首页|Seismic modeling by combining the finite-difference scheme with the numerical dispersion suppression neural network

Seismic modeling by combining the finite-difference scheme with the numerical dispersion suppression neural network

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Seismic finite-difference(FD)modeling suffers from numerical dispersion including both the temporal and spatial dispersion,which can decrease the accuracy of the numerical modeling.To improve the accuracy and efficiency of the conventional numerical modeling,I develop a new seismic modeling method by combining the FD scheme with the numerical dispersion suppression neural network(NDSNN).This method involves the following steps.First,a training data set composed of a small number of wavefield snapshots is generated.The wavefield snapshots with the low-accuracy wavefield data and the high-accuracy wavefield data are paired,and the low-accuracy wavefield snapshots involve the obvious numerical dispersion including both the temporal and spatial dispersion.Second,the NDSNN is trained until the network converges to simultaneously suppress the temporal and spatial dispersion.Third,the entire set of low-accuracy wavefield data is computed quickly using FD modeling with the large time step and the coarse grid.Fourth,the NDSNN is applied to the entire set of low-accuracy wavefield data to suppress the numerical dispersion including the temporal and spatial dispersion.Numerical modeling examples verify the effectiveness of my proposed method in improving the computational accuracy and efficiency.

Finite differenceSeismic modelingNumerical dispersion suppressionComputational accuracyComputational efficiency

Hong-Yong Yan

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Key Laboratory of Petroleum Resources Research,Institute of Geology and Geophysics,Chinese Academy of Sciences,Beijing,100029,China

Innovation Academy for Earth Science,Chinese Academy of Sciences,Beijing,100029,China

2024

石油科学(英文版)
中国石油大学(北京)

石油科学(英文版)

EI
影响因子:0.88
ISSN:1672-5107
年,卷(期):2024.21(5)