Shear wave velocity prediction based on 1DCNN-BiLSTM network with attention mechanism

被引:1
|
作者
Feng, Gang [1 ]
Liu, Wen-Qing [1 ]
Yang, Zhe [1 ]
Yang, Wei [1 ]
机构
[1] PetroChina, Res Inst Petr Explorat & Dev Northwest NWGI, Lanzhou, Peoples R China
关键词
shear wave velocity prediction; well logging data; convolution neural network; bidirectional long short-term memory; attention mechanism; deep learning; ELASTIC WAVES; POROSITY; PROPAGATION; RESERVOIR; SYSTEMS; MODEL;
D O I
10.3389/feart.2024.1376344
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
The Shear wave (S-wave) velocity is an essential parameter in reservoir characterization and evaluation, fluid identification, and prestack inversion. However, the cost of obtaining S-wave velocities directly from dipole acoustic logging is relatively high. At the same time, conventional data-driven S-wave velocity prediction methods exhibit several limitations, such as poor accuracy and generalization of empirical formulas, inadequate exploration of logging curve patterns of traditional fully connected neural networks, and gradient explosion and gradient vanishing problems of recurrent neural networks (RNNs). In this study, we present a reliable and low-cost deep learning (DL) approach for S-wave velocity prediction from real logging data to facilitate the solution of these problems. We designed a new network sensitive to depth sequence logging data using conventional neural networks. The new network is composed of one-dimensional (1D) convolutional, bidirectional long short-term memory (BiLSTM), attention, and fully connected layers. First, the network extracts the local features of the logging curves using a 1D convolutional layer, and then extracts the long-term sequence features of the logging curves using the BiLSTM layer, while adding an attention layer behind the BiLSTM network to further highlight the features that are more significant for S-wave velocity prediction and minimize the influence of other features to improve the accuracy of S-wave velocity prediction. Afterward, the nonlinear mapping relationship between logging data and S-wave velocity is established using several fully connected layers. We applied the new network to real field data and compared its performance with three traditional methods, including a long short-term memory (LSTM) network, a back-propagation neural network (BPNN), and an empirical formula. The performance of the four methods was quantified in terms of their coefficient of determination (R 2), root mean square error (RMSE), and mean absolute error (MAE). The new network exhibited better performance and generalization ability, with R 2 greater than 0.95 (0.9546, 0.9752, and 0.9680, respectively), RMSE less than 57 m/s (56.29, 23.18, and 30.17 m/s, respectively), and MAE less than 35 m/s (34.68, 16.49, and 21.47 m/s, respectively) for the three wells. The test results demonstrate the efficacy of the proposed approach, which has the potential to be widely applied in real areas where S-wave velocity logging data are not available. Furthermore, the findings of this study can help for a better understanding of the superiority of deep learning schemes and attention mechanisms for logging parameter prediction.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] Shear wave velocity prediction using Elman artificial neural network
    Behzad Mehrgini
    Hossein Izadi
    Hossein Memarian
    Carbonates and Evaporites, 2019, 34 : 1281 - 1291
  • [32] Shear wave velocity prediction based on deep neural network and theoretical rock physics modeling
    Feng, Gang
    Zeng, Hua-Hui
    Xu, Xing-Rong
    Tang, Gen-Yang
    Wang, Yan-Xiang
    FRONTIERS IN EARTH SCIENCE, 2023, 10
  • [33] The adoption of deep neural network (DNN) to the prediction of soil liquefaction based on shear wave velocity
    Yonggang Zhang
    Yuanlun Xie
    Yan Zhang
    Junbo Qiu
    Sunxin Wu
    Bulletin of Engineering Geology and the Environment, 2021, 80 : 5053 - 5060
  • [34] The adoption of deep neural network (DNN) to the prediction of soil liquefaction based on shear wave velocity
    Zhang, Yonggang
    Xie, Yuanlun
    Zhang, Yan
    Qiu, Junbo
    Wu, Sunxin
    BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT, 2021, 80 (06) : 5053 - 5060
  • [35] Structure analysis of shale and prediction of shear wave velocity based on petrophysical model and neural network
    ZHU Hai
    XU Cong
    LI Peng
    LIU Cai
    GlobalGeology, 2020, 23 (03) : 155 - 165
  • [36] 基于太赫兹光谱及1DCNN-BiLSTM的黄蜀葵花金丝桃苷含量预测
    叶华清
    郑成勇
    五邑大学学报(自然科学版), 2024, 38 (02) : 48 - 54
  • [37] Fatigue Damage Prediction Framework of The Boom System Based on Embedded Physical Information and Attention Mechanism BiLSTM Neural Network
    Fu, Ling
    She, Lingjuan
    Yan, Dulei
    Zhang, Peng
    Long, Xiangyun
    Jixie Gongcheng Xuebao/Journal of Mechanical Engineering, 2024, 60 (13): : 205 - 215
  • [38] A CNN-BiLSTM model with attention mechanism for earthquake prediction
    Kavianpour, Parisa
    Kavianpour, Mohammadreza
    Jahani, Ehsan
    Ramezani, Amin
    JOURNAL OF SUPERCOMPUTING, 2023, 79 (17): : 19194 - 19226
  • [39] Time series prediction of sea surface temperature based on BiLSTM model with attention mechanism
    Zrira, Nabila
    Kamal-Idrissi, Assia
    Farssi, Rahma
    Khan, Haris Ahmad
    JOURNAL OF SEA RESEARCH, 2024, 198
  • [40] A Prediction Method of Consumer Buying Behavior Based on Attention Mechanism and CNN-BiLSTM
    Wang, Jian-Nan
    Cui, Jian-Feng
    Chen, Chin-Ling
    Journal of Network Intelligence, 2022, 7 (02): : 375 - 385