Well log data generation and imputation using sequence-based generative adversarial networks
Abdulrahman Al-Fakih, A. Koeshidayatullah, Tapan Mukerji, Sadam, Al-Azani, SanLinn I. Kaka

TL;DR
This paper presents a novel sequence-based GAN framework for generating and imputing well log data, significantly improving data accuracy and completeness for hydrocarbon exploration.
Contribution
It introduces a dual GAN approach combining TSGAN and SeqGAN for synthetic data generation and missing data imputation in well logs, achieving superior accuracy over existing models.
Findings
Achieved R^2 values of 0.921, 0.899, and 0.594.
Reduced MAPE to as low as 0.005.
Set new benchmarks for data quality in geosciences.
Abstract
Well log analysis is crucial for hydrocarbon exploration, providing detailed insights into subsurface geological formations. However, gaps and inaccuracies in well log data, often due to equipment limitations, operational challenges, and harsh subsurface conditions, can introduce significant uncertainties in reservoir evaluation. Addressing these challenges requires effective methods for both synthetic data generation and precise imputation of missing data, ensuring data completeness and reliability. This study introduces a novel framework utilizing sequence-based generative adversarial networks (GANs) specifically designed for well log data generation and imputation. The framework integrates two distinct sequence-based GAN models: Time Series GAN (TSGAN) for generating synthetic well log data and Sequence GAN (SeqGAN) for imputing missing data. Both models were tested on a dataset from…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Image Processing and 3D Reconstruction · Seismology and Earthquake Studies
MethodsSparse Evolutionary Training
