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非震物化探综合信息油气预测研究
引用本文:郭少斌,刘庆海.非震物化探综合信息油气预测研究[J].石油实验地质,2000,22(1):71-73.
作者姓名:郭少斌  刘庆海
作者单位:1.中国地质大学, 北京 100083
摘    要:由于构造油气藏相继被发现,勘探重点向难度较大和成功率较低的各类隐蔽油气藏转移,油气直接检测的研究便成为当今油气勘探领域的热点,其方法是利用物探、化探手段检测油气产生的微观效应和异常。作者选择松辽盆地南部让字井地区作为实验区,在层序地层、储层及断层封闭性研究及总结前人地表物化探油气预测经验的基础上,选取化探酸解烃、ΔC、土壤热释光、测氡及土壤电导率进行了地表实际测量,并利用BP和SOM两种神经网络方法对物化探综合信息进行了油气预测,取得了良好的效果。 

关 键 词:油气预测    BP和SOM神经网络    综合信息
文章编号:1001-6112(2000)01-0071-03
收稿时间:1999-01-31

HYDROCARBON PREDICTION BY INTEGRATED INFORMATION FROM NONSEISMIC GEOPHYSICAL-GEOCHEMICAL PROSPECTION
GUO Shao bin ,LIU Qing hai WTBX.HYDROCARBON PREDICTION BY INTEGRATED INFORMATION FROM NONSEISMIC GEOPHYSICAL-GEOCHEMICAL PROSPECTION[J].Petroleum Geology & Experiment,2000,22(1):71-73.
Authors:GUO Shao bin  LIU Qing hai [WTBX]
Affiliation:1.China University of Geosciences, Beijing 100083, China2. Northeast Bureau of Petroleum Geology, CNSPC, Changchun 130062, China
Abstract:As tectonic reservoirs have been discovered one after another,the focal points of exploration have been changed to various subtle traps which will be found with greater difficulty and lower success rate.The study on the direct detection of hydrocarbon then becomes a popular topic in current hydrocarbon exploration domain.The method is to detect the microcosmic effects and anomalies of hydrocarbon by means of geophysical and geochemical prospecting.Taking Rangzijing area in the south of the Songliao Basin as an experimental area,the practical surface measurement is done by the geochemical prospecting of acidolysis hydrocarbon,ΔC,soil thermoluminescence,Rn detection and soil electrical conductivity based on the study of sequence stratigraphy,reservoirs and fault sealing as well as the summary of predecessor's prediction experience on surface geophysical geochemical prospecting for hydrocarbon.By use of BP and SOM two neural network methods,hydrocarbon prediction is made from integrated information of geophysical geochemical prospecting,and good effects are obtained. 
Keywords:hydrocarbon prediction  BP and SOM neural networks  integrated information
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