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Spatial Pattern Learning: Dip Structure Constraint Multi-View Convolutional Neural Network for Pre-Stacked Seismic Inversion.

IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING(2023)

Tsinghua Univ | China Natl Petr Corp CNPC

Cited 1|Views18
Abstract
Seismic elastic parameters inversion is a method to predict the geophysical reservoir parameters, including P-wave velocity, S-wave velocity, and density, by using pre-stacked seismic data. Deep learning (DL) techniques have been utilized to establish complex and nonlinear inversion model. However, these DL-based inversion methods have some limitations. For instance, they often overlook the complementary observation distance information in pre-stacked seismic data at different incident angels, and they do not always consider the spatial structure and physical information conditions. As a result, the inversion solutions may be prone to falling into local minima. In order to alleviate this issue, we propose a spatial pattern learning method for pre-stacked seismic inversion (SPL-Inversion). First, multi-view convolutional neural network (CNN) is used to extract more complementary high-dimensional features of pre-stacked seismic data, which implies the spatial observation distance pattern of the input data. Second, the dip structure loss item is used to ensure the structural consistency between inverted results and seismic data, which constrains the spatial continuity. Third, forward physical constraint item improves the physical interpretability of inversion results. In addition, forward reconstruction result and estimated dip structure result can be used to automatically evaluate inversion results on unlabeled data. The proposed approach has been proven in enhancing the inversion accuracy and spatial continuity based on experimental results from both synthetic pre-stacked seismic data and real pre-stacked seismic data.
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Key words
Data models,Convolutional neural networks,Geology,Mathematical models,Feature extraction,Estimation,Computational modeling,Deep learning (DL),dip structure,multi-view,physical information,seismic inversion,velocity model
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