Sensing prior constraints in deep neural networks for solving exploration geophysical problems

被引:58
作者
Wu, Xinming [1 ,2 ]
Ma, Jianwei [3 ]
Si, Xu [1 ,2 ]
Bi, Zhengfa [1 ,2 ]
Yang, Jiarun [1 ,2 ]
Gao, Hui [1 ,2 ]
Xie, Dongzi [1 ,2 ]
Guo, Zhixiang [1 ,2 ]
Zhang, Jie [1 ,2 ]
机构
[1] Univ Sci & Technol China, Sch Earth & Space Sci, Hefei 230026, Peoples R China
[2] Univ Sci & Technol China, Mengcheng Natl Geophys Observ, Hefei 230026, Peoples R China
[3] Peking Univ, Inst Artificial Intelligence, Sch Earth & Space Sci, Beijing 100871, Peoples R China
关键词
geophysical problems; deep neural networks; prior constraints; deep learning; SEISMIC FACIES ANALYSIS; LEARNING FRAMEWORK; INVERSE PROBLEMS; VELOCITY; MODELS;
D O I
10.1073/pnas.2219573120
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
One of the key objectives in geophysics is to characterize the subsurface through the process of analyzing and interpreting geophysical field data that are typically acquired at the surface. Data-driven deep learning methods have enormous potential for accelerating and simplifying the process but also face many challenges, including poor generalizability, weak interpretability, and physical inconsistency. We present three strategies for imposing domain knowledge constraints on deep neural networks (DNNs) to help address these challenges. The first strategy is to integrate constraints into data by generating synthetic training datasets through geological and geophysical forward modeling and properly encoding prior knowledge as part of the input fed into the DNNs. The second strategy is to design nontrainable custom layers of physical operators and preconditioners in the DNN architecture to modify or shape feature maps calculated within the network to make them consistent with the prior knowledge. The final strategy is to implement prior geological information and geophysical laws as regularization terms in loss functions for training the DNNs. We discuss the implementation of these strategies in detail and demonstrate their effectiveness by applying them to geophysical data processing, imaging, interpretation, and subsurface model building.
引用
收藏
页数:12
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