Meta-learning-enhanced implicit full waveform inversion
Zefeng Wang, Shijun Cheng, Weijian Mao, Wei Ouyang, Huanhuan Tang

TL;DR
This paper introduces Meta-IFWI, a meta-learning approach to implicit full waveform inversion that accelerates convergence, improves accuracy, and enhances generalization across different geological models.
Contribution
The paper proposes a meta-learning framework for IFWI using implicit neural networks, enabling rapid adaptation and better cross-area generalization in seismic inversion.
Findings
Meta-IFWI reduces the number of iterations for seismic inversion.
It improves inversion accuracy compared to traditional IFWI.
Meta-IFWI demonstrates robustness and generalization across diverse models.
Abstract
Implicit full waveform inversion (IFWI) introduces implicit neural representations to parameterize the subsurface velocity model as a continuous function of spatial coordinates, which alleviates the dependence on the initial model and improves inversion flexibility. However, IFWI still requires a large number of iterative updates for each new exploration area, leading to slow convergence, high computational cost, and a lack of mechanisms to share prior knowledge across different geological settings, thereby limiting its efficiency and generalization capability. To further accelerate convergence and enhance cross-area generalization, we propose a meta-learning-based implicit full waveform inversion method, referred to as Meta-learning-enhanced implicit full waveform inversion (Meta-IFWI). In this framework, the subsurface velocity model is represented using an implicit neural network…
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