首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Experimental Study on the Performance of RFI Detection Algorithms in Microwave Radiometry: Toward an Optimum Combined Test
【24h】

Experimental Study on the Performance of RFI Detection Algorithms in Microwave Radiometry: Toward an Optimum Combined Test

机译:微波辐射测量中RFI检测算法性能的实验研究:朝最佳组合测试的方向

获取原文
获取原文并翻译 | 示例
           

摘要

Radio-frequency interference (RFI) is probably today's most serious limitation to the accurate retrieval of geophysical parameters from microwave radiometric measurements. Strong RFI inducing a change in the detected power larger than the natural variability is simple to detect. Moderate or weak RFI can be masked by the natural variability of the measurements, passing undetected and corrupting them. A number of techniques have been devised in the past years to detect and, eventually, mitigate RFI present in microwave radiometry measurements: 1) time domain; 2) frequency domain; 3) spectrogram techniques looking for anomalously high power peaks; 4) statistical techniques testing the hypothesis of Gaussianity of the received signal; 5) polarimetric techniques looking for anomalous signatures in the third and fourth Stokes parameters; or 6) wavelet techniques to estimate the RFI signal and cancel it (if any). In this paper, the first four techniques are evaluated with real data gathered with a multifrequency microwave radiometer. It will be shown how spectrogram techniques can detect RFI signals concentrated in narrow frequency bands and/or time intervals that may pass undetected with time-domain and/or frequency-domain techniques alone or with statistical methods. A combined approach is proposed to take advantage of the best performance of each technique. On one side, for strong localized RFI, the approach is spectrogram blanking or, if it is too demanding in terms of computational resources, simple time- and frequency-domain blanking. On the other side, for weak RFI, the approach is the Kurtosis statistical test, which exhibits the best performance among the ten normality tests evaluated, in conjunction with the Anderson–Darling test to detect potential RFI in the blind spots of the Kurtosis test.
机译:射频干扰(RFI)可能是当今从微波辐射测量中准确检索地球物理参数的最严重限制。强大的RFI会导致检测到的功率变化大于自然变化,这很容易检测。中等或较弱的RFI可以被测量的自然可变性所掩盖,它们无法通过并破坏了它们。在过去的几年中,已经设计出许多技术来检测并最终缓解微波辐射测量中存在的RFI:1)时域; 2)频域; 3)频谱图技术寻找异常高功率峰值; 4)检验接收信号高斯假设的统计技术; 5)极化技术,在第三和第四斯托克斯参数中寻找异常特征;或6)小波技术来估计RFI信号并消除它(如果有)。在本文中,使用多频微波辐射计收集的真实数据对前四种技术进行了评估。将示出频谱图技术如何能够检测集中在狭窄的频带和/或时间间隔中的RFI信号,这些RFI信号可能仅通过时域和/或频域技术或通过统计方法无法检测到。提出了一种组合方法,以利用每种技术的最佳性能。一方面,对于强大的局部RFI,该方法是频谱图消隐,或者,如果对计算资源的要求太高,则采用简单的时域和频域消隐。另一方面,对于弱RFI,方法是峰度统计检验,它在所评估的十个正态性检验中表现出最佳性能,并与安德森-达林检验相结合,以检测峰度检验盲点中的潜在RFI。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号