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神经网络预测储层砂岩粒度纵向剖面
引用本文:李萍,范永涛,刘常红,闫新江,张密华.神经网络预测储层砂岩粒度纵向剖面[J].断块油气田,2014(4):449-452.
作者姓名:李萍  范永涛  刘常红  闫新江  张密华
作者单位:[1]中海油能源发展股份有限公司工程技术分公司,天津300457 [2]中国石油集团渤海钻探工程有限公司工程技术研究院,天津300457 [3]中海油研究总院,北京100027 [4]中国石化石油勘探开发研究院,北京100083 [5]中国石油青海油田公司边远油田开发公司,甘肃敦煌736200
基金项目:国家油气重大专项课题“多枝导流适度出砂技术”(2008ZX05024-003-01)
摘    要:国内外多年的研究认为,储层粒度特征值(d50,UC)是防砂设计的基础.利用伽马测井、密度测井与粒度特征值之间的相关性,建立探井伽马、密度测井项与实测粒度特征值三者的样本库;利用神经网络技术,训练出满足工程需要的学习网络,进而结合开发区块的测井资料,建立整个储层的粒度纵向分布剖面.该技术对实测数据少或缺乏实测数据储层的防砂显得尤为重要,为防砂方案设计提供了准确的依据,并在现场进行了很好的应用.

关 键 词:粒度特征值  测井项  神经网络  样本库  纵向剖面

Using neural network to predict vertical profile of grain size of reservoir sandstone
Li Ping,Fan Yongtao,Liu Changhong,Yan Xinjiang,Zhang Mihua.Using neural network to predict vertical profile of grain size of reservoir sandstone[J].Fault-Block Oil & Gas Field,2014(4):449-452.
Authors:Li Ping  Fan Yongtao  Liu Changhong  Yan Xinjiang  Zhang Mihua
Affiliation:1.Engineering Technology Company, Energy Resources Development Co.Ltd., CNOOC Ltd., Tianjin 300457, China; 2.Research Institute of Engineering Technology, Bohai Drilling Engineering Co.Ltd., CNPC, Tianjin 300457, China; 3.CNOOC Research Institute, Beijing 100027, China; 4.Research Institute of Petroleum Exploration & Production, SINOPEC, Beijing 100083, China; 5.Development Company of Remote Oilfield, Qinghai Oilfield Company, PetroChina, Dunhuang 736200, China;)
Abstract:Research scholars believe that the characteristic values (d50,UC) of reservoir grain size is the design basis for sand control completion.Based on the relevance of gamma logging,density logging to the grain size characteristic values,we established the sample library of wells gamma,density log and grain size values.Using neural network technology,the learning network project was trained,then combined with logging data development block,the vertical profiles of entire reservoir grain size was established.This technology is very important to sand control completion for the reservoir lack of grain size data.It provides an accurate basis for project design and has a good application effect in the field.
Keywords:grain size characteristic value  logging date  neural network  sample library  vertical profile
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