Trans-dimensional Bayesian inversion for airborne EM data in sparse domain

2021 ◽  
pp. 104317
Author(s):  
Mengli Tao ◽  
Changchun Yin ◽  
Yunhe Liu ◽  
Yang Su ◽  
Bin Xiong
2018 ◽  
Vol 15 (2) ◽  
pp. 318-331
Author(s):  
Zong-Hui Gao ◽  
Chang-Chun Yin ◽  
Yan-Fu Qi ◽  
Bo Zhang ◽  
Xiu-Yan Ren ◽  
...  

2011 ◽  
Author(s):  
Gavin A. Steininger ◽  
Stan E. Dosso ◽  
Jan Dettmer ◽  
Charles W. Holland

2012 ◽  
Author(s):  
Gavin A. Steininger ◽  
Stan E. Dosso ◽  
Jan Dettmer ◽  
Charles W. Holland

Author(s):  
Yanfu Qi ◽  
Xiu Li ◽  
Changchun Yin ◽  
Huaiyuan Li ◽  
Zhipeng Qi ◽  
...  
Keyword(s):  

2015 ◽  
Author(s):  
Jean M. Legault ◽  
Shengkai Zhao ◽  
Ali Latrous ◽  
Nasreddine Bournas ◽  
Geoffrey Plastow ◽  
...  
Keyword(s):  

Author(s):  
Daniel Blatter ◽  
Anandaroop Ray ◽  
Kerry Key

Summary Bayesian inversion of electromagnetic data produces crucial uncertainty information on inferred subsurface resistivity. Due to their high computational cost, however, Bayesian inverse methods have largely been restricted to computationally expedient 1D resistivity models. In this study, we successfully demonstrate, for the first time, a fully 2D, trans-dimensional Bayesian inversion of magnetotelluric data. We render this problem tractable from a computational standpoint by using a stochastic interpolation algorithm known as a Gaussian process to achieve a parsimonious parametrization of the model vis-a-vis the dense parameter grids used in numerical forward modeling codes. The Gaussian process links a trans-dimensional, parallel tempered Markov chain Monte Carlo sampler, which explores the parsimonious model space, to MARE2DEM, an adaptive finite element forward solver. MARE2DEM computes the model response using a dense parameter mesh with resistivity assigned via the Gaussian process model. We demonstrate the new trans-dimensional Gaussian process sampler by inverting both synthetic and field magnetotelluric data for 2D models of electrical resistivity, with the field data example converging within 10 days on 148 cores, a non-negligible but tractable computational cost. For a field data inversion, our algorithm achieves a parameter reduction of over 32x compared to the fixed parameter grid used for the MARE2DEM regularized inversion. Resistivity probability distributions computed from the ensemble of models produced by the inversion yield credible intervals and interquartile plots that quantitatively show the non-linear 2D uncertainty in model structure. This uncertainty could then be propagated to other physical properties that impact resistivity including bulk composition, porosity and pore-fluid content.


2013 ◽  
Author(s):  
Mason Kass ◽  
Burke Minsley ◽  
Bruce Smith ◽  
Jared Abraham

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