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Lithofacies characteristics discovery from well log data using association rules

机译:使用关联规则从井日志数据发现锂电图特征

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This paper reports the use of association rules for the discovery of lithofacies characteristics from well log data. Well log data are used extensively in the exploration and evaluation of petroleum reservoirs. Traditionally, discriminant analysis, statistical and graphical methods have been used for the establishment of well log data interpretation models. Recently, computational intelligence techniques such as artificial neural networks and fuzzy logic have also been employed. In these techniques, prior knowledge of the log analysts is required. This paper investigated the application of association rules to the problem of knowledge discovery. A case study has been used to illustrate the proposed approach. Based on 96 data points for four lithofacies, twenty association rules were established and they were further reduced to six explicit statements. It was found that the execution time is fast and the method can be integrated with other techniques for building intelligent interpretation models.
机译:本文报告了使用关联规则从井日志数据发现锂电图特征。 LOG数据在石油储层的勘探和评估中广泛使用。传统上,判别分析,统计和图形方法已被用于建立井日志数据解释模型。最近,还采用了诸如人工神经网络和模糊逻辑之类的计算智能技术。在这些技术中,需要对日志分析师的先验知识。本文调查了关联规则在知识发现问题中的应用。案例研究已被用来说明所提出的方法。基于96个岩石遗传的数据点,建立了二十个关联规则,进一步减少到六个明确陈述。结果发现,执行时间快,并且该方法可以与用于构建智能解释模型的其他技术集成。

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