先验与后验
最大后验估计
算法
反问题
反演(地质)
吉布斯抽样
贝叶斯概率
探地雷达
波形
蒙特卡罗方法
计算机科学
采样(信号处理)
数学优化
数学
雷达
人工智能
统计
地质学
认识论
构造盆地
数学分析
计算机视觉
哲学
滤波器(信号处理)
古生物学
电信
最大似然
作者
Knud Skou Cordua,Thomas Mejer Hansen,Klaus Mosegaard
出处
期刊:Geophysics
[Society of Exploration Geophysicists]
日期:2012-02-24
卷期号:77 (2): H19-H31
被引量:82
标识
DOI:10.1190/geo2011-0170.1
摘要
We present a general Monte Carlo full-waveform inversion strategy that integrates a priori information described by geostatistical algorithms with Bayesian inverse problem theory. The extended Metropolis algorithm can be used to sample the a posteriori probability density of highly nonlinear inverse problems, such as full-waveform inversion. Sequential Gibbs sampling is a method that allows efficient sampling of a priori probability densities described by geostatistical algorithms based on either two-point (e.g., Gaussian) or multiple-point statistics. We outline the theoretical framework for a full-waveform inversion strategy that integrates the extended Metropolis algorithm with sequential Gibbs sampling such that arbitrary complex geostatistically defined a priori information can be included. At the same time we show how temporally and/or spatiallycorrelated data uncertainties can be taken into account during the inversion. The suggested inversion strategy is tested on synthetic tomographic crosshole ground-penetrating radar full-waveform data using multiple-point-based a priori information. This is, to our knowledge, the first example of obtaining a posteriori realizations of a full-waveform inverse problem. Benefits of the proposed methodology compared with deterministic inversion approaches include: (1) The a posteriori model variability reflects the states of information provided by the data uncertainties and a priori information, which provides a means of obtaining resolution analysis. (2) Based on a posteriori realizations, complicated statistical questions can be answered, such as the probability of connectivity across a layer. (3) Complex a priori information can be included through geostatistical algorithms. These benefits, however, require more computing resources than traditional methods do. Moreover, an adequate knowledge of data uncertainties and a priori information is required to obtain meaningful uncertainty estimates. The latter may be a key challenge when considering field experiments, which will not be addressed here.
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