1887

Abstract

Summary

We use a CycleGAN to map acoustic synthetic data to elastic data, and to map elastic field data to acoustic data, and use the resulting data to perform acoustic FWI on a 3D field dataset that shows strong elastic effects at top chalk. Using machine learning to change the effective physics of field data has many other potential applications.

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/content/papers/10.3997/2214-4609.201901969
2019-06-03
2020-04-01
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References

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