We critically examine the performance of sequential geostatistical resampling (SGR) as a model proposal mechanism for Bayesian Markov-chain-Monte-Carlo (MCMC) solutions to near-surface geophysical inverse problems. Focusing on a series of simple yet realistic synthetic crosshole georadar tomographic examples characterized by different numbers of data, levels of data error and degrees of model parameter spatial correlation, we investigate the efficiency of three different resampling strategies with regard to their ability to generate statistically independent realizations from the Bayesian posterior distribution. Quite importantly, our results show that, no matter what resampling strategy is employed, many of the examined test cases require ...
Groundwater flow depends on subsurface heterogeneity, which often calls for categorical fields to re...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
Inverse problems defined on the sphere arise in many fields, including seismology and cosmology wher...
Solving inverse problems in a complex, geologically realistic, and discrete model space and from a s...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inverse estimation of spatially-correlated parameter fields is essential in a variety of scientific ...
The rigorous quantification of uncertainty in geophysical inversions is a challenging problem. Inver...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
This paper presents a practical and objective procedure for a Bayesian inversion of geophysical data...
Estimation of uncertainties is critical for subsequent decision making in all applications of geos...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Groundwater flow depends on subsurface heterogeneity, which often calls for categorical fields to re...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
Inverse problems defined on the sphere arise in many fields, including seismology and cosmology wher...
Solving inverse problems in a complex, geologically realistic, and discrete model space and from a s...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inverse estimation of spatially-correlated parameter fields is essential in a variety of scientific ...
The rigorous quantification of uncertainty in geophysical inversions is a challenging problem. Inver...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
This paper presents a practical and objective procedure for a Bayesian inversion of geophysical data...
Estimation of uncertainties is critical for subsequent decision making in all applications of geos...
Owing to the increasing availability of computational resources, in recent years the probabilistic s...
Groundwater flow depends on subsurface heterogeneity, which often calls for categorical fields to re...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
Inverse problems defined on the sphere arise in many fields, including seismology and cosmology wher...