In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of solutions that can be used to quantify model uncertainty. We have developed a probabilistic inversion approach that uses crosshole first-arrival traveltimes to estimate an underlying geostatistical model, the subsurface structure, and the standard deviation of the data error simultaneously. The subsurface is assumed to be represented by a multi-Gaussian field, which allows us to reduce the dimensionality of the problem significantly. Compared with previous applications in hydrogeology, novelties of this study include an improvement of the dimensionality reduction algorithm to avoid streaking artifacts, it is the first application to geophysics a...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inversion methods that build on multiple-point statistics tools offer the possibility to obtain mode...
A minimum-relative-entropy (MRE) based Bayesian inversion framework is applied to monitor spatio-tem...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
In this paper two different subsurface parameterizations are compared for posterior soil moisture es...
A number of geophysical methods, such as ground-penetrating radar (GPR), have the potential to provi...
Appropriate regularizations of geophysical inverse problems and joint inversion of different data ty...
A number of studies have shown that time-lapse crosshole geophysical data can provide valuable infor...
We have developed a flexible methodology to jointly invert different types of geophysical and hydro...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inversion methods that build on multiple-point statistics tools offer the possibility to obtain mode...
A minimum-relative-entropy (MRE) based Bayesian inversion framework is applied to monitor spatio-tem...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
In this paper two different subsurface parameterizations are compared for posterior soil moisture es...
A number of geophysical methods, such as ground-penetrating radar (GPR), have the potential to provi...
Appropriate regularizations of geophysical inverse problems and joint inversion of different data ty...
A number of studies have shown that time-lapse crosshole geophysical data can provide valuable infor...
We have developed a flexible methodology to jointly invert different types of geophysical and hydro...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Inversion methods that build on multiple‐point statistics tools offer the possibility to obtain mode...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...