Probabilistic forecasting for geosteering in fluvial successions using a generative adversarial network
Sergey Alyaev, Jan Tveranger, Kristian Fossum, Ahmed H. Elsheikh

TL;DR
This paper presents a GAN-based probabilistic workflow for real-time geosteering in complex fluvial reservoirs, improving uncertainty reduction and geological feature prediction up to 500 meters ahead of the drill-bit.
Contribution
It introduces a novel GAN-based approach for fast, geologically consistent 2D geological modeling and probabilistic forecasting in real-time geosteering.
Findings
Reduces geological uncertainty ahead of drill-bit.
Accurately predicts major geological features up to 500 meters.
Demonstrates effectiveness in synthetic fluvial successions.
Abstract
Quantitative workflows utilizing real-time data to constrain ahead-of-bit uncertainty have the potential to improve geosteering significantly. Fast updates based on real-time data are essential when drilling in complex reservoirs with high uncertainties in pre-drill models. However, practical assimilation of real-time data requires effective geological modeling and mathematically robust parameterization. We propose a generative adversarial deep neural network (GAN), trained to reproduce geologically consistent 2D sections of fluvial successions. Offline training produces a fast GAN-based approximation of complex geology parameterized as a 60-dimensional model vector with standard Gaussian distribution of each component. Probabilistic forecasts are generated using an ensemble of equiprobable model vector realizations. A forward-modeling sequence, including a GAN, converts the initial…
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