Journal of Physics: Theories and Applications
Vol 1, No 1 (2017): Journal of Physics: Theories and Applications

Fault detection using neural network

Elistia Liza Namigo (Physics Department of Andalas University Kampus Limau Manis Padang Sumatera Barat)



Article Info

Publish Date
08 Mar 2017

Abstract

Fault detection technique using neural networks have been successfully applied to a seismic data volume. This technique  is basically creating  a volume that highlights faults by combining the information from several fault indicators attributes (i.e. similarity, curvature and energy) into fault occurrence probability. This is performed by training a neural network on  two sets of attributes extracted at sample  locations picked manually -  one set  represents the fault class and the other represents the non-fault class. The next step is to apply the trained artificial neural network on the seismic data. Result indicates that faults are more highlighted and have better continuity since the surrounding noise  are mostly suppressed.

Copyrights © 2017






Journal Info

Abbrev

jphystheor-appl

Publisher

Subject

Education Materials Science & Nanotechnology Physics

Description

Journal of Physics: Theories and Applications (cited as J. Phys.: Theor. Appl.) is a peer-reviewed and open access journal, which is published twice a year by Physics Department, Sebelas Maret University. The journal is designed to serve researchers, developers, professionals, graduate students and ...