A Deep Semi-Supervised Learning Approach for Seismic Reflectivity Inversion

被引:0
作者
Rahman, Sharif [1 ,2 ]
Elsheikh, Ahmed H. [2 ]
Jaya, Makky S. [3 ]
机构
[1] PETRONAS Res Sdn Bhd PRSB, Kajang 43000, Selangor, Malaysia
[2] Heriot Watt Univ, Sch Energy Geosci Infrastruct & Soc, Edinburgh EH14 4AS, Scotland
[3] PETRONAS Carigali Sdn Bhd PCSB, Kuala Lumpur 50088, Malaysia
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2024年 / 62卷
关键词
Reflectivity; Data models; Semisupervised learning; Tuning; Training; Deconvolution; Task analysis; Deep semi-supervised learning; geophysics; quantitative interpretation; seismic inversion; RESOLUTION; DECONVOLUTION; PRESTACK;
D O I
10.1109/TGRS.2024.3401768
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
In seismic inversion, supervised learning is highly effective when abundant paired data are available, yet such conditions are often not met in this domain due to the scarcity of well data. This scarcity hinders the effectiveness of supervised learning in accurately inverting seismic data. To address this challenge, we explore the potential of semi-supervised learning, which requires a careful balance between supervised and unsupervised tasks. We propose a dual-network structure for semi-supervised learning, enabling predictive mapping and reconstruction paths. Conventional deconvolution methods assume a stationary seismic wavelet across the seismic section, an oversimplification that fails in areas where localized wave propagation effects cause significant deviations, leading to inaccurate estimations of subsurface properties. In response, we propose a practical methodology that leverages on building an initial robust model trained on synthetic reflectivity-seismogram pairs, and subsequently improving the model generalizability through semi-supervised transfer learning. Our methodology, tested on both a synthetic 2-D wedge model and the Marmousi2 dataset, not only outperforms conventional inversion algorithms but also outperforms supervised learning approach. It excels in sparsity recovery of reflectivity estimates, maintains high accuracy in noisy conditions, and ensures spatial continuity between adjacent seismic traces.
引用
收藏
页数:14
相关论文
共 72 条
[21]   Thin beds, tuning, and AVO [J].
Hamlyn, Wes .
Leading Edge, 2014, 33 (12) :1394-1396
[22]   Deep Residual Learning for Image Recognition [J].
He, Kaiming ;
Zhang, Xiangyu ;
Ren, Shaoqing ;
Sun, Jian .
2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, :770-778
[23]   SpectralFormer: Rethinking Hyperspectral Image Classification With Transformers [J].
Hong, Danfeng ;
Han, Zhu ;
Yao, Jing ;
Gao, Lianru ;
Zhang, Bing ;
Plaza, Antonio ;
Chanussot, Jocelyn .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
[24]   Cross-city matters: A multimodal remote sensing benchmark dataset for cross-city semantic segmentation using high-resolution domain adaptation networks [J].
Hong, Danfeng ;
Zhang, Bing ;
Li, Hao ;
Li, Yuxuan ;
Yao, Jing ;
Li, Chenyu ;
Werner, Martin ;
Chanussot, Jocelyn ;
Zipf, Alexander ;
Zhu, Xiao Xiang .
REMOTE SENSING OF ENVIRONMENT, 2023, 299
[25]  
Javanmardi M, 2018, Arxiv, DOI arXiv:1605.01368
[26]   Statistical inverse problems: Discretization, model reduction and inverse crimes [J].
Kaipio, Jari ;
Somersalo, Erkki .
JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2007, 198 (02) :493-504
[27]   THE LIMITS OF RESOLUTION OF ZERO-PHASE WAVELETS [J].
KALLWEIT, RS ;
WOOD, LC .
GEOPHYSICS, 1982, 47 (07) :1035-1046
[28]   Machine Learning for the Geosciences: Challenges and Opportunities [J].
Karpatne, Anuj ;
Ebert-Uphoff, Imme ;
Ravela, Sai ;
Babaie, Hassan Ali ;
Kumar, Vipin .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2019, 31 (08) :1544-1554
[29]  
KENNETT BLN, 1974, B SEISMOL SOC AM, V64, P1685
[30]   Debiasing of seismic reflectivity inversion using basis pursuit de-noising algorithm [J].
Li, Chuanhui ;
Liu, Xuewei ;
Yu, Kaiben ;
Wang, Xiangchun ;
Zhang, Fanchang .
JOURNAL OF APPLIED GEOPHYSICS, 2020, 177