Probabilistic forecasting for geosteering in fluvial successions using a generative adversarial network

07/04/2022
by   Sergey Alyaev, et al.
0

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 (prior) ensemble of realizations into EM log predictions. An ensemble smoother minimizes statistical misfits between predictions and real-time data, yielding an update of model vectors and reduced uncertainty around the well. Updates can be then translated to probabilistic predictions of facies and resistivities. The present paper demonstrates a workflow for geosteering in an outcrop-based, synthetic fluvial succession. In our example, the method reduces uncertainty and correctly predicts most major geological features up to 500 meters ahead of drill-bit.

READ FULL TEXT

page 2

page 3

page 4

page 5

page 6

page 7

research
04/06/2021

Deep learning for prediction of complex geology ahead of drilling

During a geosteering operation the well path is intentionally adjusted i...
research
06/19/2022

Quantifying Uncertainty In Traffic State Estimation Using Generative Adversarial Networks

This paper aims to quantify uncertainty in traffic state estimation (TSE...
research
07/22/2019

Bayesian Inference with Generative Adversarial Network Priors

Bayesian inference is used extensively to infer and to quantify the unce...
research
09/10/2019

Machine Learning for Stochastic Parameterization: Generative Adversarial Networks in the Lorenz '96 Model

Stochastic parameterizations account for uncertainty in the representati...
research
06/08/2021

Seismic Inverse Modeling Method based on Generative Adversarial Network

Seismic inverse modeling is a common method in reservoir prediction and ...
research
03/29/2019

Probabilistic Forecasting of Sensory Data with Generative Adversarial Networks - ForGAN

Time series forecasting is one of the challenging problems for humankind...
research
10/27/2022

Strategic Geosteeering Workflow with Uncertainty Quantification and Deep Learning: A Case Study on the Goliat Field

The real-time interpretation of the logging-while-drilling data allows u...

Please sign up or login with your details

Forgot password? Click here to reset