Title of article :
Support Vector Machine-based Facies Classification Using Seismic Attributes in an Oil Field of Iran
Author/Authors :
Bagheri، M. نويسنده Institute of Geophysics, University of Tehran, Tehran, Iran Bagheri, M. , Riahi، Mohammad Ali نويسنده Institute of Geophysics, University of Tehran, Tehran, Iran Riahi, Mohammad Ali
Issue Information :
فصلنامه با شماره پیاپی سال 2013
Abstract :
Seismic facies analysis (SFA) aims to classify similar seismic traces based on amplitude, phase,
frequency, and other seismic attributes. SFA has proven useful in interpreting seismic data, allowing
significant information on subsurface geological structures to be extracted. While facies analysis has
been widely investigated through unsupervised-classification-based studies, there are few cases
associated with supervised classification methods. In this study, we follow supervised classification
scheme under classifiers, the support vector classifier (SVC), and multilayer perceptrons (MLP) to
provide an opportunity for directly assessing the feasibility of different classifiers. Before choosing
classifier, we evaluate extracted seismic attributes using forward feature selection (FFS) and
backward feature selection (BFS) methods for logical SFA. The analyses are examined with data
from an oil field in Iran, and the results are discussed in detail. The numerical relative errors
associated with these two classifiers as a proxy for the robustness of SFA confirm reliable
interpretations. The higher performance of SVC comparing to MLP classifier for SFA is proved in
two validation steps. The results also demonstrate the power and flexibility of SVC compared with
MLP for SFA.
Journal title :
Iranian Journal of Oil and Gas Science and Technology(IJOGST)
Journal title :
Iranian Journal of Oil and Gas Science and Technology(IJOGST)