基于深度学习的钻孔图像自动沉积几何特征描述

M. Lefranc, Zikri Bayraktar, M. Kristensen, Hedi Driss, I. L. Nir, P. Marza, J. Kherroubi
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引用次数: 0

摘要

钻孔图像上的沉积几何通常总结了床界、侵蚀面、交叉层理、沉积倾角和/或变形床的排列。测井解释通常是手动的,需要很高的专业水平,耗时长,容易受到用户偏见的影响,并且在处理大斜度井时变得非常具有挑战性。从井眼图像中完成跨层数据的地层几何解释很少。本研究的目的是开发一种自动化方法,从钻孔图像中解释沉积结构,包括床状几何形状。自动化是在这种独特的解释方法中使用深度学习实现的。第一个任务包括创建二维钻孔图像的训练数据集。然后使用该图像库来训练机器学习(ML)模型。通过对不同结构的卷积神经网络(CNN)的测试表明,ResNet结构对不同沉积结构的分类具有最佳性能。验证正确率很高,在93 ~ 96%之间。为了测试所开发的方法,将合成数据作为不同沉积构造(即类别)的序列,与不同井距相关,并添加了间隙。该模型能够准确地预测正确的类并突出显示转换。
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DEEP-LEARNING-BASED AUTOMATED SEDIMENTARY GEOMETRY CHARACTERIZATION FROM BOREHOLE IMAGES
Sedimentary geometry on borehole images usually summarizes the arrangement of bed boundaries, erosive surfaces, cross bedding, sedimentary dip, and/or deformed beds. The interpretation, very often manual, requires a good level of expertise, is time consuming, can suffer from user bias, and become very challenging when dealing with highly deviated wells. Bedform geometry interpretation from crossbed data is rarely completed from a borehole image. The purpose of this study is to develop an automated method to interpret sedimentary structures, including the bedform geometry, from borehole images. Automation is achieved in this unique interpretation methodology using deep learning. The first task comprised the creation of a training dataset of 2D borehole images. This library of images was then used to train machine learning (ML) models. Testing different architectures of convolutional neural networks (CNN) showed the ResNet architecture to give the best performance for the classification of the different sedimentary structures. The validation accuracy was very high, in the range of 93–96%. To test the developed method, additional logs of synthetic data were created as sequences of different sedimentary structures (i.e., classes) associated with different well deviations, with addition of gaps. The model was able to predict the proper class and highlight the transitions accurately.
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REAL-TIME ENSEMBLE-BASED WELL-LOG INTERPRETATION FOR GEOSTEERING USING HIGH FIDELITY CONTINUOUS CORE DATA FOR A FAST AND OBJECTIVE ESTIMATION OF RESERVOIR QUALITY A NEW LOOK AT THE DUAL DEPTH OF INVESTIGATION OF LWD PROPAGATION RESISTIVITY LOGGING DEEP-LEARNING-BASED AUTOMATED SEDIMENTARY GEOMETRY CHARACTERIZATION FROM BOREHOLE IMAGES REAL-TIME 2.5D INVERSION OF LWD RESISTIVITY MEASUREMENTS USING DEEP LEARNING FOR GEOSTEERING APPLICATIONS ACROSS FAULTED FORMATIONS
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