Variance component adaptive estimation algorithm for coseismic slip distribution inversion using interferometric synthetic aperture radar data

IF 3.9 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Yingwen Zhao, Caijun Xu, Yangmao Wen
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Abstract

When conducting coseismic slip distribution inversion with interferometric synthetic aperture radar (InSAR) data, there is no universal method to objectively determine the appropriate size of InSAR data. Currently, little is also known about the computing efficiency of variance component estimation implemented in the inversion. Therefore, we develop a variance component adaptive estimation algorithm to determine the optimal sampling number of InSAR data for the slip distribution inversion. We derived more concise variation formulae than conventional simplified formulae for the variance component estimation. Based on multiple sampling data sets with different sampling numbers, the proposed algorithm determines the optimal sampling number by the changing behaviors of variance component estimates themselves. In three simulation cases, four evaluation indicators at low levels corresponding to the obtained optimal sampling number validate the feasibility and effectiveness of the proposed algorithm. Compared with the conventional slip distribution inversion strategy with the standard downsampling algorithm, the simulation cases and practical applications of five earthquakes suggest that the developed algorithm is more flexible and robust to yield appropriate size of InSAR data, thus provide a reasonable estimate of slip distribution. Computation time analyses indicate that the computational advantage of variation formulae is dependent of the ratio of the number of data to the number of fault patches and can be effectively suitable for cases with the ratio smaller than five, facilitating the rapid estimation of coseismic slip distribution inversion.

Abstract Image

利用干涉合成孔径雷达数据反演共震滑移分布的方差分量自适应估算算法
在利用干涉合成孔径雷达(InSAR)数据进行共震滑移分布反演时,目前还没有一种通用的方法来客观地确定 InSAR 数据的适当大小。目前,人们对反演中实施的方差分量估计的计算效率也知之甚少。因此,我们开发了一种方差分量自适应估计算法,用于确定滑移分布反演的 InSAR 数据最佳采样数。与传统的方差分量估计简化公式相比,我们推导出了更简洁的变化公式。基于不同采样数的多个采样数据集,所提出的算法通过方差分量估计值本身的变化行为来确定最佳采样数。在三个模拟案例中,与所获得的最优采样数相对应的四个低水平评价指标验证了所提算法的可行性和有效性。与采用标准下采样算法的传统滑移分布反演策略相比,5 次地震的模拟案例和实际应用表明,所开发的算法更灵活、更稳健,能获得适当规模的 InSAR 数据,从而提供合理的滑移分布估计。计算时间分析表明,变异公式的计算优势取决于数据数与断层斑块数之比,可有效适用于数据数与断层斑块数之比小于 5 的情况,有利于快速估计共震滑移分布反演。
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来源期刊
Journal of Geodesy
Journal of Geodesy 地学-地球化学与地球物理
CiteScore
8.60
自引率
9.10%
发文量
85
审稿时长
9 months
期刊介绍: The Journal of Geodesy is an international journal concerned with the study of scientific problems of geodesy and related interdisciplinary sciences. Peer-reviewed papers are published on theoretical or modeling studies, and on results of experiments and interpretations. Besides original research papers, the journal includes commissioned review papers on topical subjects and special issues arising from chosen scientific symposia or workshops. The journal covers the whole range of geodetic science and reports on theoretical and applied studies in research areas such as: -Positioning -Reference frame -Geodetic networks -Modeling and quality control -Space geodesy -Remote sensing -Gravity fields -Geodynamics
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