首页> 外文会议>Computational Intelligence and Security, 2009. CIS '09 >The Application of Improved 3D_Apriori Three-Dimensional Association Rules Algorithm in Reservoir Data Mining
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The Application of Improved 3D_Apriori Three-Dimensional Association Rules Algorithm in Reservoir Data Mining

机译:改进的3D_Apriori三维关联规则算法在水库数据挖掘中的应用

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Logging curve data plays a key role in oil and gas exploration and development owning to the ability to provide plentiful data and large amount of useful information, so the logging curves interpretation methods are also of importance. With the rapid increase of log data, our human is out of the ability to understand such numerous and complicated data, therefore conflict between the increasing data and the limited comprehend capability occurs. The thesis attempts to introduce association rules into logging data interpretation and provides a novel method. The classical Apriori algorithm is improved in the paper that named 3D_Apriori to interpret the logging attribute data and enhance efficiency of mining association rules behind the logging data transformation and the inherent information. Logging data acquired from Jingbian gas field of CNPC is used to verify the algorithm. Two strong spatial association rules are resulted from the computation. Applying these rules to interpret the test logging data, 78.6% coincidence validate the methodology.
机译:测井曲线数据具有提供大量数据和大量有用信息的能力,因此在油气勘探与开发中起着关键作用,因此测井曲线解释方法也很重要。随着日志数据的快速增长,我们的人已经无法理解如此众多而复杂的数据,因此,在不断增长的数据和有限的理解能力之间会发生冲突。本文试图将关联规则引入测井数据解释中,并提供了一种新颖的方法。本文对经典的Apriori算法进行了改进,将其命名为3D_Apriori来解释日志记录属性数据,并提高了日志记录数据转换和固有信息背后的挖掘关联规则的效率。利用从中国石油靖边气田采集的测井数据对算法进行了验证。计算得出两个强的空间关联规则。应用这些规则解释测试记录数据,符合率78.6%验证了该方法。

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