Near-surface characterization using a roadside distributed acoustic sensing array

S. Yuan, A. Lellouch, R. Clapp, B. Biondi
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引用次数: 42

Abstract

Thanks to the broadband nature of the Distributed Acoustic Sensing (DAS) measurement, a roadside section of the Stanford DAS-2 array can record seismic signals from various sources. For example, it measures the earth's quasi-static distortion caused by the weight of cars (<0.8 Hz), and Rayleigh waves induced by earthquakes (<3 Hz) and by dynamic car-road interactions (3-20 Hz). We directly utilize the excited surface waves for shallow shear-wave velocity inversion. Rayleigh waves induced by passing cars have a consistent fundamental mode and a noisier first mode. By stacking dispersion images of 33 passing cars, we obtain stable dispersion images. The frequency range of the fundamental mode can be extended by adding the low-frequency earthquake-induced Rayleigh waves. Thanks to the extended frequency range, we can achieve better depth coverage and resolution for shear-wave velocity inversion. In order to assure clear separation from Love waves and aligning apparent velocity with phase velocity, we choose an earthquake that is approximately in line with the array. The inverted models match those obtained by a conventional geophone survey performed by a geotechnical service company contracted by Stanford University using active sources from the surface until about 50 meters. In order to automate the Vs inversion process, we introduce a new objective function that avoids manual dispersion curve picking. We construct a 2-D Vs profile by performing independent 1-D inversions at multiple locations along the fiber. From the low-frequency quasi-static distortion recordings, we invert for a single Poisson's ratio at each location along the fiber. We observe spatial heterogeneity of both Vs and Poisson's ratio profiles. Our approach is dramatically cheaper than ambient field interferometry and reliable estimates can be obtained more frequently as no lengthy cross-correlations are required.
使用路边分布式声传感阵列的近地表表征
由于分布式声传感(DAS)测量的宽带特性,斯坦福DAS-2阵列的路边部分可以记录来自各种来源的地震信号。例如,它测量了由汽车重量引起的地球准静态扭曲(<0.8 Hz),以及由地震(<3 Hz)和汽车-道路动态相互作用(3-20 Hz)引起的瑞利波。我们直接利用受激面波进行浅层横波速度反演。经过的车辆产生的瑞利波具有一致的基模和噪声较大的第一模。通过叠加33辆过往车辆的色散图像,得到稳定的色散图像。通过加入低频地震诱发瑞利波,可以扩大基模的频率范围。由于频率范围的扩大,我们可以实现更好的纵波速度反演的深度覆盖和分辨率。为了确保与洛夫波的清晰分离,并使视速度与相速度对齐,我们选择了与阵列大致一致的地震。倒置模型与斯坦福大学岩土工程服务公司使用地面50米左右的有源进行的传统检波器调查所得的结果相匹配。为了实现v反演过程的自动化,我们引入了一个新的目标函数,避免了人工选取色散曲线。我们通过在光纤的多个位置进行独立的一维反演来构建二维Vs剖面。从低频准静态失真记录中,我们反演了沿光纤每个位置的单个泊松比。我们观察了v和泊松比曲线的空间异质性。我们的方法比环境场干涉法便宜得多,并且由于不需要冗长的相互关联,可以更频繁地获得可靠的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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