Paper ID: 2503.22214 • Published Mar 28, 2025
Interpretable Deep Learning Paradigm for Airborne Transient Electromagnetic Inversion
Shuang Wang, Xuben Wang, Fei Deng, Xiaodong Yu, Peifan Jiang, Lifeng Mao
Chengdu University of Technology•Chengdu University
TL;DR
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The extraction of geoelectric structural information from airborne transient
electromagnetic(ATEM)data primarily involves data processing and inversion.
Conventional methods rely on empirical parameter selection, making it difficult
to process complex field data with high noise levels. Additionally, inversion
computations are time consuming and often suffer from multiple local minima.
Existing deep learning-based approaches separate the data processing steps,
where independently trained denoising networks struggle to ensure the
reliability of subsequent inversions. Moreover, end to end networks lack
interpretability. To address these issues, we propose a unified and
interpretable deep learning inversion paradigm based on disentangled
representation learning. The network explicitly decomposes noisy data into
noise and signal factors, completing the entire data processing workflow based
on the signal factors while incorporating physical information for guidance.
This approach enhances the network's reliability and interpretability. The
inversion results on field data demonstrate that our method can directly use
noisy data to accurately reconstruct the subsurface electrical structure.
Furthermore, it effectively processes data severely affected by environmental
noise, which traditional methods struggle with, yielding improved lateral
structural resolution.
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