Detailed Record



Examining Two Consecutive Years of Older Adults’ Everyday Prospective Memory Lapses and Inflammation by Gender


Abstract Probabilistic methods for geophysical inverse problems allow the use of arbitrarily complex prior information in principle. Geostatistical techniques, such as multiple-point statistics (MPS), for describing spatial correlation models and higher-order statistics have been proposed to achieve this inversion task, in which stochastic algorithms such as Markov chain Monte Carlo (McMC) are incorporated. However, stochastic sampling and optimization often require a large number of iterations, and thus geostatistical sampling of the prior model can become computationally demanding. To overcome this challenge, a deep learning model, namely conditional generative adversarial networks (CGANs), is proposed, which allows one to perform a random walk to sample the complex prior distribution. CGANs simulate conditional realizations conditioned to the available hard conditioning data, that is, direct measurements, while preserving the geometrical structure of the model parameters of interest and replicating the sequential Gibbs sampling algorithm. Despite the need for a training step, for a large number of simulations, CGANs are more efficient than traditional geostatistical simulation algorithms such as single normal equation simulation (SNESIM). The proposed methodology is used as part of the extended Metropolis algorithm to predict the distributions of categorical facies in two examples, a dune environment in the Gobi Desert and a channel system in an idealized subsurface reservoir, from indirect observational data such as acoustic impedance. The inversion results are compared to the extended Metropolis algorithm using standard MPS sampling.
Authors Erin Harrington University of WyomingORCID , Jennifer E. Graham‐Engeland ORCID , Martin J. Sliwinski ORCID , Jacqueline Mogle ORCID , Richard J. Lipton , Mindy J. Katz , Christopher G. Engeland ORCID
Journal Info University of Oxford | Innovation in Aging , vol: 7 , iss: Supplement_1 , pages: 1033 - 1034
Publication Date 12/21/2023
ISSN 2399-5300
TypeKeyword Image article
Open Access gold Gold Access
DOI https://doi.org/10.1093/geroni/igad104.3322
KeywordsKeyword Image Prospective Memory (Score: 0.639959) , Aging (Score: 0.528768) , Cognitive Decline (Score: 0.505855)