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Thin-Sheet Inversion Modeling of Geomagnetic Deep Sounding Data Using MCMC Algorithm

机译:基于MCMC算法的地磁深探数据薄层反演建模

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The geomagnetic deep sounding (GDS) method is one of electromagnetic (EM) methods in geophysics that allows the estimation of the subsurface electrical conductivity distribution. This paper presents the inversion modeling of GDS data employing Markov Chain Monte Carlo (MCMC) algorithm to evaluate the marginal posterior probability of the model parameters. We used thin-sheet model to represent quasi-3D conductivity variations in the heterogeneous subsurface. The algorithm was applied to invert field GDS data from the zone covering an area that spans from eastern margin of the Bohemian Massif to the West Carpathians in Europe. Conductivity anomalies obtained from this study confirm the well-known large-scale tectonic setting of the area.
机译:地磁深探测(GDS)方法是地球物理学中的一种电磁(EM)方法,可以估算地下电导率分布。本文提出了利用马尔可夫链蒙特卡洛(MCMC)算法对GDS数据进行反演建模,以评估模型参数的边际后验概率。我们使用薄板模型来表示异质地下的准3D电导率变化。该算法应用于从覆盖波西米亚断层山脉东缘到欧洲西喀尔巴阡山脉的区域的区域反演GDS数据。从这项研究获得的电导率异常证实了该地区众所周知的大规模构造环境。

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