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Data Mining Applied to Oil Well Using K-Means and DBSCAN

机译:使用K均值和DBSCAN的数据挖掘应用于油井

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Oil is essential to our life mainly in transportation, and thus the productivity of oil well is very important. Classification of oil wells can make it easier to manage wells to ensure good oil productivity. Machine learning is an emerging technology of analyzing data in which cluster is a good way to do classification. The paper will apply two kinds of cluster method to the data from Dagang oil well and then do analysis on not only the classification results but also the choice of method for future analysis.
机译:油对我们的生活至关重要,主要是在运输中,因此油井的生产率非常重要。油井的分类可以让井更容易,以确保良好的油生产率。机器学习是一种分析数据的新兴技术,其中集群是对分类的好方法。本文将施加两种聚类方法从大港油井的数据,然后不仅对分类结果进行分析,还可以进行分析,也是未来分析的方法的选择。

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