Visual duplicates search of fracture zones of seismic databasesbased on the method of solving the ICP variational problemin closed form and inverted index

Abstract

In this paper fast methods are proposed for search the fracture zones in seismic databases on two types of data: seismic section (two-dimensional data) and seismic cube (three-dimensional data). These methods are an integral part of the mapping technology for filtering channels and large volumes of seismic data and useful for automating interpretation of heterogeneous seismic data. The proposed methods for searching the similarity of fracture zones were investigated using the Open Seismic Repository reference dataset, which contains information about geological rocks in the area of the North Sea and compared with other known methods for solving this problem, the results were discussed in the article.

About the authors

Alexander V. Vokhmintsev

Chelyabinsk State University

Author for correspondence.
Email: vav@csu.ru

Doctor of Technical Sciences, Head of Research Laboratory "Intelligent Information Technologies and Systems"

Russian Federation, Chelyabinsk

Dmitriy S. Botov

Chelyabinsk State University

Email: dmbotov@gmail.com

Candidate of Technical Sciences, Associate Professor of the Institute of Information Technologies

Russian Federation, Chelyabinsk

Yuliya V. Petrichenko

Chelyabinsk State University

Email: iit@csu.ru

Candidate of Economic Sciences, Director of the Institute of Information Technologies

Russian Federation, Chelyabinsk

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