期刊论文详细信息
Acta Geophysica
A robust data-driven AVO inversion with logarithm absolute error loss function
article
Du, Siyuan1  Zhang, Jiashu1  Hu, Guangmin2 
[1] Sichuan Province Key Lab of Signal and Information Processing, Southwest Jiaotong University;School of Resources and Environments, Center for Information Geoscience, University of Electronic Science and Technology of China
关键词: AVO inversion;    Dictionary learning;    Logarithm absolute error function;   
DOI  :  10.1007/s11600-020-00416-1
学科分类:地球科学(综合)
来源: Polska Akademia Nauk * Instytut Geofizyki
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【 摘 要 】

Amplitude variation with offset (AVO) inversion is a widely used approach to obtain reliable estimates of elastic parameter. Tikhonov and total variation regularization are commonly used methods to address ill-posed problem of AVO inversion. However, these model-driven methods are only for special geological structure such as smoothness or blockiness. In this letter, a robust data-driven-based regularization method with logarithm absolute error loss function (DDI-Log) for AVO inversion is proposed. In DDI-Log, the information of well-log data and the complex geology are considered in a sparse representation framework. In pre-stack seismic data, outlier noise can negatively influence inversion results. Thus, different from the previous data-driven inversion based on $$L _2$$ L2 norm loss function, we extend the logarithm absolute error function as the loss function. In the iteration, a new spectral PRP conjugate gradient method is used to solve the large-scale optimization problem. The synthetic data and field data tests illustrate that the proposed approach is robust against outlier noise and that the resolution and accuracy of the solutions are improved.

【 授权许可】

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