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Title: An anti-noise block and frequency-aware framework in deep learning for formation resistivity prediction by transient electromagnetic data
Authors: Zhang, Y 
Li, J
Zhao, J
Wang, X
Sun, Y
Li, Y 
Chen, Y
Zhang, D
Issue Date: Apr-2025
Source: Physics of fluids, Apr. 2025, v. 37, no. 4, 047107, p. 047107-01 - 047107-20
Abstract: Formation resistivity prediction is critical for understanding subsurface fluid behavior. Traditional methods struggle to accurately measure subsurface fluid parameters from cased wells, where a transient electromagnetic method can be effectively applied. However, resistivity prediction using transient electromagnetic method data faces two significant challenges: high-frequency disaster and environmental noise. These factors collectively hinder the ability of neural networks to capture high-frequency features and to handle noise interference, diminishing prediction accuracy. To address these challenges, this study proposes a frequency-aware framework and a temporal anti-noise block. The frequency-aware framework addresses high-frequency disaster by employing a dual-stream structure with wavelet transformation to isolate and learn high-frequency components. Meanwhile, the temporal anti-noise block mitigates environmental noise by denoising temporal features through a soft threshold attention mechanism. Using a long short-term memory model as a baseline, these enhancements are integrated to conduct two experiments. The ablation experiment demonstrates that the proposed block and framework significantly improve prediction accuracy, achieving an R2 of 0.91 (0.22 higher than the baseline) with significant gains in handling high-frequency features (an improvement of 0.30 in R2 at high-frequency part). The robustness experiment shows that the temporal anti-noise block reduces the impact of Gaussian and impulse noise by 1/8 compared to the baseline, confirming its strong noise resistance. This study achieves accurate formation resistivity prediction using transient electromagnetic method data, paving the way for advanced subsurface fluid behavior analysis in complex geological settings.
Publisher: AIP Publishing LLC
Journal: Physics of fluids 
ISSN: 1070-6631
EISSN: 1089-7666
DOI: 10.1063/5.0256397
Rights: © 2025 Author(s). Published under an exclusive license by AIP Publishing.
This article may be downloaded for personal use only. Any other use requires prior permission of the author and AIP Publishing. This article appeared in Yongan Zhang, Jian Li, Junfeng Zhao, Xuanran Wang, Youzhuang Sun, Yizheng Li, Yuntian Chen, Dongxiao Zhang; An anti-noise block and frequency-aware framework in deep learning for formation resistivity prediction by transient electromagnetic data. Physics of Fluids 1 April 2025; 37 (4): 047107 and may be found at https://doi.org/10.1063/5.0256397.
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