Automatic velocity picking from semblances with a new deep-learning regression strategy: Comparison with a classification approach

Author:

Wang Wenlong1ORCID,McMechan George A.2ORCID,Ma Jianwei3ORCID,Xie Fei4

Affiliation:

1. Harbin Institute of Technology, Center of Geophysics, Department of Mathematics and Artificial Intelligence Laboratory, Harbin 150001, China.(corresponding author).

2. The University of Texas at Dallas, Center for Lithospheric Studies, 800 West Campbell Road (ROC21), Richardson, Texas 75080, USA..

3. Harbin Institute of Technology, Center of Geophysics, Department of Mathematics and Artificial Intelligence Laboratory, Harbin 150001, China and Peking University, School of Earth and Space Sciences, Beijing 100871, China..

4. Sinopec, Exploration and Production Research Institute, Beijing 100083, China..

Abstract

The physical basis, parameterization, and assumptions involved in root-mean-square (rms) velocity estimation have not significantly changed since they were first developed. However, these three aspects are all good targets for novel application of the recent emergence of machine learning (ML). Therefore, it is useful at this time to provide a tutorial overview of two state-of-the-art ML implementations; we have designed and evaluated classification and regression neural networks for the extraction of apparent rms velocity trajectories from semblance data. Both networks share a similar end-to-end trainable structure, except for the final layer. In the classification network, the velocity picking is performed by finding the largest amplitude trajectory through all velocity bins. The regression network, on the other hand, applies a differentiable soft-argmax function that converts the feature maps directly to apparent rms velocity values as functions of traveltime. Relative confidence maps can also be estimated from both neural networks. A large number of synthetic models with horizontal layers are created, and common-midpoint gathers are simulated from those models as training samples. Transfer learning is applied to fine-tune the networks with a small number of samples for testing with synthetic and field data from more complicated (2D) models. Tests using synthetic data show that the regression and classification networks can give reasonable velocity predictions from semblances, but the regression network gives higher accuracy.

Funder

National Grand Project for Science and Technology

National Natural Science Foundation of China

The Sponsors of the UT-Dallas Geophysical Consortium

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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