For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) methods may fail to properly explore the posterior probability density function (PDF) given a realistic computational budget and are generally poorly amenable to parallelization. Particle methods approximate the posterior PDF using the states and weights of a population of evolving particles and they are very well suited to parallelization. We focus on adaptive sequential Monte Carlo (ASMC), an extension of annealed importance sampling (AIS). In AIS and ASMC, importance sampling is performed over a sequence of intermediate distributions, known as power posteriors, linking the prior to the posterior PDF. The AIS and ASMC algorithms also provide est...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
Reservoir simulation is critically important for optimally managing petroleum reservoirs. Often, man...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Solving inverse problems in a complex, geologically realistic, and discrete model space and from a s...
In the field of groundwater hydrology and more generally geophysics, solving inverse problems in a c...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
Groundwater flow depends on subsurface heterogeneity, which often calls for categorical fields to re...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
Bayesian model selection enables comparison and ranking of conceptual subsurface models described by...
Performing Bayesian inference via Markov chain Monte Carlo (MCMC) can be exceedingly expensive when ...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
Reservoir simulation is critically important for optimally managing petroleum reservoirs. Often, man...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Solving inverse problems in a complex, geologically realistic, and discrete model space and from a s...
In the field of groundwater hydrology and more generally geophysics, solving inverse problems in a c...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
Bayesian analysis is widely used in science and engineering for real-time forecasting, decision maki...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
Groundwater flow depends on subsurface heterogeneity, which often calls for categorical fields to re...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
Bayesian model selection enables comparison and ranking of conceptual subsurface models described by...
Performing Bayesian inference via Markov chain Monte Carlo (MCMC) can be exceedingly expensive when ...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
Reservoir simulation is critically important for optimally managing petroleum reservoirs. Often, man...