Hierarchical transfer learning for deep learning velocity model building

Author:

Simon Jérome1ORCID,Fabien-Ouellet Gabriel2ORCID,Gloaguen Erwan3ORCID,Khurjekar Ishan4ORCID

Affiliation:

1. Institut National de la Recherche Scientifique, Quebec City, Canada. (corresponding author)

2. Polytechnique Montréal, Montreal, Canada.

3. Institut National de la Recherche Scientifique, Quebec City, Canada.

4. University of Florida, Gainesville, Florida, USA.

Abstract

Deep learning is a promising approach to velocity model building because it has the potential of processing large seismic surveys with minimal resources. By leveraging large quantities of model-gather pairs, neural networks (NNs) can automatically map data to the model space, directly providing a solution to the inverse problem. Such mapping requires big data, which proves prohibitive for 2D and 3D surveys of realistic size. We have developed a transfer learning (TL) strategy. A network is first trained on a smaller subproblem, which then becomes the starting solution to a larger, more difficult data set, akin to the hierarchical multiscale strategy for full-waveform inversion. We perform TL by having subobjectives that escalate in complexity and by first training an NN at estimating horizontally layered velocity models and then proceeding to train an augmented network at estimating 2D dipping layered models. TL improves convergence and allows using a lesser quantity of 2D models for training. For synthetic tests, the structural similarity index measure of 2D interval velocity models in the time domain is [Formula: see text] and the root-mean-square (rms) error is [Formula: see text] m/s. We benchmark our algorithm on the Marmousi2 model and observe that our method can apply to velocity models with continuous deformed layers with dips up to 35°. We benchmark our algorithm on 2D marine field data and produce an rms velocity model that leads to coherent stacking and a time interval velocity model that reproduces salient features of the stacked section. TL expedites and regularizes training and data-driven techniques may be applied to field data with minimal preprocessing even though we lack real target velocity models.

Funder

Society of Economic Geologists Foundation

Natural Sciences and Engineering Research Council of Canada

Vanier Canada Graduate Scholarships

Fonds de recherche du Québec – Nature et technologies

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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