Skip to content

Code for "Global optimization for AVO inversion: a genetic algorithm using a table-based ray-theory algorithm" presented at the 78th EAGE Conference and Exhibition 2016.

Notifications You must be signed in to change notification settings

hbueno/eage2016-avo

Repository files navigation

Abstract submitted to the 78th EAGE Conference & Exhibition 2016.

Dates: 30 May - 2 June 2016.

Location: Reed Messe Wien, Vienna, Austria.

Deadline to submit the expanded abstract: 15 of January 2016.

Published expanded abstract: DOI: 10.3997/2214-4609.201600847

Citation:

Ferreira, W. C., F. Hilterman, L. A. Diogo, H. B. Santos, J. Schleicher, and A. Novais, 2016, Global optimization for AVO inversion: a genetic algorithm using a table-based ray-theory algorithm: Presented at the 78th EAGE Conference and Exhibition 2016, EAGE Publications, doi: 10.3997/2214-4609.201600847.

Global optimization for AVO inversion: a genetic algorithm using a table-based ray-theory algorithm

Authors:

Wanderson C. Ferreira, Fred Hilterman, Liliana A. Diogo, Henrique B. Santos, Joerg Schleicher and Amélia Novais

keywords: AVO; inversion problem; P-wave; S-wave; velocity; density;

Summary

Amplitude Variation with Offset (AVO) inversion provides estimates of the P-wave velocity, S-wave velocity and density of a stratified medium. Global optimization is desirable for the inversion to account for the multi-parametric behaviour of the AVO inversion which is strongly affected by the initial estimates of the model rock properties. We carried out an analysis to verify the dependency between P-wave, S-wave velocity and density in the recovered parameters using empirical relations as constraints. In inversion schemes, the forward modelling is often the most time consuming pro- cess. To reduce computation time, we have implemented a genetic algorithm using a table-based ray-theory algorithm to allow for a large amount of models in the global search. Our results show that the genetic algorithm was capable of recovering the physical parameters with good agreement for examples using the empirical constraints. However, it sometimes converged to solutions which were far from the correct answer, but were good models to explain the observed dataset. The forward modelling algorithm has shown excellent performance to be used in global optimization schemes, because it allows the use of a large number of members in the population of the genetic algorithm.

Topics

Session: AVO-AVA - Theory I

About

Code for "Global optimization for AVO inversion: a genetic algorithm using a table-based ray-theory algorithm" presented at the 78th EAGE Conference and Exhibition 2016.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published