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Autores principales: Cheng, Tianjian, Xu, Hongrui, Feng, Jiayu, Hu, Xiongyu, Yao, Chaofan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.24872
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author Cheng, Tianjian
Xu, Hongrui
Feng, Jiayu
Hu, Xiongyu
Yao, Chaofan
author_facet Cheng, Tianjian
Xu, Hongrui
Feng, Jiayu
Hu, Xiongyu
Yao, Chaofan
contents Deep learning is an increasingly popular approach for inverting surface wave dispersion curves to obtain Vs profiles. However, its generalizability is constrained by the depth and velocity scales of training data. We propose a unified deep learning framework that overcomes this limitation via normalization of dispersion curves. By leveraging the scaling properties of dispersion curves, our approach enables a single, pre-trained model to predict Vs profiles across diverse scales, from shallow subsurface (e.g., < 10 m depth) to crustal levels. The framework incorporates a novel transformer-based model to handle variable-length dispersion curves and removes tedious manual parameterization. Results from synthetic and field data demonstrate that it delivers rapid and robust inversions with uncertainty estimates. This work provides an efficient inversion approach applicable to a wide spectrum of applications, from near-surface engineering to crustal imaging. The framework establishes a paradigm for developing scale-invariant deep learning models in geophysical inversion.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle U-SWIFT: A Unified Surface Wave Inversion Framework with Transformer via Normalization of Dispersion Curves
Cheng, Tianjian
Xu, Hongrui
Feng, Jiayu
Hu, Xiongyu
Yao, Chaofan
Geophysics
Deep learning is an increasingly popular approach for inverting surface wave dispersion curves to obtain Vs profiles. However, its generalizability is constrained by the depth and velocity scales of training data. We propose a unified deep learning framework that overcomes this limitation via normalization of dispersion curves. By leveraging the scaling properties of dispersion curves, our approach enables a single, pre-trained model to predict Vs profiles across diverse scales, from shallow subsurface (e.g., < 10 m depth) to crustal levels. The framework incorporates a novel transformer-based model to handle variable-length dispersion curves and removes tedious manual parameterization. Results from synthetic and field data demonstrate that it delivers rapid and robust inversions with uncertainty estimates. This work provides an efficient inversion approach applicable to a wide spectrum of applications, from near-surface engineering to crustal imaging. The framework establishes a paradigm for developing scale-invariant deep learning models in geophysical inversion.
title U-SWIFT: A Unified Surface Wave Inversion Framework with Transformer via Normalization of Dispersion Curves
topic Geophysics
url https://arxiv.org/abs/2509.24872