z-logo
Premium
Automatic stacking‐velocity estimation using similarity‐weighted clustering
Author(s) -
Liu Guochang,
Li Chao,
Liu Xingye,
Ge Qiang,
Chen Xiaohong
Publication year - 2018
Publication title -
geophysical prospecting
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.735
H-Index - 79
eISSN - 1365-2478
pISSN - 0016-8025
DOI - 10.1111/1365-2478.12602
Subject(s) - cluster analysis , similarity (geometry) , centroid , noise (video) , pattern recognition (psychology) , stacking , weighting , k medians clustering , geology , algorithm , mathematics , computer science , artificial intelligence , cure data clustering algorithm , correlation clustering , physics , image (mathematics) , nuclear magnetic resonance , acoustics
Local seismic event slopes contain subsurface velocity information and can be used to estimate seismic stacking velocity. In this paper, we propose a novel approach to estimate the stacking velocity automatically from seismic reflection data using similarity‐weighted k‐ means clustering, in which the weights are local similarity between each trace in common midpoint gather and a reference trace. Local similarity reflects the local signal‐to‐noise ratio in common midpoint gather. We select the data points with high signal‐to‐noise ratio to be used in the velocity estimation with large weights in mapped traveltime and velocity domain by similarity‐weighted k‐ means clustering with thresholding. By using weighted k‐ means clustering, we make clustering centroids closer to those data points with large weights, which are more reliable and have higher signal‐to‐noise ratio. The interpolation is used to obtain the whole velocity volume after we have got velocity points calculated by weighted k‐ means clustering. Using the proposed method, one obtains a more accurate estimate of the stacking velocity because the similarity‐based weighting in clustering takes into account the signal‐to‐noise ratio and reliability of different data points in mapped traveltime and velocity domain. In order to demonstrate that, we apply the proposed method to synthetic and field data examples, and the resulting images are of higher quality when compared with the ones obtained using existing methods.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here