首页> 外文期刊>Journal of Petroleum Science & Engineering >A deep residual convolutional neural network for automatic lithological facies identification in Brazilian pre-salt oilfield wellbore image logs
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A deep residual convolutional neural network for automatic lithological facies identification in Brazilian pre-salt oilfield wellbore image logs

机译:巴西盐水油田井筒图像原木中自动岩性相识别的深度剩余卷积神经网络

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Field characterization in oil industry is a challenging task which aims to determine or estimate some of the petrophysical properties of a reservoir. These properties are expected to be later used in a non-deterministic workflow (which might depend on subjective interpretations carried out by each petrophysicist) whose aim is to answer questions such as whether exploiting the reservoir is feasible or not, how much hydrocarbon can be extracted from it and whether the geology of the reservoir will stand the stresses of exploitation without collapsing. Three properties stand-out amongst all the rest, as they are closely correlated to the amount of hydrocarbon present in the reservoir and also to the feasibility of its exploitation: permeability, porosity, and lithology. Obtaining reliable and robust measurements of these properties requires extracting core samples from the reservoir, which is, however, a very resource-consuming task. Hence, it is common to use other tools (such as wirelogging tools or borehole imagers) to extract several other properties from the reservoir, in an attempt to obtain information that might help experts to estimate these properties on those intervals at which no core sample could be extracted. In this context, estimating lithofacies helps petrophysicists to automatize the process of identifying the lithology of the reservoir. Previous work (Basu et al., 2002; Chai et al., 2009; Linek et al., 2007; Newberry et al., 2004; Hall et al., 1996) used a considerable amount of wirelog data and borehole image logs to induce the lithology of the reservoir. In the work presented in this paper, we introduce a new methodology for automatic reservoir lithofacies identification. Our model relies only on ultrasonic and microresistivity borehole image logs as inputs, which are characterized by a deep residual convolutional network which then infers the probability of each sample to be classified as each type of previously defined lithofacies classes. The method presented in this work was tested on a carbonate well from the Brazilian pre-salt oilfields, and it allowed us to obtain an average classification accuracy of 81.45% and an average area under the ROC curve of 92.70% for all classes, for the blind test sample.
机译:石油工业领域表征是一个具有挑战性的任务,旨在确定或估计水库的一些岩石物理特性。预计这些属性将稍后在非确定性工作流程(这可能取决于每个岩石物理学家执行的主观解释),其目的是回答诸如利用储层是可行的,可以提取多少碳氢化合物从它以及水库的地质是否将受到剥削的应力而不会崩溃。所有其余的三个物业脱颖而出,因为它们与水库中存在的烃类的量密切相关,也与其开采的可行性:渗透性,孔隙度和岩性。获得这些属性的可靠和鲁棒测量需要从储库中提取核心样本,然而,这是一种非常耗费的任务。因此,通常使用其他工具(例如Wirelogging Tools或Borehole Imagers)来提取来自库的若干其他特性,以获取可能有助于专家估计这些属性的信息,以便在没有核心样本的那些间隔内估计这些属性提取。在这种情况下,估算岩石遗传学有助于岩石物理学家自动化识别储层岩性的过程。以前的工作(Basu等,2002; Chai等,2009; Linek等,2007; Newberry等,2004; Hall等,1996)使用了大量的Wireelog数据和钻孔图像日志诱导水库的岩性。在本文提出的工作中,我们为自动储层锂外鉴定介绍了一种新的方法。我们的模型仅依赖于超声波和微孔率钻孔图像日志作为输入,其特征在于,其特征在于深度残余卷积网络,然后在每个类型的先前定义的Lithofacies类中缩小每个样品的概率。在这项工作中提出的方法在巴西盐盐油田的碳酸盐井上进行了测试,并且我们允许我们获得81.45%的平均分类准确度,并为所有课程的ROC曲线下的平均面积为92.70%盲试样。

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