--> How to Illuminate the Reservoir from Surface Seismic Data? Integrated Deep Learning Aided Waveform Inversion
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AAPG Middle East Geoscience Technology Workshop, Integrated Emerging Exploration Concepts

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How to Illuminate the Reservoir from Surface Seismic Data? Integrated Deep Previous HitLearningNext Hit Aided Waveform Inversion

Abstract

Reservoir characterization is an essential component of oil and gas production, as well as prediction. Classic reservoir characterization algorithms, both deterministic and stochastic, are typically based on stacked images and rely on simplifications and approximations to the subsurface. Elastic full-waveform inversion, which aims to match the waveforms of pre-stack seismic data, can potentially provide more accurate high-resolution reservoir characterization from seismic data. However, full-waveform inversion can easily fail to characterize deep-buried reservoirs due to illumination limitations. We present a deep Previous HitlearningNext Hit aided elastic full-waveform inversion strategy Previous HitusingNext Hit observed seismic data and well logs available in the target area. Five Previous HitfaciesNext Hit are extracted from the well and then connected to the inverted P- and S-wave velocities Previous HitusingNext Hit trained neural networks, which corresponds to the distribution of Previous HitfaciesNext Hit in the subsurface. Such a distribution is further converted to the desired reservoir-related parameters such as velocities and anisotropy parameters Previous HitusingNext Hit a weighted summation. Finally, we further update these estimated parameters by matching the resulting simulated wavefields to the observed seismic data, which corresponds to another round of elastic full-waveform inversion aided by the a priori knowledge gained from the predictions of Previous HitmachineNext Hit Previous HitlearningTop. A North Sea field data example, the Volve Oil Field data set, is used to demonstrate our proposed method.