Machine Learning Enhanced Upscaling of Anisotropic Shear Strength for Heterogeneous Oil Sands

Bo Zhang, Zhiwei Ma, Dongming Zheng, R. Chalaturnyk, J. Boisvert
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Abstract

Weak shale beddings are widely distributed in the overburden and reservoir of oil sand deposits and lead to reduced anisotropic shear strength. Understanding the shear strength of the overburden and the reservoir is important in risk assessment of slope stability in open-pit mining and caprock integrity of in-situ thermal recovery of oil sands while optimizing the production of bitumen. Due to the restrictions of computational efficiency, cells used for simulation cannot be smaller enough to capture the details of heterogeneity in the reservoir. Therefore, a robust and efficient upscaling technique is important for modeling the impact of heterogeneity on the deformation and failure of oil sands during mining and in-situ recovery. However, current analytical and numerical upscaling techniques cannot provide computationally efficient geomechanical models that consider the impact of inclined shale beddings on shear strength. Therefore, we propose a machine learning enhanced upscaling (MLEU) technique that leverages the accuracy of local numerical upscaling and the efficiency of machine learning techniques. MLEU generates a fast and accurate machine learning-based proxy model using an artificial neural network (ANN) to predict the anisotropic shear strength of heterogeneous oil sands embedded with shale beddings. The trained model improves accuracy by 12%-76% compared to traditional methods such as response surface methodology (RSM). MLEU provides a reasonable estimate of anisotropic shear strength while considering uncertainties caused by different configurations of shale beddings. With the increasing demand for regional scale modeling of geotechnical problems, the proposed MLEU technique can be extended to other geological settings where weak beddings play a significant role and the impact of heterogeneity on shear strength is important.
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机器学习增强非均质油砂各向异性抗剪强度升级
弱页岩层理在油砂上覆层和储层中广泛分布,导致各向异性抗剪强度降低。了解覆盖层和储层的抗剪强度对露天矿边坡稳定性风险评估和油砂原位热采盖层完整性风险评估以及沥青优化生产具有重要意义。由于计算效率的限制,用于模拟的单元不能小到足以捕捉储层非均质性的细节。因此,对于模拟非均质性对开采和原位开采过程中油砂变形和破坏的影响来说,一种强大而有效的升级技术是非常重要的。然而,目前的分析和数值升级技术无法提供考虑倾斜页岩层理对抗剪强度影响的计算高效的地质力学模型。因此,我们提出了一种机器学习增强升级(MLEU)技术,该技术利用了局部数值升级的准确性和机器学习技术的效率。MLEU利用人工神经网络(ANN)生成了一个基于机器学习的快速准确的代理模型,用于预测嵌入页岩层理的非均质油砂的各向异性抗剪强度。与响应面法(RSM)等传统方法相比,训练后的模型准确率提高了12%-76%。MLEU在考虑页岩层理不同配置带来的不确定性的同时,提供了合理的各向异性抗剪强度估计。随着岩土工程问题区域尺度建模需求的增加,本文提出的MLEU技术可以扩展到其他地质环境中,在这些地质环境中,弱层理起重要作用,非均质性对抗剪强度的影响也很重要。
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