题名 | Physics-driven deep-learning for marine CSEM data inversion |
作者 | |
通讯作者 | Yin, Changchun |
发表日期 | 2024-10
|
DOI | |
发表期刊 | |
ISSN | 0926-9851
|
卷号 | 229 |
摘要 | Marine controlled-source electromagnetic (MCSEM) inversion plays a crucial role in hydrocarbon exploration and pre-drill reservoir evaluation. Deep learning techniques have been widely used in geophysical inversions. Although they work on theoretical data well, their performance on survey data needs to be improved. Since no constraint of physical laws is applied in the training phase, the trained neural network often exhibits large errors when extended to new datasets with different distributions from the train set. To solve this problem, we add a differentiable marine EM forward operator at the end of the neural network that maps the network-predicted results back to the response data. We incorporate a data error term to the loss function and the gradient of data error with respect to model parameters in the gradient back-propagation process so that we can successfully introduce the physical law constraints into the network training process. Experiments on synthetic data validate the effectiveness of our Physics-driven Deep Neural Network (PhyDNN) inversions. It performs significantly better than the conventional DNN as it can recover the model accurately while maintaining data fitting. Tests on theoretical data with different noise levels further demonstrate the superiority of our PhyDNN, which can achieve stable inversions under high noise levels. Moreover, we use the t-distributed stochastic neighbor embedding (t-SNE) algorithm to analyze the similarity between the train sets and real data. The results show that the real data falls within the data distribution of the train sets, ensuring the credibility of the inversion results. Finally, we use PhyDNN to invert an EM survey dataset acquired over a deep-sea sedimentary basin. The inversion results match well Occam's inversions, indicating that our physics-driven network has enhanced the data adaptability and overcome the limitation of conventional DNN in handling new data. © 2024 Elsevier B.V. |
收录类别 | |
语种 | 英语
|
学校署名 | 其他
|
资助项目 | This paper was co-funded by the National Natural Science Foundation of China (42030806, 42304149, 42174167) and the National Key Research and Development Program of China (2021YFB3202104).
|
出版者 | |
EI入藏号 | 20243416913659
|
EI主题词 | Data assimilation
; Deep neural networks
; Electromagnetic prospecting
; Network embeddings
; Offshore petroleum prospecting
; Stochastic models
|
EI分类号 | :1101
; :1101.2.1
; :1105
; :1106.2
; :1202.1
; Geophysical Prospecting:481.4
; Exploration and Prospecting Methods:501.1
; Petroleum Deposits : Development Operations:512.1.2
; Electricity and Magnetism:701
|
ESI学科分类 | GEOSCIENCES
|
来源库 | EV Compendex
|
引用统计 | |
成果类型 | 期刊论文 |
条目标识符 | http://sustech.caswiz.com/handle/2SGJ60CL/807006 |
专题 | 理学院_地球与空间科学系 南方科技大学 |
作者单位 | 1.College of Geo-Exploration Science and Technology, Jilin University, Jilin, Changchun; 130026, China 2.Department of Earth and Space Science, Southern University of Science and Technology, Guangdong, Shenzhen; 518005, China |
推荐引用方式 GB/T 7714 |
Liang, Hao,Gao, Ruoyun,Yin, Changchun,et al. Physics-driven deep-learning for marine CSEM data inversion[J]. Journal of Applied Geophysics,2024,229.
|
APA |
Liang, Hao,Gao, Ruoyun,Yin, Changchun,Su, Yang,He, Zhanxiang,&Liu, Yunhe.(2024).Physics-driven deep-learning for marine CSEM data inversion.Journal of Applied Geophysics,229.
|
MLA |
Liang, Hao,et al."Physics-driven deep-learning for marine CSEM data inversion".Journal of Applied Geophysics 229(2024).
|
条目包含的文件 | 条目无相关文件。 |
|
除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。
修改评论