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3-Dimensional Compressive Sensing and High-Quality Recovery for Phased Array Weather Radar

机译:三维压缩传感和相控阵天气雷达的高质量恢复

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This paper proposes an effective three-dimensional compressive sensing method for the phased array weather radar (PAWR), which is capable of three-dimensional observation with spatially and temporally high resolution. Because of the large amount of observation data, which is approximately 1 gigabyte per minute, data compression is an essential technology to conduct a network observation by multiple PAWRs. Even though many conventional studies applied compressive sensing (CS) to weather radar measurements, their reconstruction quality should be further improved. To this end, we define a cost function for a three-dimensional recovery exploiting not only local similarity but also global redundancy of weather radar measurements. Since the cost function is convex, we can derive an efficient algorithm based on the standard convex optimization techniques. Simulation results show that the proposed method achieves normalized errors less than 10% for 25% compression ratio with outperforming conventional two-dimensional methods.
机译:本文提出了一种用于分阶段阵列气象雷达(PAWR)的有效三维压缩传感方法,其能够用空间和时间高分辨率进行三维观察。由于大约每分钟的观察数据大约1千兆字节,数据压缩是通过多个PAWR进行网络观察的基本技术。尽管许多常规研究应用了压缩感测(CS)到天气雷达测量,但它们的重建质量应进一步提高。为此,我们为三维恢复的成本函数不仅可以利用局部相似性,而且是天气雷达测量的全局冗余。由于成本函数是凸的,我们可以通过基于标准凸优化技术推导出一种有效的算法。仿真结果表明,该方法实现了25%压缩比率小于10%的归一化误差,以优于传统的二维方法。

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