2023
DOI: 10.1109/access.2023.3328630
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Seismic Fault Identification Based on Multi-Scale Dense Convolution and Improved Long Short-Term Memory Network

Liang Guo,
Ran Xiong,
Jilong Zhao
et al.

Abstract: Aiming at the local, global and temporal morphological characteristics of faults in seismic profiles, this paper proposes the MCD-ABiLSTM method for fault identification. The method uses multichannel, convolution kernels of different sizes and convolution of different depths to extract multi-scale seismic profile features, and makes full use of the extracted features to enhance the model's sensitivity to small faults. By combining Bi-directional Long Short-Term Memory (BiLSTM) with multi-scale dense convolutio… Show more

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