Surface Wave Dispersion Measurement with Polarization Analysis Using Multicomponent Seismic Noise Recorded by a 1-D Linear Array

IF 4.9 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS Surveys in Geophysics Pub Date : 2023-04-18 DOI:10.1007/s10712-023-09787-8
Jingyin Pang, Jianghai Xia, Feng Cheng, Changjiang Zhou, Xinhua Chen, Chao Shen, Huaixue Xing, Xiaojun Chang
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Abstract

Linear arrays are popularly used for passive surface wave imaging due to their high efficiency and convenience, especially in urban applications. The unknown characteristics such as azimuth of noise sources, however, make it challenging to extract accurate phase-velocity dispersion information by employing a 1-D linear array. To solve this problem, we proposed an alternative passive surface wave method to capture the dominant azimuth of noise sources and retrieve the phase-velocity dispersion curve by polarization analysis with multicomponent ambient noise records. We verified the proposed method using synthetic data sets under various source distributions. According to the calculated dominant azimuth, it is deduced that noise sources are mainly classified as either inline or offline distribution. For inline noise source distribution, we are able to directly obtain the unbiased phase-velocity measurements; for offline noise source distribution, we should correct the velocity overestimation due to azimuthal effects using the proposed method. Results from two field examples show that the distributions of noise sources are predominantly offline. We eliminated the velocity bias caused by offline source distribution and picked phase velocities following higher amplitude peaks along the trend. After the azimuthal correction, the picked phase-velocity dispersion curves in dispersion images generated from passive source data match well with those from active source data, demonstrating the practicability of the proposed technique.

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利用一维线阵记录的多分量地震噪声进行极化分析的表面波色散测量
线性阵列由于其高效率和便捷性被广泛用于无源表面波成像,特别是在城市应用中。然而,噪声源的方位角等未知特性给利用一维线性阵列提取准确的相速度色散信息带来了挑战。为了解决这一问题,我们提出了一种替代的被动表面波方法来捕获噪声源的优势方位,并通过多分量环境噪声记录的极化分析来检索相速度色散曲线。我们使用不同源分布下的合成数据集验证了所提出的方法。根据计算得到的优势方位,推导出噪声源主要分为在线分布和离线分布两类。对于内联噪声源分布,我们可以直接获得无偏相速度测量值;对于离线噪声源分布,应采用该方法修正由于方位效应引起的速度高估。两个现场算例的结果表明,噪声源的分布以离线为主。我们消除了离线源分布造成的速度偏差,并沿着趋势选择了高振幅峰值后的相速度。经方位角校正后,被动源色散图像中拾取的相速度色散曲线与主动源色散曲线吻合较好,证明了该技术的实用性。
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来源期刊
Surveys in Geophysics
Surveys in Geophysics 地学-地球化学与地球物理
CiteScore
10.00
自引率
10.90%
发文量
64
审稿时长
4.5 months
期刊介绍: Surveys in Geophysics publishes refereed review articles on the physical, chemical and biological processes occurring within the Earth, on its surface, in its atmosphere and in the near-Earth space environment, including relations with other bodies in the solar system. Observations, their interpretation, theory and modelling are covered in papers dealing with any of the Earth and space sciences.
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