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模糊优选神经网络储层识别技术在长庆中部气田马五_1段的应用
引用本文:匡建超,曾剑毅,王众. 模糊优选神经网络储层识别技术在长庆中部气田马五_1段的应用[J]. 油气地质与采收率, 2008, 15(5)
作者姓名:匡建超  曾剑毅  王众
作者单位:成都理工大学商学院,四川,成都,610059
基金项目:四川省学术与技术带头人培养基金,成都理工大学科研基金 
摘    要:鄂尔多斯盆地奥陶系马家沟组岩性复杂,属于致密储层,所以储层识别是该层系天然气开发中所面临的关键问题和难点之一。传统的储层识别方法准确率较低,因此提出了利用基于粒子群算法的模糊优选神经网络对储层中的气、水、干层进行识别。选用长庆中部气田19口井分层测试92个已知样本,通过对物性、测井和储渗特征等参数的分析,选取电阻率、自然伽马、产能系数、储渗因子和介质类型因子5个主成分控制特征参数作为样本输入,以样本储层的产能赋值作为输出,构建了基于粒子群算法的模糊优选神经网络的储层识别模型。通过试算,优选了2个模型,回判正确率分别达到96.2%和92.3%,储层识别正确率达到100%。

关 键 词:储层识别  粒子群算法  模糊优选神经网络  长庆中部气田  鄂尔多斯盆地

Application of fuzzy optimization neural network in Ma5_1,reservoir identification in the central Changqing gas-field
Kuang Jianchao,Zeng Jianyi,Wang Zhong. Application of fuzzy optimization neural network in Ma5_1,reservoir identification in the central Changqing gas-field[J]. Petroleum Geology and Recovery Efficiency, 2008, 15(5)
Authors:Kuang Jianchao  Zeng Jianyi  Wang Zhong
Affiliation:Kuang Jianchao,Zeng Jianyi,Wang Zhong. Business College,Chengdu University of Technology,Chengdu City,Sichuan Province,610059,China
Abstract:The Ordovician Majiagou Formation in Ordos Basin belongs to dense reservoir with very complex lithology.Reservoir identification is the key issue and also one of the difficulties in natural gas development in this area.Considering the low accuracy and precision of traditional reservoir identification method,the fuzzy optimization neural network based on particle swarm algorithm was applied to identify the gas strata,water strata and dry zone in the reservoir.Ninty-two samples were acquired by zonal testing ...
Keywords:reservoir identification  particle swarm algorithm  fuzzy optimization neural network  the central Changqing gas-field  Ordos Basin  
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