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Stochastic inversion of electrical resistivity changes using a Markov Chain Monte Carlo approach

机译:马尔可夫链蒙特卡罗方法的电阻率变化的随机反演

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摘要

We describe a stochastic inversion method for mapping subsurface regions where the electrical resistivity is changing. The technique combines prior information, electrical resistance data, and forward models to produce subsurface resistivity models that are most consistent with all available data. Bayesian inference and a Metropolis simulation algorithm form the basis for this approach. Attractive features include its ability (1) to provide quantitative measures of the uncertainty of a generated estimate and (2) to allow alternative model estimates to be identified, compared, and ranked. Methods that monitor convergence and summarize important trends of the posterior distribution are introduced. Results from a physical model test and a field experiment were used to assess performance. The presented stochastic inversions provide useful estimates of the most probable location, shape, and volume of the changing region and the most likely resistivity change. The proposed method is computationally expensive, requiring the use of extensive computational resources to make its application practical.
机译:我们描述了一种用于绘制电阻率变化的地下区域的随机反演方法。该技术结合了先验信息,电阻数据和正向模型,以生成与所有可用数据最一致的地下电阻率模型。贝叶斯推断和Metropolis仿真算法构成了该方法的基础。吸引人的特征包括其能力(1)提供对所生成估计的不确定性的定量度量,以及(2)允许对替代模型估计进行识别,比较和排名。介绍了监视收敛并总结后验分布重要趋势的方法。物理模型测试和现场实验的结果用于评估性能。提出的随机反演提供了变化区域最可能的位置,形状和体积以及最可能的电阻率变化的有用估计。所提出的方法在计算上是昂贵的,需要使用大量的计算资源来使其实用化。

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