Data-centric strategies for deep-learning accelerated salt interpretation

被引:0
作者
Gala, Apurva [1 ]
Devarakota, Pandu [1 ]
机构
[1] Shell Technol Ctr, Shell Informat Technol Int Inc, Houston, TX 77082 USA
来源
DATA-CENTRIC ENGINEERING | 2025年 / 6卷
关键词
data-centric AI; deep-learning; model-centric; salt interpretation; seismic imaging;
D O I
10.1017/dce.2024.37
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning (DL) has become the most effective machine learning solution for addressing and accelerating complex problems in various fields, from computer vision and natural language processing to many more. Training wellgeneralized DL models requires large amounts of data which allows the model to learn the complexity of the task it is being trained to perform. Consequently, performance optimization of the deep-learning models is concentrated on complex architectures with a large number of tunable model parameters, in other words, model-centric techniques. To enable training such large models, significant effort has also gone into high-performance computing and big-data handling. However, adapting DL to tackle specialized domain-related data and problems in real-world settings presents unique challenges that model-centric techniques do not suffice to optimize. In this paper, we tackle the problem of developing DL models for seismic imaging using complex seismic data. We specifically address developing and deploying DL models for salt interpretation using seismic images. Most importantly, we discuss how looking beyond model-centric and leveraging data-centric strategies for optimization of DL model performance was crucial to significantly improve salt interpretation. This technique was also key in developing production quality, robust and generalized models.
引用
收藏
页数:13
相关论文
共 50 条
[31]   Prototyping a GPGPU Neural Network for Deep-Learning Big Data Analysis [J].
Fonseca, Alcides ;
Cabral, Bruno .
BIG DATA RESEARCH, 2017, 8 :50-56
[32]   QuAD: Deep-Learning Assisted Qualitative Data Analysis with Affinity Diagrams [J].
Goldman, Ariel ;
Espinosa, Cindy ;
Patel, Shivani ;
Cavuoti, Francesca ;
Chen, Jade ;
Cheng, Alexandra ;
Meng, Sabrina ;
Patil, Aditi ;
Chilton, Lydia B. ;
Morrison-Smith, Sarah .
EXTENDED ABSTRACTS OF THE 2022 CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS, CHI 2022, 2022,
[33]   A Deep-Learning Prediction Model for Imbalanced Time Series Data Forecasting [J].
Hou, Chenyu ;
Wu, Jiawei ;
Cao, Bin ;
Fan, Jing .
BIG DATA MINING AND ANALYTICS, 2021, 4 (04) :266-278
[34]   A Deep-Learning Framework for the Detection of Oil Spills from SAR Data [J].
Shaban, Mohamed ;
Salim, Reem ;
Abu Khalifeh, Hadil ;
Khelifi, Adel ;
Shalaby, Ahmed ;
El-Mashad, Shady ;
Mahmoud, Ali ;
Ghazal, Mohammed ;
El-Baz, Ayman .
SENSORS, 2021, 21 (07)
[35]   Abnormal Data Analysis in Process Industries Using Deep-Learning Method [J].
Song, Wen ;
Weng, Wei ;
Fujimura, Shigeru .
2017 IEEE INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT (IEEM), 2017, :2356-2360
[36]   Training deep-learning segmentation models from severely limited data [J].
Zhao, Yao ;
Rhee, Dong Joo ;
Cardenas, Carlos ;
Court, Laurence E. ;
Yang, Jinzhong .
MEDICAL PHYSICS, 2021, 48 (04) :1697-1706
[37]   Data-driven deep-learning forecasting for oil production and pressure [J].
Werneck, Rafael de Oliveira ;
Prates, Raphael ;
Moura, Renato ;
Goncalves, Maiara Moreira ;
Castro, Manuel ;
Soriano-Vargas, Aurea ;
Mendes Junior, Pedro Ribeiro ;
Hossain, M. Manzur ;
Zampieri, Marcelo Ferreira ;
Ferreira, Alexandre ;
Davolio, Alessandra ;
Schiozer, Denis ;
Rocha, Anderson .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 210
[38]   DeepVID: deep-learning accelerated variational image decomposition model tailored to fringe pattern filtration [J].
Cywinska, Maria ;
Szumigaj, Konstanty ;
Kolodziej, Michal ;
Patorski, Krzysztof ;
Mico, Vicente ;
Feng, Shijie ;
Zuo, Chao ;
Trusiak, Maciej .
JOURNAL OF OPTICS, 2023, 25 (04)
[39]   A layer-2 solution for inspecting large-scale photovoltaic arrays through aerial LWIR multiview photogrammetry and deep learning: A hybrid data-centric and model-centric approach [J].
Zefri, Yahya ;
Sebari, Imane ;
Hajji, Hicham ;
Aniba, Ghassane ;
Aghaei, Mohammadreza .
EXPERT SYSTEMS WITH APPLICATIONS, 2023, 223
[40]   Deep-learning accelerated calculation of real-fluid properties in numerical simulation of complex flowfields [J].
Milan, Petro Junior ;
Hickey, Jean-Pierre ;
Wang, Xingjian ;
Yang, Vigor .
JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 444