Meta-Processing: A robust framework for multi-tasks seismic processing
Shijun Cheng, Randy Harsuko, Tariq Alkhalifah

TL;DR
This paper introduces Meta-Processing, a unified meta-learning framework for seismic processing tasks that enables neural networks to adapt quickly with limited data, improving efficiency and accuracy across various seismic tasks.
Contribution
The paper proposes a novel meta-learning approach for seismic processing that trains a universal network initialization, allowing rapid adaptation to multiple tasks with limited data.
Findings
Significantly faster convergence in seismic tasks.
Improved prediction accuracy over traditional methods.
Effective on both synthetic and field data.
Abstract
Machine learning-based seismic processing models are typically trained separately to perform specific seismic processing tasks (SPTs), and as a result, require plenty of training data. However, preparing training data sets is not trivial, especially for supervised learning (SL). Nevertheless, seismic data of different types and from different regions share generally common features, such as their sinusoidal nature and geometric texture. To learn the shared features, and thus, quickly adapt to various SPTs, we develop a unified paradigm for neural network-based seismic processing, called Meta-Processing, that uses limited training data for meta learning a common network initialization, which offers universal adaptability features. The proposed Meta-Processing framework consists of two stages: meta-training and meta-testing. In the meta-training stage, each SPT is treated as a separate…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Reservoir Engineering and Simulation Methods · Drilling and Well Engineering
