A novel selection method of seismic attributes based on gray relational degree and support vector machine
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Date
Authors
Huang, Yaping
Yang, Haijun
Qi, Xuemei
Malekian, Reza
Pfeiffer, Olivia
Li, Zhixiong
Journal Title
Journal ISSN
Volume Title
Publisher
Public Library of Science
Abstract
The selection of seismic attributes is a key process in reservoir prediction because the prediction
accuracy relies on the reliability and credibility of the seismic attributes. However,
effective selection method for useful seismic attributes is still a challenge. This paper presents
a novel selection method of seismic attributes for reservoir prediction based on the
gray relational degree (GRD) and support vector machine (SVM). The proposed method
has a two-hierarchical structure. In the first hierarchy, the primary selection of seismic attributes
is achieved by calculating the GRD between seismic attributes and reservoir parameters,
and the GRD between the seismic attributes. The principle of the primary selection is
that these seismic attributes with higher GRD to the reservoir parameters will have smaller
GRD between themselves as compared to those with lower GRD to the reservoir parameters.
Then the SVM is employed in the second hierarchy to perform an interactive error verification
using training samples for the purpose of determining the final seismic attributes. A
real-world case study was conducted to evaluate the proposed GRD-SVM method. Reliable
seismic attributes were selected to predict the coalbed methane (CBM) content in southern
Qinshui basin, China. In the analysis, the instantaneous amplitude, instantaneous bandwidth,
instantaneous frequency, and minimum negative curvature were selected, and the
predicted CBM content was fundamentally consistent with the measured CBM content. This
real-world case study demonstrates that the proposed method is able to effectively select
seismic attributes, and improve the prediction accuracy. Thus, the proposed GRD-SVM
method can be used for the selection of seismic attributes in practice.
Description
S1 File. The data is used in ªapplication to seismic dataº section.
S2 File. The data is used in ªapplication to seismic dataº section.
S3 File. The data is used in ªapplication to seismic dataº section.
S4 File. The data is used in ªapplication to seismic dataº section.
S5 File. The data is used in ªapplication to seismic dataº section.
S6 File. The data is used in ªapplication to seismic dataº section.
S7 File. The data is used in ªapplication to seismic dataº section.
S8 File. The data is used in ªapplication to seismic dataº section.
S9 File. The data is used in ªapplication to seismic dataº section.
S2 File. The data is used in ªapplication to seismic dataº section.
S3 File. The data is used in ªapplication to seismic dataº section.
S4 File. The data is used in ªapplication to seismic dataº section.
S5 File. The data is used in ªapplication to seismic dataº section.
S6 File. The data is used in ªapplication to seismic dataº section.
S7 File. The data is used in ªapplication to seismic dataº section.
S8 File. The data is used in ªapplication to seismic dataº section.
S9 File. The data is used in ªapplication to seismic dataº section.
Keywords
Accuracy, Algorithm, Calculation, Correlation coefficient, Mathematical analysis, Mathematical models, Prediction, Validity, Seismic attributes, Gray relational degree (GRD), Support vector machine (SVM), Coalbed methane (CBM)
Sustainable Development Goals
Citation
Huang Y, Yang H, Qi X, Malekian R,
Pfeiffer O, Li Z (2018) A novel selection method of
seismic attributes based on gray relational degree
and support vector machine. PLoS ONE 13(2):
e0192407. https://DOI.org/ 10.1371/journal.pone.0192407.