Integration of gustafson-kessel algorithm and ohonen's self-organizing maps for unsupervised clustering of seismic attributes
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In: Journal of seismic exploration, Vol. 18.2009, No. 4, 2009, p. 315-328.
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TY - JOUR
T1 - Integration of gustafson-kessel algorithm and ohonen's self-organizing maps for unsupervised clustering of seismic attributes
AU - Eftekharifar, Mehdi
AU - Riahi, M. Ali
AU - Kharrat, Riyaz
PY - 2009
Y1 - 2009
N2 - The goal of different methods for clustering of seismic attributes has been to analyze the discrimination ability of the chosen set of attributes. Kohonen clustering networks or Kohonen's self organizing maps are well known for cluster analysis (unsupervised learning). This class of algorithms is a set of heuristic procedures that suffers from some major problems. In this paper we propose the use of an unsupervised method by integrating the fuzzy c-means clustering and Gustafson-Kessel algorithms into the learning rate and updating strategies of the Kohonen clustering network. Using a new fuzzy calibration method, the different attribute classes are calibrated to lithology classes and the appropriate attributes and classes are determined. In this paper we propose a robust clustering algorithm which can be quality-controlled by using fuzzy modeling. That means using the clustering results, the available but limited log data is rebuilt after clustering to see the performance of the clustering technique. Classification and modeling results tested on a real data set show reasonable accuracy when compared to well logs.
AB - The goal of different methods for clustering of seismic attributes has been to analyze the discrimination ability of the chosen set of attributes. Kohonen clustering networks or Kohonen's self organizing maps are well known for cluster analysis (unsupervised learning). This class of algorithms is a set of heuristic procedures that suffers from some major problems. In this paper we propose the use of an unsupervised method by integrating the fuzzy c-means clustering and Gustafson-Kessel algorithms into the learning rate and updating strategies of the Kohonen clustering network. Using a new fuzzy calibration method, the different attribute classes are calibrated to lithology classes and the appropriate attributes and classes are determined. In this paper we propose a robust clustering algorithm which can be quality-controlled by using fuzzy modeling. That means using the clustering results, the available but limited log data is rebuilt after clustering to see the performance of the clustering technique. Classification and modeling results tested on a real data set show reasonable accuracy when compared to well logs.
KW - Complex seismic attributes
KW - Fuzzy logic
KW - Fuzzy self- organizing maps
KW - Gustafson-kessel algorithm
KW - Inversion
KW - Kohonen's self-organizing maps (som)
KW - Reservoir characterization
KW - Unsupervised clustering
UR - http://www.scopus.com/inward/record.url?scp=70350180276&partnerID=8YFLogxK
M3 - Article
AN - SCOPUS:70350180276
VL - 18.2009
SP - 315
EP - 328
JO - Journal of seismic exploration
JF - Journal of seismic exploration
SN - 0963-0651
IS - 4
ER -