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Sedimentary Micro-phase Automatic Recognition Based on BP Neural Network
引用本文:龚声蓉,王朝晖. Sedimentary Micro-phase Automatic Recognition Based on BP Neural Network[J]. 东华大学学报(英文版), 2004, 21(3)
作者姓名:龚声蓉  王朝晖
作者单位:School of Computer Science and Technology,Soochow University,Suzhou,215006,School of Computer Science and Technology,Soochow University,Suzhou,215006
摘    要:IntroductionDuringthedevelopmentofprospectingofthegeologyofpetroleum,itisimportanttoforecastthedistributionofgritstone,mastertheregulationofphysicalparameterinthereservesmasslevel.Especially,itismoreimportanttorecognizetorockphaseandsedimentarycircumstance.Thetraditionalmethodisusuallyqualitativeanalysisbyfetchingrockcoreandreceivingdataaboutrockcoreandrockcrumb.Asthedevelopmentofmeasurementtogeologicwell,theplentifuldataaboutgeologicwellhasbecomeatoolasresearchthesedimentaryfeatures.Combined…


Sedimentary Micro-phase Automatic Recognition Based on BP Neural Network
GONG Sheng-rong WANG Zhao-huiSchool of Computer Science and Technology,Soochow University,Suzhou. Sedimentary Micro-phase Automatic Recognition Based on BP Neural Network[J]. Journal of Donghua University, 2004, 21(3)
Authors:GONG Sheng-rong WANG Zhao-huiSchool of Computer Science  Technology  Soochow University  Suzhou
Affiliation:School of Computer Science and Technology, Soochow University, Suzhou, 215006
Abstract:In the process of geologic prospecting and development, it is important to forecast the distribution of gritstone, master the regulation of physical parameter in the reserves mass level. Especially, it is more important to recognize to rock phase and sedimentary circumstance. In the land level, the study of sedimentary phase and micro-phase is important to prospect and develop. In this paper, an automatic approach based on ANN (Artificial Neural Networks) is proposed to recognize sedimentary phase, the corresponding system is designed after the character of well general curves is considered. Different from the approach extracting feature parameters, the proposed approach can directly process the input curves. The proposed method consists of two steps: The first step is called learning. In this step, the system creates automatically sedimentary micro-phase features by learning from the standard sedimentary micro-phase patterns such as standard electric current phase curves of the well and standard resistance rate curves of the well. The second step is called recognition. In this step, based the results of the learning step, the system classifies automatically by comparing the standard pattern curves of the well to unknown pattern curves of the well. The experiment has demonstrated that the proposed approach is more effective than those approaches used previously.
Keywords:neural networks   BP algorithm   sedimentary micro-phase
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