheads. But CS applications for volumetric radar targets such as precipitation remain relatively unexamined. This research investigates the potential applications of CS to radar remote sensing of precipitation. In general, weather echoes may not be sparse in space-time or frequency domain. Therefore, CS techniques developed for point targets, such as in aircraft surveillance radar, are not directly applicable to weather radars. However, precipitation samples are highly correlated both spatially and temporally. We, therefore, adopt latest advances in matrix completion algorithms to demonstrate the sparse sensing of weather echoes. Several extensions of this approach are then considered to develop a more general CS-based weather radar processing algorithms in presence of noise, ground clutter and dual-polarimetric data. Finally, a super-resolution approach is presented for the spectral recovery of an undersampled signal when certain frequency information is known.
机译:在过去的二十年中,双极化气象雷达已被证明是一种有价值的仪器,可通过遥感大气层提供关键的降水信息。现代气象雷达系统以较高的采样率和较长的目标停留时间运行。通常只需要有限的目标信息,这会引起一个相关的问题:首先可以采集较少的样本吗?最近,出现了一种革命性的采样范例-压缩感测(CS),它断言可以从比传统方法所需的更少的样本或测量中恢复信号,而不会降低目标信息的准确性。 CS方法最近已应用于点目标雷达和成像雷达,从而在硬件方面具有简化优势,提高了分辨率并减少了数据处理开销。但是,对于诸如降水之类的体积雷达目标的CS应用仍未得到检验。这项研究调查了CS在雷达降水遥感中的潜在应用。通常,天气回声在时空或频域中可能不稀疏。因此,针对点目标开发的CS技术(例如在飞机监视雷达中)不适用于气象雷达。但是,降水样本在空间和时间上都高度相关。因此,我们采用矩阵完成算法的最新进展来证明天气回波的稀疏感知。然后考虑该方法的几个扩展,以在存在噪声,地物杂波和双极化数据的情况下开发更通用的基于CS的天气雷达处理算法。最后,提出了一种超分辨率方法,用于在已知某些频率信息时对欠采样信号进行频谱恢复。

著录项

  • 作者

    Mishra, Kumar Vijay.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Remote sensing.;Electrical engineering.;Atmospheric sciences.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 110 p.
  • 总页数 110
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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