Dou Shan, Lindsey Nate, Wagner Anna M, Daley Thomas M, Freifeld Barry, Robertson Michelle, Peterson John, Ulrich Craig, Martin Eileen R, Ajo-Franklin Jonathan B
Lawrence Berkeley National Laboratory, Energy Geosciences Division, Berkeley, 94720, USA.
University of California, Berkeley, Department of Earth and Planetary Science, Berkeley, 94720, USA.
Sci Rep. 2017 Sep 14;7(1):11620. doi: 10.1038/s41598-017-11986-4.
Ambient-noise-based seismic monitoring of the near surface often has limited spatiotemporal resolutions because dense seismic arrays are rarely sufficiently affordable for such applications. In recent years, however, distributed acoustic sensing (DAS) techniques have emerged to transform telecommunication fiber-optic cables into dense seismic arrays that are cost effective. With DAS enabling both high sensor counts ("large N") and long-term operations ("large T"), time-lapse imaging of shear-wave velocity (V ) structures is now possible by combining ambient noise interferometry and multichannel analysis of surface waves (MASW). Here we report the first end-to-end study of time-lapse V imaging that uses traffic noise continuously recorded on linear DAS arrays over a three-week period. Our results illustrate that for the top 20 meters the V models that is well constrained by the data, we obtain time-lapse repeatability of about 2% in the model domain-a threshold that is low enough for observing subtle near-surface changes such as water content variations and permafrost alteration. This study demonstrates the efficacy of near-surface seismic monitoring using DAS-recorded ambient noise.
基于环境噪声的近地表地震监测通常具有有限的时空分辨率,因为密集地震阵列对于此类应用而言成本过高,难以承受。然而近年来,分布式声学传感(DAS)技术应运而生,可将电信光纤电缆转变为经济高效的密集地震阵列。借助DAS实现的高传感器数量(“大N”)和长期运行(“大T”),现在通过结合环境噪声干涉测量法和多通道面波分析(MASW),就能够对剪切波速度(V )结构进行时移成像。在此,我们报告了首个端到端的时移V 成像研究,该研究使用了线性DAS阵列连续三周记录的交通噪声。我们的结果表明,对于由数据良好约束的顶部20米V 模型,在模型域中我们获得了约2%的时移重复性——该阈值足够低,足以观测到诸如含水量变化和多年冻土改变等细微的近地表变化。本研究证明了使用DAS记录的环境噪声进行近地表地震监测的有效性。