基于地震环境噪声的速度变化监测:综述与展望

IF 2.9 3区 地球科学 Earth and Planetary Physics Pub Date : 2020-09-18 DOI:10.26464/epp2020048
Qing-Yu Wang, HuaJian Yao
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引用次数: 5

摘要

近二十年来,环境噪声相互关技术的发展催生了地下结构的探测。此外,由于重构连续格林函数的可行性,基于环境噪声的监测也应运而生。通过跟踪地震波速度的变化来研究地下介质的物理性质,这种变化不依赖于地震的发生或人工震源的连续性,大大增加了研究地壳变形演化的可能性。在本文中,我们概述了一些最先进的基于噪声的监测技术,包括移动窗口交叉频谱分析,拉伸方法,动态时间包裹,小波交叉频谱分析,以及这些测量方法的组合,无论是贝叶斯最小二乘反演还是贝叶斯马尔可夫链蒙特卡罗方法。我们简要地阐述了不同方法的基本原理及其优缺点。通过详细阐述一些典型的基于噪声的监测应用,我们展示了这种技术如何在不同的场景中广泛应用,并适应多种尺度。我们列出了经典的应用,如跟踪地震相关的地震前后速度变化,预测火山爆发,跟踪外部环境强迫产生的瞬态变化。通过不同目标、不同尺度的监测案例,指出了该技术在小型水库、滑坡等灾害预测预警中的适用性。最后,对噪声监测的发展趋势进行了总结,并对今后的研究方向进行了展望。为了提高无源噪声监测的时间和空间分辨率,我们提出了将不同的方法和地震源进行整合。要全面解释观测到的变化,进一步的跨学科合作是必不可少的。
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Monitoring of velocity changes based on seismic ambient noise: A brief review and perspective

Over the past two decades, the development of the ambient noise cross-correlation technology has spawned the exploration of underground structures. In addition, ambient noise-based monitoring has emerged because of the feasibility of reconstructing the continuous Green’s functions. Investigating the physical properties of a subsurface medium by tracking changes in seismic wave velocity that do not depend on the occurrence of earthquakes or the continuity of artificial sources dramatically increases the possibility of researching the evolution of crustal deformation. In this article, we outline some state-of-the-art techniques for noise-based monitoring, including moving-window cross-spectral analysis, the stretching method, dynamic time wrapping, wavelet cross-spectrum analysis, and a combination of these measurement methods, with either a Bayesian least-squares inversion or the Bayesian Markov chain Monte Carlo method. We briefly state the principles underlying the different methods and their pros and cons. By elaborating on some typical noise-based monitoring applications, we show how this technique can be widely applied in different scenarios and adapted to multiples scales. We list classical applications, such as following earthquake-related co- and postseismic velocity changes, forecasting volcanic eruptions, and tracking external environmental forcing-generated transient changes. By monitoring cases having different targets at different scales, we point out the applicability of this technology for disaster prediction and early warning of small-scale reservoirs, landslides, and so forth. Finally, we conclude with some possible developments of noise-based monitoring at present and summarize some prospective research directions. To improve the temporal and spatial resolution of passive-source noise monitoring, we propose integrating different methods and seismic sources. Further interdisciplinary collaboration is indispensable for comprehensively interpreting the observed changes.

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来源期刊
Earth and Planetary Physics
Earth and Planetary Physics GEOSCIENCES, MULTIDISCIPLINARY-
自引率
17.20%
发文量
174
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