TY - JOUR
T1 - Machine learning-based seismic spectral attribute analysis to delineate a tight-sand reservoir in the Sulige gas field of central Ordos Basin, western China
AU - Wang, Zhiguo
AU - Gao, Dengliang
AU - Lei, Xiaolan
AU - Wang, Daxing
AU - Gao, Jinghuai
N1 - Publisher Copyright:
© 2019 Elsevier Ltd
PY - 2020/3
Y1 - 2020/3
N2 - We propose a machine learning-based seismic spectral attribute (SSA) analysis to delineate the thickness of a tight-sand reservoir in the Sulige gas field of central Ordos Basin, western China. In our workflow, we first implement the seismic spectral decomposition by using the continuous wavelet transform (CWT) with the generalized Morse wavelets (GMWs). The best parameters of generalized Morse wavelets (GMWs) are obtained by using a geological model of the tight reservoir. Second, we extract SSAs of the target reservoir of interest. Then, we perform multi-dimensional data analysis using the principal component analysis (PCA), thus significantly reduce the computational time and storage space for SSAs analysis and visualization. Using red-green-blue (RGB) blending technique we make a high-resolution subsurface depositional facies map from the reduced three principal components from the original multi-dimensional SSAs. Next, we perform unsupervised classification via clustering of SSAs using the fuzzy self-organizing map (FSOM) to generate a seismic facies classification of the reservoir. Finally, we combine multiple linear regression (MLR) and the radial basis function neural network (RBFNN) to provide a quantitative prediction of the reservoir thickness by using preciously drilled wells to train the neural network and to validate the results. Our results illustrate significant variation in reservoir thickness across the field, which can be useful for evaluating reservoir heterogeneity and connectivity. We conclude that our machine-aided multi-dimensional SSAs analysis can be useful for play screening in the reconnaissance phase, prospect generation and maturation in the exploration phase, and well placement in the development phase.
AB - We propose a machine learning-based seismic spectral attribute (SSA) analysis to delineate the thickness of a tight-sand reservoir in the Sulige gas field of central Ordos Basin, western China. In our workflow, we first implement the seismic spectral decomposition by using the continuous wavelet transform (CWT) with the generalized Morse wavelets (GMWs). The best parameters of generalized Morse wavelets (GMWs) are obtained by using a geological model of the tight reservoir. Second, we extract SSAs of the target reservoir of interest. Then, we perform multi-dimensional data analysis using the principal component analysis (PCA), thus significantly reduce the computational time and storage space for SSAs analysis and visualization. Using red-green-blue (RGB) blending technique we make a high-resolution subsurface depositional facies map from the reduced three principal components from the original multi-dimensional SSAs. Next, we perform unsupervised classification via clustering of SSAs using the fuzzy self-organizing map (FSOM) to generate a seismic facies classification of the reservoir. Finally, we combine multiple linear regression (MLR) and the radial basis function neural network (RBFNN) to provide a quantitative prediction of the reservoir thickness by using preciously drilled wells to train the neural network and to validate the results. Our results illustrate significant variation in reservoir thickness across the field, which can be useful for evaluating reservoir heterogeneity and connectivity. We conclude that our machine-aided multi-dimensional SSAs analysis can be useful for play screening in the reconnaissance phase, prospect generation and maturation in the exploration phase, and well placement in the development phase.
KW - Artificial neural network
KW - Ordos basin
KW - Principal component analysis
KW - Red-green-blue blending
KW - Seismic facies
KW - Spectral attribute
KW - Tight reservoir
KW - Wavelet transform
UR - https://www.scopus.com/pages/publications/85074924132
U2 - 10.1016/j.marpetgeo.2019.104136
DO - 10.1016/j.marpetgeo.2019.104136
M3 - 文章
AN - SCOPUS:85074924132
SN - 0264-8172
VL - 113
JO - Marine and Petroleum Geology
JF - Marine and Petroleum Geology
M1 - 104136
ER -