Theory-guided Pseudo-spectral Full Waveform Inversion via Deep Neural Networks
Christopher Zerafa, Pauline Galea, Cristiana Sebu

TL;DR
This paper introduces a novel theory-guided pseudo-spectral full waveform inversion method using Recurrent Neural Networks, improving accuracy, stability, and fault detection in seismic imaging compared to classical approaches.
Contribution
It reformulates pseudo-spectral FWI as a deep learning algorithm with a new RNN framework, integrating physics-based models with neural networks for enhanced seismic inversion.
Findings
More accurate than classical FWI with 0.05 error tolerance
Provides more stable convergence and better fault detection
Achieves cleaner residuals for edge detection
Abstract
Full-Waveform Inversion seeks to achieve a high-resolution model of the subsurface through the application of multi-variate optimization to the seismic inverse problem. Although now a mature technology, FWI has limitations related to the choice of the appropriate solver for the forward problem in challenging environments requiring complex assumptions, and very wide angle and multi-azimuth data necessary for full reconstruction are often not available. Deep Learning techniques have emerged as excellent optimization frameworks. Data-driven methods do not impose a wave propagation model and are not exposed to modelling errors. On the contrary, deterministic models are governed by the laws of physics. Seismic FWI has recently started to be investigated as a Deep Learning framework. Focus has been on the time-domain, while the pseudo-spectral domain has not been yet explored. However,…
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Taxonomy
TopicsOptical Systems and Laser Technology · Geophysics and Sensor Technology · Seismic Imaging and Inversion Techniques
MethodsFocus
