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测井岩性识别新方法研究
引用本文:马海,王延江,胡睿,魏茂安.测井岩性识别新方法研究[J].地球物理学进展,2009,24(1):263-269.
作者姓名:马海  王延江  胡睿  魏茂安
作者单位:1. 中国石油大学信息与控制工程学院,东营,257061
2. 胜利油田分公司钻井工艺研究院信息中心,东营,257017
基金项目:中国石油化工股份有限公司重点科技攻关项目 
摘    要:为了更好地解决测井岩性识别问题,引入了一种基于粒子群优化的支持向量机算法.通过实际测井资料和岩性剖面资料进行学习训练支持向量机,并利用粒子群优化算法对支持向量机参数进行优化,建立了测井岩性识别的支持向量机模型,应用该方法对准噶尔盆地某井的测井岩性进行识别,并将该方法的识别结果与BP神经网络方法的识别结果进行了比较,结果表明该方法优于BP神经网络方法,具有识别正确率高、收敛速度快、推广能力强等优点.

关 键 词:岩性识别  粒子群优化  支持向量机  测井资料
收稿时间:2008-3-10
修稿时间:2008-5-20

A novel method for well logging lithologic identification
MA Hai,WANG Yan-jiang,HU Rui,WEI Mao-an.A novel method for well logging lithologic identification[J].Progress in Geophysics,2009,24(1):263-269.
Authors:MA Hai  WANG Yan-jiang  HU Rui  WEI Mao-an
Institution:(1.CollegeofInformationandControlEngineering,ChinaUniversityofPetroleum,DongYing257061,China;2.InformationCenterofDrillingTechnologyResearchInstituteShengLiOilFieldCompany,Ltd.,DongYing257017,China)
Abstract:A novel support vector machine based on particle swarm optimization (PSO-SVM) is proposed for better solving the well logging lithologic identification problem. An identification model for well logging lithologic is established using the data of actual well logging and lithologic profile by training the SVM, which is optimized by PSO algorithm. The proposed method is applied to certain well in Junggar Basin and the experimental results show it has higher identification precision, faster convergence speed and better generalization effect than BP neural network based approach.
Keywords:lithologic identification  particle swarm optimization  support vector machine  well logging data
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