Automated image processing algorithms can improve the quality, efficiency, and consistency of classifying the morphology of heterogeneous carbonate rock and can deal with a massive amount of data and images seamlessly. Geoscientists face difficulties in setting the direction of the optimum method for determining petrophysical properties from rock images, Micro-Computed Tomography (uCT), or Magnetic Resonance Imaging (MRI). Most of the successful work is from the homogeneous rocks focusing on 2D images with less focus on 3D and requiring numerical simulation. Currently, image analysis methods converge to three approaches: image processing, artificial intelligence, and combined image processing with artificial intelligence. In this work, we propose two methods to determine the porosity from 3D uCT and MRI images: an image processing method with Image Resolution Optimized Gaussian Algorithm (IROGA); advanced image recognition method enabled by Machine Learning Difference of Gaussian Random Forest (MLDGRF). We have built reference 3D micro models and collected images for calibration of IROGA and MLDGRF methods. To evaluate the predictive capability of these calibrated approaches, we ran them on 3D uCT and MRI images of natural heterogeneous carbonate rock. We measured the porosity and lithology of the carbonate rock using three and two industry-standard ways, respectively, as reference values. Notably, IROGA and MLDGRF have produced porosity results with an accuracy of 96.2% and 97.1% on the training set and 91.7% and 94.4% on blind test validation, respectively, in comparison with the three experimental measurements. We measured limestone and pyrite reference values using two methods, X-ray powder diffraction, and grain density measurements. MLDGRF has produced lithology (limestone and Pyrite) volumes with 97.7% accuracy.
翻译:自动图像处理算法可以提高不同碳酸盐岩形态的分类质量、效率和一致性,并且可以无缝地处理大量数据和图像。 地球科学家在确定从岩石图像、微光成像仪(UCT)或磁共振成像(MRI)中确定石油物理特性的最佳方法方向时遇到困难。 大多数成功的工作来自以2D图像为主的同质岩石,而较少关注3D和需要数字模拟。 目前,图像分析方法会汇集到三种方法:图像处理、人工智能和与人工智能相结合的图像处理。 在这项工作中,我们提出了确定3DUCT和MRI图像的孔径性能的两种方法:一种图像处理方法,通过图像分辨率解析优化高比高立成的Alogoral Alogorit(IROA); 97DForest 差异(MDFRF) 。 我们建立了3D微观模型,并收集了用于校准IROGA和MDF参考方法的图像。 我们用三部的预测性LDR、三部的硬度测试、三部测算法方法,我们分别用IGA 和三部的硬化硬化的硬化的硬化的硬化的硬化的硬化的硬化结果和硬化的硬化结果,我们用3LDRMDRDF 和硬化的计算方法, 制作了。