LGSPGEO-PHApr 30, 2021

Data-driven Full-waveform Inversion Surrogate using Conditional Generative Adversarial Networks

arXiv:2105.00100v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of slow and resource-intensive geophysical reservoir characterization for the oil and gas industry, offering a potential speed-up, though it appears incremental as it applies an existing method (cGAN) to a new domain-specific data problem.

The study tackled the high computational cost of full-waveform inversion (FWI) velocity modeling in the oil and gas industry by proposing a conditional generative adversarial network (cGAN) to generate detailed velocity field models, with results showing accurate matching to real FWI outputs based on metrics like percent error and structural similarity index.

In the Oil and Gas industry, estimating a subsurface velocity field is an essential step in seismic processing, reservoir characterization, and hydrocarbon volume calculation. Full-waveform inversion (FWI) velocity modeling is an iterative advanced technique that provides an accurate and detailed velocity field model, although at a very high computational cost due to the physics-based numerical simulations required at each FWI iteration. In this study, we propose a method of generating velocity field models, as detailed as those obtained through FWI, using a conditional generative adversarial network (cGAN) with multiple inputs. The primary motivation of this approach is to circumvent the extremely high cost of full-waveform inversion velocity modeling. Real-world data were used to train and test the proposed network architecture, and three evaluation metrics (percent error, structural similarity index measure, and visual analysis) were adopted as quality criteria. Based on these metrics, the results evaluated upon the test set suggest that the GAN was able to accurately match real FWI generated outputs, enabling it to extract from input data the main geological structures and lateral velocity variations. Experimental results indicate that the proposed method, when deployed, has the potential to increase the speed of geophysical reservoir characterization processes, saving on time and computational resources.

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