Seismic Prediction Method of Shale Reservoir Brittleness Index Based on the BP Neural Network for Improving Shale Gas Extraction Efficiency

被引:0
|
作者
Zhang, Xuejuan [1 ]
She, Haiyan [1 ]
Zhang, Lei [1 ]
Li, Ruolin [1 ]
Feng, Jiayang [1 ]
Liu, Ruhao [1 ]
Wang, Xinrui [1 ]
机构
[1] Chongqing Univ Sci & Technol, Sch Petr & Nat Gas Engn, Chongqing 401331, Peoples R China
关键词
BP neural network; brittleness index; shale reservoir; seismic prediction;
D O I
10.3390/en17184751
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 current seismic prediction methods of the shale brittleness index are all based on the pre-stack seismic inversion of elastic parameters, and the elastic parameters are transformed by Rickman and other simple linear mathematical relationship formulas. In order to address the low accuracy of the seismic prediction results for the brittleness index, this study proposes a method for predicting the brittleness index of shale reservoirs based on an error backpropagation neural network (BP neural network). The continuous static rock elastic parameters were calculated by fitting the triaxial test data with well logging data, and the static elastic parameters with good correlation with the brittleness index of shale minerals were selected as the sample data of the BP neural network model. A dataset of 1970 data points, characterized by Young's modulus, Poisson's ratio, shear modulus, and the mineral brittleness index, was constructed. A total of 367 sets of data points from well Z4 were randomly retained as model validation data, and 1603 sets of data points from the other three wells were divided into model training data and test data at a ratio of 7:3. The calculation accuracy of the model with different numbers of nodes was analyzed and the key parameters of the BP neural network structure such as the number of input layers, the number of output layers, the number of hidden layers, and the number of neurons were determined. The gradient descent method was used to determine the weight and bias of the model parameters with the smallest error, the BP neural network model was trained, and the stability of the brittleness index prediction model of the BP neural network was verified by posterior data. After obtaining Young's modulus, Poisson's ratio, and shear modulus through pre-stack seismic inversion, the BP neural network model established in this study was used to predict the brittleness index distribution of the target layer in the study area. Compared with the conventional Rickman method, the prediction coincidence rate is 69.16%, and the prediction coincidence rate between the prediction results and the real value is 95.79%, which is 26.63% higher. The BP neural network method proposed in this paper provides a reliable new method for seismic prediction of the shale reservoir brittleness index, which has important practical significance for clarifying the shale gas development scheme and improving shale gas exploitation efficiency.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] A new method to predict brittleness index for shale gas reservoirs: Insights from well logging data
    Ye, Yapei
    Tang, Shuheng
    Xi, Zhaodong
    Jiang, Dexin
    Duan, Yang
    Journal of Petroleum Science and Engineering, 2022, 208
  • [32] A new method to predict brittleness index for shale gas reservoirs: Insights from well logging data
    Ye, Yapei
    Tang, Shuheng
    Xi, Zhaodong
    Jiang, Dexin
    Duan, Yang
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 208
  • [33] A seismic prediction method of reservoir brittleness based on mineral composition and pore structure
    Fang, Zhang
    Yunjie, Dai
    Dongyan, Zhou
    Yu, Lin
    Jixiang, He
    Xuechun, Zhang
    Yaoli, Shi
    FRONTIERS IN EARTH SCIENCE, 2024, 11
  • [34] Fracturing index-based brittleness prediction from geophysical logging data: application to Longmaxi shale
    Yasin, Qamar
    Du, Qizhen
    Sohail, Ghulam M.
    Ismail, Atif
    GEOMECHANICS AND GEOPHYSICS FOR GEO-ENERGY AND GEO-RESOURCES, 2018, 4 (04) : 301 - 325
  • [35] LOGGING EVALUATION OF SHALE GAS-BEARING PROPERTIES BASED ON LM-BP NEURAL NETWORK MODEL
    Zheng, Wei
    Liu, Yunfeng
    FRESENIUS ENVIRONMENTAL BULLETIN, 2020, 29 (9A): : 8347 - 8354
  • [36] A Big Data Method Based on Random BP Neural Network and Its Application for Analyzing Influencing Factors on Productivity of Shale Gas Wells
    Zhao, Qun
    Zhang, Leifu
    Liu, Zhongguo
    Wang, Hongyan
    Yao, Jie
    Zhang, Xiaowei
    Yu, Rongze
    Zhou, Tianqi
    Kang, Lixia
    ENERGIES, 2022, 15 (07)
  • [37] Fracturing index-based brittleness prediction from geophysical logging data: application to Longmaxi shale
    Qamar Yasin
    Qizhen Du
    Ghulam M. Sohail
    Atif Ismail
    Geomechanics and Geophysics for Geo-Energy and Geo-Resources, 2018, 4 : 301 - 325
  • [38] Prediction of Marine Thin Shale Gas Reservoir with Seismic Phase-Controlled Nonlinear Stochastic Inversion
    Xie, Qingming
    Wu, Yanming
    Huang, Qian
    Hu, Yunbing
    Hu, Xiaoliang
    Guo, Xiaozai
    Jia, Dongming
    Wu, Bin
    PROCESSES, 2023, 11 (08)
  • [39] Method and practice of deep favorable shale reservoir prediction based on machine learning
    Cheng B.
    Xu T.
    Luo S.
    Chen T.
    Li Y.
    Tang J.
    Shiyou Kantan Yu Kaifa/Petroleum Exploration and Development, 2022, 49 (05): : 918 - 928
  • [40] Numerical simulation of shale gas reservoir based on ILU-GMRES method
    Wang, Ruizhi
    Zheng, Ce
    Hu, Jiachen
    Zhao, Yuanshou
    GEOSYSTEM ENGINEERING, 2024,