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基于稀疏诱导特征选择神经网络的储层预测方法研究
引用本文:李克文,苏兆鑫,王兴谋,朱剑兵.基于稀疏诱导特征选择神经网络的储层预测方法研究[J].计算机应用与软件,2022(2):49-54.
作者姓名:李克文  苏兆鑫  王兴谋  朱剑兵
作者单位:1. 中国石油大学(华东)计算机与通信工程学院;2. 中国石化胜利油田分公司
基金项目:国家自然科学基金项目(61673396);;国家科技重大专项(2016ZX05021-002);;山东省自然科学基金项目(ZR2017MF032);
摘    要:常规储层预测方法对地震属性之间的隐含关系挖掘不充分、地震属性种类繁多难以选择.针对以上问题,为提高储层岩性的分类预测精度,提出一种结合特征选择与神经网络的储层预测方法.以DenseNet与SENet为基础,使用正则惩罚项进行网络输入层稀疏化,得到每个输入节点权重,进一步使用ReLU激活函数构建特征选择层,实现地震属性的...

关 键 词:地震属性  储层预测  特征选择  卷积神经网络

STUDY ON THE RESERVOIR PREDICTION METHOD BASED ON SPARSE INDUCED FEATURE SELECTION NEURAL NETWORK
Li Kewen,Su Zhaoxin,Wang Xingmou,Zhu Jianbing.STUDY ON THE RESERVOIR PREDICTION METHOD BASED ON SPARSE INDUCED FEATURE SELECTION NEURAL NETWORK[J].Computer Applications and Software,2022(2):49-54.
Authors:Li Kewen  Su Zhaoxin  Wang Xingmou  Zhu Jianbing
Affiliation:(College of Computer Science and Technology,China University of Petroleum,Qingdao 266580,Shandong,China;Sinopec Shengli Oilfield,Dongying 257022,Shandong,China)
Abstract:Conventional reservoir prediction methods is not sufficient to explore the implicit relationships between seismic attributes,and the type of seismic attributes is so numerous that is difficult to choose.Thus,in order to improve the classification prediction accuracy of reservoir lithology,a reservoir prediction method combining feature selection and neural network is proposed.Based on DenseNet and SENet,the network input layer was thinned using a regular penalty term to get the weight of each input node.The feature selection layer was further constructed using the ReLU activation function to achieve the selection of seismic attributes.Using seismic attribute data and lithology data of Shengli Oilfield,the experimental results show that this method significantly improves the reservoir lithology classification effect,and the classification accuracy rate is over 70%,which proves the effectiveness of the neural network model and the feature selection method.
Keywords:Seismic attribute  Reservoir prediction  Feature selection  Convolutional neural network
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