A strategy for preparing training data for machine learning for seismic noise reduction

被引:0
|
作者
Zhang, Bo [1 ,2 ]
Wu, Hao [3 ]
Yao, Jiashun [4 ]
Wang, Yanghua [1 ]
机构
[1] Imperial Coll London, Resource Geophys Acad, London SW7 2BP, England
[2] Univ Alabama, Dept Geol Sci, Tuscaloosa, AL 35406 USA
[3] China Univ Geosci, Sch Earth Resources, Wuhan 430074, Peoples R China
[4] SINOPEC Geophys Res Inst Co Ltd, SINOPEC, Nanjing 211101, Peoples R China
来源
关键词
Denoising; Machine learning; Seismic attribute; / Seismic data; MODE DECOMPOSITION; ATTENUATION;
D O I
10.1016/j.geoen.2025.213817
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The reduction of seismic white noise is an important step in seismic data processing. Although machine learning algorithms can be successfully used to remove noise in seismic data, the preparation of "pure signals" and "pure noise" is one of challenges in seismic denoising with machine learning. To address this problem, we assume that the noise in the seismic data behaves according to a certain distribution, e.g. a normal distribution. We treat the field seismic data as "pure signals" and a simulated noise as "pure noise". By adding the simulated noise (pure noise) to the field seismic data (pure signals), new "noisy seismic data" are formed. Then we can train a model to distiguish the pure signal (learning signal) or the pure noise from the noisy seismic data. Subsequently, by applying the trained model to the field seismic data, the noise-reducted seismic data is obtained. To show which learning (either signal learning or noise learning) is more effective in seismic denoising by machine larning, we compare the denoised seismic data through comparing the commonly-used seismic geometric attributes (coherence and curvature) calculated from the denoised seismic data. The application shows that the signallearning is a better choice in seismic random noise reduction. We choose structure-oriented filtering (SOF) as a traditional denoising method to evaluate our method to enhance the stratigraphic and structural features of the seismic data. The results show that our method is superior to SOF in reducing random noise in seismic data.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Attesting Distributional Properties of Training Data for Machine Learning
    Duddu, Vasisht
    Das, Anudeep
    Khayata, Nora
    Yalame, Hossein
    Schneider, Thomas
    Asokan, N.
    COMPUTER SECURITY-ESORICS 2024, PT I, 2024, 14982 : 3 - 23
  • [32] Training Data Debugging for the Fairness of Machine Learning Software
    Li, Yanhui
    Meng, Linghan
    Chen, Lin
    Yu, Li
    Wu, Di
    Zhou, Yuming
    Xu, Baowen
    2022 ACM/IEEE 44TH INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING (ICSE 2022), 2022, : 2215 - 2227
  • [33] Privacy Risk Assessment of Training Data in Machine Learning
    Bai, Yang
    Fan, Mingyu
    Li, Yu
    Xie, Chuangmin
    IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC 2022), 2022, : 1010 - 1015
  • [34] Supervised machine learning using encrypted training data
    Francisco-Javier González-Serrano
    Adrián Amor-Martín
    Jorge Casamayón-Antón
    International Journal of Information Security, 2018, 17 : 365 - 377
  • [35] On the least amount of training data for a machine learning model
    Zhao, Dazhi
    Hao, Yunquan
    Li, Weibin
    Tu, Zhe
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2023, 44 (03) : 4891 - 4906
  • [36] Supervised machine learning using encrypted training data
    Gonzalez-Serrano, Francisco-Javier
    Amor-Martin, Adrian
    Casamayon-Anton, Jorge
    INTERNATIONAL JOURNAL OF INFORMATION SECURITY, 2018, 17 (04) : 365 - 377
  • [37] Reliable Real-Time Seismic Signal/Noise Discrimination With Machine Learning
    Meier, Men-Andrin
    Ross, Zachary E.
    Ramachandran, Anshul
    Balakrishna, Ashwin
    Nair, Suraj
    Kundzicz, Peter
    Li, Zefeng
    Andrews, Jennifer
    Hauksson, Egill
    Yue, Yisong
    JOURNAL OF GEOPHYSICAL RESEARCH-SOLID EARTH, 2019, 124 (01) : 788 - 800
  • [38] Data Dimension Reduction in Training Strategy for Face Recognition System
    Loderer, Marek
    Pavlovicova, Jarmila
    Feder, Matej
    Oravec, Milos
    21ST INTERNATIONAL CONFERENCE ON SYSTEMS, SIGNALS AND IMAGE PROCESSING (IWSSIP 2014), 2014, : 263 - 266
  • [39] Machine Learning for Data Reduction in Quantum State Tomography
    Liu, Ximin
    Lu, Sicong
    Wu, Rebing
    2018 37TH CHINESE CONTROL CONFERENCE (CCC), 2018, : 227 - 231
  • [40] A control strategy for seismic noise reduction on advanced LIGO gravitational-wave detector
    Di Fronzo, C.
    Driggers, J.
    Warner, J.
    Schwartz, E.
    Lantz, B.
    Pele, A.
    Biscans, S.
    Mow-Lowry, C. M.
    Mittleman, R.
    CLASSICAL AND QUANTUM GRAVITY, 2025, 42 (04)