An Intelligent System for Petroleum Well Drilling Cutting Analysis

A. Marana, G. Chiachia, I. R. Guilherme, J. Papa, K. Miura, M. Ferreira, F. Torres
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引用次数: 9

Abstract

Cutting analysis is a important and crucial task task to detect and prevent problems during the petroleum well drilling process. Several studies have been developed for drilling inspection, but none of them takes care about analysing the generated cutting at the vibrating shale shakers. Here we proposed a system to analyse the cutting's concentration at the vibrating shale shakers, which can indicate problems during the petroleum well drilling process, such that the collapse of the well borehole walls. Cutting's images are acquired and sent to the data analysis module, which has as the main goal to extract features and to classify frames according to one of three previously classes of cutting's volume. A collection of supervised classifiers were applied in order to allow comparisons about their accuracy and efficiency. We used the Optimum-Path Forest (OPF), Artificial Neural Network using Multilayer Perceptrons (ANN-MLP), Support Vector Machines (SVM) and a Bayesian Classifier (BC) for this task. The first one outperformed all the remaining classifiers. Recall that we are also the first to introduce the OPF classifier in this field of knowledge. Very good results show the robustness of the proposed system, which can be also integrated with other commonly system (Mud-Logging) in order to improve the last one's efficiency.
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一种石油钻井切削分析智能系统
钻削分析是发现和预防石油钻井过程中出现的问题的一项重要而关键的工作。在钻井检测方面已经开展了一些研究,但没有一项研究对振动振动筛产生的切割进行了分析。在此,我们提出了一个系统来分析振动页岩振动筛上的切割浓度,这可以表明石油钻井过程中出现的问题,例如井壁的坍塌。切割图像被采集并发送到数据分析模块,数据分析模块的主要目标是提取特征,并根据切割体积的三种类型之一对帧进行分类。为了比较它们的准确性和效率,应用了一组监督分类器。我们使用了最优路径森林(OPF)、使用多层感知器的人工神经网络(ANN-MLP)、支持向量机(SVM)和贝叶斯分类器(BC)来完成这项任务。第一个分类器优于所有其他分类器。回想一下,我们也是第一个在这一知识领域引入OPF分类器的人。结果表明,该系统具有良好的鲁棒性,并可与其他常用的泥浆测井系统相结合,以提高泥浆测井系统的工作效率。
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