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

TL;DR
This paper introduces a novel deep neural network framework for pseudo-spectral full waveform inversion, improving subsurface imaging by leveraging data-driven methods that outperform classical approaches in complex geological settings.
Contribution
It reformulates pseudo-spectral FWI as a deep learning algorithm, bridging a gap in seismic inversion techniques and enhancing imaging in challenging environments.
Findings
Outperforms classical FWI in deep and over-thrust areas
Leverages global approximation to avoid physical modeling constraints
Validated on synthetic and Marmousi datasets
Abstract
FWI 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. These exist between data and theory-guided methods. 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. Application of seismic FWI has recently started to be investigated within Deep Learning. This has focussed on the time-domain approach, while the…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Optical Systems and Laser Technology · Seismic Waves and Analysis
