...
首页> 外文期刊>Journal of Petroleum Science & Engineering >Digital petrography: Mineralogy and porosity identification using machine learning algorithms in petrographic thin section images
【24h】

Digital petrography: Mineralogy and porosity identification using machine learning algorithms in petrographic thin section images

机译:数字岩画:矿物学和孔隙度识别在岩体薄截面图像中使用机器学习算法

获取原文
获取原文并翻译 | 示例
           

摘要

Images represent a large and efficient source of geological information from oil exploration. To better analyze them, well-known machine learning algorithms are used to extract mineralogy and porosity data from petrographic thin section images. Microscopic petrographic analysis allows obtaining images from thin sections in the visible spectrum. They are used to evaluate depositional environments and diagenetic processes during the formation of sedimentary basins. However, that is an activity subjected to the petrographer's experience. Data from other sources, such as chemical microanalysis, provide quantitative information that might assist in petrographic evaluation, but they are expensive and time-consuming. The main objective is to create models that systematically interprets mineralogy and porosity from images acquired of optical microscopic analysis using machine learning algorithms, standardizing descriptions and reducing subjectivity and human errors during thin sections analysis. Image segmentation models are created with representative classes of the rocks' mineralogy and porosity. Datasets were selected from images originated from thin sections of carbonate rocks, which are prepared from sidewall core samples of oil wells, specifically from the pre-salt reservoirs of Santos Basin, on the southeast coast of Brazil. These models use discrete convolutional filters followed by artificial neural networks and random forest classifiers. A number of configurations were tested, using different convolutional filters and classifier's parameters. Five models were created: 1. mineralogical model using artificial neural network; 2. mineralogical model using random forest; 3. mineralogical model using random forest validated by chemical measurements; 4. porosity model using artificial neural networks; and 5. porosity model using random forest. They were evaluated through the use of 10-fold cross-validation tests and by correlation with chemical microanalysis. Correlation between the two technique's relative occurrences for each mineral phase shows a root mean square error of 8.99% and a coefficient of determination of 0.82. That demonstrates how well models can generalize.
机译:图像代表来自石油勘探的大而有效的地质信息来源。为了更好地分析它们,众所周知的机器学习算法用于从岩体薄截面图像中提取矿物学和孔隙率数据。微观岩体分析允许从可见光谱中的薄部分获得图像。它们用于评估在沉积盆地形成期间的沉积环境和成岩过程。然而,这是一项受到岩石师的经验的活动。来自其他来源的数据,如化学微观分析,提供了可能有助于岩体评估的定量信息,但它们昂贵且耗时。主要目的是创造使用机器学习算法,标准化描述和减少薄切片分析期间的光学微观分析所获得的图像中获取的图像中获取的图像的模型和孔隙率。图像分割模型是用岩石矿物学和孔隙率的代表性类创建的。从源自碳酸盐岩的薄片的图像中选择了数据集,该岩石岩石的薄片核心制成,特别是来自巴西东南沿海的Santos盆地的盐储层。这些模型使用离散的卷积滤波器,然后是人工神经网络和随机林分类器。使用不同的卷积滤波器和分类器参数测试了许多配置。创建了五种模型:1。使用人工神经网络的矿物学模型; 2.使用随机森林的矿物学模型; 3.矿物学模型使用化学测量验证的随机森林; 4.使用人工神经网络的孔隙率模型; 5.孔隙度模型使用随机森林。通过使用10倍的交叉验证测试和与化学微量分析相关来评估它们。两种技术与每个矿物相的相对发生之间的相关性显示出8.99%的根均方误差和0.82的测定系数。这表明模型如何概括。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号