Petroleum Science >2024, Issue4: - DOI: https://doi.org/10.1016/j.petsci.2024.03.002
Application of sparse S transform network with knowledge distillation in seismic attenuation delineation Open Access
文章信息
作者:Nai-Hao Liu, Yu-Xin Zhang, Yang Yang, Rong-Chang Liu, Jing-Huai Gao, Nan Zhang
作者单位:
投稿时间:
引用方式:Nai-Hao Liu, Yu-Xin Zhang, Yang Yang, Rong-Chang Liu, Jing-Huai Gao, Nan Zhang, Application of sparse S transform network with knowledge distillation in seismic attenuation delineation, Petroleum Science, Volume 21, Issue 4, 2024, Pages 2345-2355, https://doi.org/10.1016/j.petsci.2024.03.002.
文章摘要
Abstract: Time-frequency analysis is a successfully used tool for analyzing the local features of seismic data. However, it suffers from several inevitable limitations, such as the restricted time-frequency resolution, the difficulty in selecting parameters, and the low computational efficiency. Inspired by deep learning, we suggest a deep learning-based workflow for seismic time-frequency analysis. The sparse S transform network (SSTNet) is first built to map the relationship between synthetic traces and sparse S transform spectra, which can be easily pre-trained by using synthetic traces and training labels. Next, we introduce knowledge distillation (KD) based transfer learning to re-train SSTNet by using a field data set without training labels, which is named the sparse S transform network with knowledge distillation (KD-SSTNet). In this way, we can effectively calculate the sparse time-frequency spectra of field data and avoid the use of field training labels. To test the availability of the suggested KD-SSTNet, we apply it to field data to estimate seismic attenuation for reservoir characterization and make detailed comparisons with the traditional time-frequency analysis methods.
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Keywords: S transform; Deep learning; Knowledge distillation; Transfer learning; Seismic attenuation delineation