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基于CNN-LSTM网络的频率域井地电磁法深度学习反演研究

魏开瑞 刘浩琦 曹辉 陈明春

物探化探计算技术2026,Vol.48Issue(2):204-217,14.
物探化探计算技术2026,Vol.48Issue(2):204-217,14.DOI:10.12474/wthtjs.20250226-0001

基于CNN-LSTM网络的频率域井地电磁法深度学习反演研究

Deep learning inversion research on frequency-domain borehole-to-surface electromagnetic method based on CNN-LSTM network

魏开瑞 1刘浩琦 2曹辉 1陈明春3

作者信息

  • 1. 成都理工大学 地球物理学院,成都 610059
  • 2. 中煤科工生态环境科技有限公司,北京 100000
  • 3. 中石化石油工程地球物理有限公司南方分公司,成都 610200
  • 折叠

摘要

Abstract

Faced with the demands of resource and energy exploration,along with the precise interpretation of complex geological structures,there is a heightened need for improved anti-interference capabilities and resolution in electromagnetic methods.The Borehole-to-Surface Electromagnetic Method combines the advantages of conventional electromagnetic techniques and borehole geophysics.In this approach,the transmitter is deployed downhole near deep target bodies to emit electromagnetic signals,while areal observations are conducted on the surface.This configuration exhibits enhanced sensitivity to resistivity variations in target bodies and produces more distinct anomalous responses.However,the Borehole-to-Surface Electromagnetic Method requires extensive areal data acquisition,resulting in large datasets that slow down inversion computations,consume significant resources,and exhibit accuracy sensitivity to initial model selection.Deep learning offers a solution by leveraging massive datasets to autonomously learn features.It excels in handling complex spatial-temporal patterns in borehole electric field data and enables efficient temporal modeling,thereby enhancing both the efficiency and accuracy of inversion.This study generated a large training dataset through forward modeling.The acquired frequency-domain data inherently exhibit sequential characteristics.The proposed methodology utilizes Convolutional Neural Networks to extract complex spatial features from borehole electric field data and employs Long Short-Term Memory networks to capture dependencies across different frequency sequences.This dual approach effectively addresses both local patterns in multidimensional complex data and long-term dependencies in sequential data.The inversion results demonstrate that the method achieves rapid inversion with high accuracy,significantly advancing the application of deep learning in borehole-to-surface electromagnetic inversion.

关键词

井地电磁法/反演/CNN-LSTM/卷积神经网络/长短时记忆网络

Key words

borehole-to-surfacee lectromagnetic method/inversion/CNN-LSTM/convolutional neural network/long short-term memory network

分类

天文与地球科学

引用本文复制引用

魏开瑞,刘浩琦,曹辉,陈明春..基于CNN-LSTM网络的频率域井地电磁法深度学习反演研究[J].物探化探计算技术,2026,48(2):204-217,14.

基金项目

国家重点研发计划课题(2024ZD1000206) (2024ZD1000206)

物探化探计算技术

1001-1749

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