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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Allan Variance Computed in Space Domain: Definition and Application to InSAR Data to Characterize Noise and Geophysical Signal
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Allan Variance Computed in Space Domain: Definition and Application to InSAR Data to Characterize Noise and Geophysical Signal

机译:空域中的Allan方差计算:InSAR数据的定义和应用以表征噪声和地球物理信号

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摘要

The Allan variance was introduced 50 years ago for analyzing the stability of frequency standards. In addition to its metrological interest, it may be also considered as an estimator of the large trends of the power spectral density (PSD) of frequency deviation. For instance, the Allan variance is able to discriminate different types of noise characterized by different power laws in the PSD. The Allan variance was also used in other fields than time and frequency metrology: for more than 20 years, it has been used in accelerometry, geophysics, geodesy, astrophysics, and even finances. However, it seems that up to now, it has been exclusively applied for time series analysis. We propose here to use the Allan variance on spatial data. Interferometric synthetic aperture radar (InSAR) is used in geophysics to image ground displacements in space [over the synthetic aperture radar (SAR) image spatial coverage] and in time thanks to the regular SAR image acquisitions by dedicated satellites. The main limitation of the technique is the atmospheric disturbances that affect the radar signal while traveling from the sensor to the ground and back. In this paper, we propose to use the Allan variance for analyzing spatial data from InSAR measurements. The Allan variance was computed in mode as well as in radial mode for detecting different types of behavior for different space-scales, in the same way as the different types of noise versus the integration time in the classical time and frequency application. We found that radial Allan variance is the more appropriate way to have an estimator insensitive to the spatial axis and we applied it on SAR data acquired over eastern Turkey for the period 2003–2011. Spatial Allan variance allowed us to well characterize noise features, classically found in InSAR such as phase decorrelation producing white noise or atmospheric delays, beh- ving like a random walk signal. We finally applied the spatial Allan variance to an InSAR time series to detect when the geophysical signal, here the ground motion, emerges from the noise.
机译:Allan方差是50年前引入的,用于分析频率标准的稳定性。除了其计量学意义外,它还可以被视为频率偏差的功率谱密度(PSD)的大趋势的估计器。例如,艾伦方差能够区分以PSD中不同幂定律为特征的不同类型的噪声。 Allan方差还用于时间和频率计量领域以外的其他领域:20多年来,它已用于加速计,地球物理学,大地测量学,天体物理学,甚至金融领域。但是,到目前为止,它似乎仅用于时间序列分析。我们在这里建议在空间数据上使用Allan方差。干涉式合成孔径雷达(InSAR)在地球物理学中用于对空间中的地面位移成像(在合成孔径雷达(SAR)图像空间覆盖范围内),并且由于专用卫星定期采集SAR图像而及时地进行了成像。该技术的主要局限性是当从传感器到地面并返回地面时,大气干扰会影响雷达信号。在本文中,我们建议使用Allan方差分析InSAR测量中的空间数据。以模式和径向模式计算Allan方差,以检测不同空间尺度下不同类型的行为,其方式与经典时间和频率应用中不同类型的噪声与积分时间的关系相同。我们发现径向艾伦方差是使估计量对空间轴不敏感的更合适的方法,并将其应用于2003-2011年期间在土耳其东部获得的SAR数据。空间艾伦方差使我们能够很好地表征噪声特征,这在InSAR中是经典发现的特征,例如产生白噪声或大气延迟的相位去相关,表现得像随机行走信号一样。最后,我们将空间Allan方差应用于InSAR时间序列,以检测何时地球物理信号(此处为地面运动)从噪声中出现。

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