学位论文详细信息
Learning from seismic data to characterize subsurface volumes
Deep learning;Semi-supervised learning;Sequence modeling;Subsurface characterization;Seismic inversion
Alfarraj, Motaz A. ; AlRegib, Ghassan Electrical and Computer Engineering McClellan, James H. Peng, Zhigang Anderson, David Zhang, Ying ; AlRegib, Ghassan
University:Georgia Institute of Technology
Department:Electrical and Computer Engineering
关键词: Deep learning;    Semi-supervised learning;    Sequence modeling;    Subsurface characterization;    Seismic inversion;   
Others  :  https://smartech.gatech.edu/bitstream/1853/62310/1/ALFARRAJ-DISSERTATION-2019.pdf
美国|英语
来源: SMARTech Repository
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【 摘 要 】

The exponential growth of collected data from seismic surveys makes it impossible for interpreters to manually inspect, analyze and annotate all collected data. Deep learning has proved to be a potential mechanism to overcome big data problems in various computer vision tasks such as image classification and semantic segmentation. However, the applications of deep learning are limited in the field of subsurface volume characterization due to the limited availability of consistently-annotated seismic datasets. Obtaining annotations of seismic data is a labor-intensive process that requires field knowledge. Moreover, seismic interpreters rely on the few direct high-resolution measurements of the subsurface from well-logs and core data to confirm their interpretations. Different interpreters might arrive at different valid interpretations of the subsurface, all of which are in agreement with well-logs and core data. Therefore, to successfully utilize deep learning for subsurface characterization, one must address and circumvent the lack or shortage of consistent annotated data. In this dissertation, we introduce a learning-based physics-guided subsurface volume characterization framework that can learn from limited inconsistently-annotated data. The introduced framework integrates seismic data and the limited well-log data to characterize the subsurface at a higher-than-seismic resolution. The introduced framework takes into account the physics that governs seismic data to overcome noise and artifacts that are often present in the data. Integrating a physical model in deep-learning frameworks improves their generalization ability beyond the training data. Furthermore, the physical model enables deep networks to learn from unlabeled data, in addition to a few annotated examples, in a semi-supervised learning scheme. Applications of the introduced framework are not limited to subsurface volume characterization, it can be extended to other domains in which data represent a physical phenomenon and annotated data is limited.

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