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Automatic detection of formations using images of oil well drilling cuttings

机译:使用油井钻屑图像自动检测地层

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摘要

In oil well drilling process, a perennial issue is formations detection particularly in passing through high and low pressure formations. However, automatic classification of keybeds in the Gachsaran and Asmari formations by applying drill cutting images can help in decision-making, especially in oil wells of Iran, about mud weight and casing design for oil well drilling process. First, this study focuses on color analysis and fuzzy c-mean clustering to extract relevant features from images of the drill cuttings. Furthermore, a support vector machine and different kernel functions are utilized to classify the samples into different keybeds. Second, due to changing color of drilling cutting in each well, this study proposes texture analysis for keybeds classification. In this method, a co-occurrence matrix and features of energy, homogeneity, entropy and brightness are applied as feature vectors and classification is done by using the support vector machine too. This study, moreover, introduces the accuracy and response speed of the above techniques. To sum up, the results show that this method can be used to detect different formations (particularly between Gachsaran and Asmari) by approximately 95% accuracy. (C) 2014 Elsevier B.V. All rights reserved.
机译:在油井钻探过程中,长期存在的问题是地层检测,尤其是在通过高压和低压地层时。但是,通过应用钻头切割图像对Gachsaran和Asmari地层中的键床进行自动分类,可以帮助决策,尤其是在伊朗的油井中,进行油井钻探过程的泥浆重量和套管设计。首先,本研究着重于颜色分析和模糊c均值聚类,以从钻屑图像中提取相关特征。此外,利用支持向量机和不同的内核功能将样本分类为不同的键床。其次,由于每口井中钻头颜色的变化,本研究提出了用于键层分类的纹理分析。在该方法中,将共现矩阵以及能量,均匀性,熵和亮度的特征用作特征向量,并且也使用支持向量机进行分类。此外,本研究介绍了上述技术的准确性和响应速度。综上所述,结果表明该方法可用于以大约95%的准确度检测不同的地层(尤其是在Gachsaran和Asmari之间)。 (C)2014 Elsevier B.V.保留所有权利。

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