A large-scale framework for symbolic implementations of seismic inversion algorithms in Julia
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Published:2019-05-01
Issue:3
Volume:84
Page:F57-F71
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ISSN:0016-8033
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Container-title:GEOPHYSICS
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language:en
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Short-container-title:GEOPHYSICS
Author:
Witte Philipp A.1ORCID, Louboutin Mathias1ORCID, Kukreja Navjot2, Luporini Fabio2, Lange Michael3ORCID, Gorman Gerard J.2, Herrmann Felix J.1
Affiliation:
1. Georgia Institute of Technology, School of Computational Science and Engineering, Cherry Emerson Building, Ferst Drive, Atlanta, Georgia 30313, USA.. 2. Imperial College London, Department of Earth Science & Engineering, Royal School of Mines, Prince Consort Road, Kensington, London SW7 2BP, UK.. 3. European Centre for Medium-Range Weather Forecasts, Shinfield Road, Reading RG2 9AX, UK..
Abstract
Writing software packages for seismic inversion is a very challenging task because problems such as full-waveform inversion or least-squares imaging are algorithmically and computationally demanding due to the large number of unknown parameters and the fact that waves are propagated over many wavelengths. Therefore, software frameworks need to combine versatility and performance to provide geophysicists with the means and flexibility to implement complex algorithms that scale to exceedingly large 3D problems. Following these principles, we have developed the Julia Devito Inversion framework, an open-source software package in Julia for large-scale seismic modeling and inversion based on Devito, a domain-specific language compiler for automatic code generation. The framework consists of matrix-free linear operators for implementing seismic inversion algorithms that closely resemble the mathematical notation, a flexible resilient parallelization, and an interface to Devito for generating optimized stencil code to solve the underlying wave equations. In comparison with many manually optimized industry codes written in low-level languages, our software is built on the idea of independent layers of abstractions and user interfaces with symbolic operators. Through a series of numerical examples, we determined that this allows users to implement a series of increasingly complex algorithms for waveform inversion and imaging as simple Julia scripts that scale to large-scale 3D problems. This illustrates that software based on the paradigms of abstract user interfaces and automatic code generation and makes it possible to manage the complexity of the algorithms and performance optimizations, thus providing a high-performance research and production framework.
Publisher
Society of Exploration Geophysicists
Subject
Geochemistry and Petrology,Geophysics
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