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    机器学习方法在数字岩心研究中的应用进展

    Application progress of machine learning to digital core research

    • 摘要: 数字岩心技术已经成为油气储层定量表征的常用手段,并在非常规储层评价及理论建模等方面发挥重要作用。然而在岩心尺度方面,存在成像视域与分辨率、计算机算力与模型大小两大矛盾,它们随着数字岩心研究的深入而愈发突出。近年来,随着机器学习方法与数字岩心的结合更加紧密,跨尺度研究这一难题得到部分解决,拓宽了数字岩心技术的应用场景。首先介绍了数字岩心研究的工作流程,再结合算法实例介绍深度学习在图像分割、图像融合、超分辨率、岩石特征识别、岩石物理性质模拟等各环节的应用。实践表明,与常规方法相比,结合深度学习的数字岩心建模与数值模拟在精度和效率上都更具优势。最后,探讨了机器学习在复杂岩心特征识别和数值模拟等方面的发展潜力。

       

      Abstract: Digital core has become a widely used approach for quantitative characterization of oil and gas reservoirs, and it plays an important role in unconventional reservoir evaluation and modeling. However, there exist two inherent trade-offs at the core scale: one between the field of view and image resolution, and the other between computing cost and model size. These trade-offs have become increasingly prominent as digital core research progresses. In recent years, the closer integration of machine learning with digital core has partially addressed these cross-scale challenges and thereby expanded the application scenarios of digital core. This paper begins by outlining the workflow of digital core research, followed by the algorithm examples to illustrate the applications of deep learning across different stages, including image segmentation, image fusion, super-resolution, rock feature recognition, and rock physical property simulation. Compared with conventional methods, deep learning-assisted digital core modeling and numerical simulation offer higher accuracy and efficiency. This paper concludes by discussing the potential of machine learning in complex core feature recognition and numerical simulation.

       

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