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Fracture Network Characterization Using Stress-Based Tomography

机译:基于应力的层析造影的裂缝网络特性

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Information on structural features of a fracture network at early stages of Enhanced Geothermal System development is mostly restricted to borehole images and, if available, outcrop data. However, using this information to image discontinuities in deep reservoirs is difficult. Wellbore failure data provides only some information on components of the in situ stress state and its heterogeneity. Our working hypothesis is that slip on natural fractures primarily controls these stress heterogeneities. Based on this, we introduce stress-based tomography in a Bayesian framework to characterize the fracture network and its heterogeneity in potential Enhanced Geothermal System reservoirs. In this procedure, first a random initial discrete fracture network (DFN) realization is generated based on prior information about the network. The observations needed to calibrate the DFN are based on local variations of the orientation and magnitude of at least one principal stress component along boreholes. A Markov Chain Monte Carlo sequence is employed to update the DFN iteratively by a fracture translation within the domain. The Markov sequence compares the simulated stress profile with the observed stress profiles in the borehole, evaluates each iteration with Metropolis-Hastings acceptance criteria, and stores acceptable DFN realizations in an ensemble. Finally, this obtained ensemble is used to visualize the potential occurrence of fractures in a probability map, indicating possible fracture locations and lengths. We test this methodology to reconstruct simple synthetic and more complex outcrop-based fracture networks and successfully image the significant fractures in the domain.
机译:有关增强地热系统开发的早期阶段的裂缝网络结构特征的信息主要限于钻孔图像,如果有的话,露头数据。但是,利用这些信息到深层水库中的图像不连续性是困难的。 Wellbore故障数据仅提供有关原位应力状态的组件及其异质性的一些信息。我们的工作假设是自然骨折上的滑动主要控制这些应力异质性。基于此,我们在贝叶斯框架中引入基于应力的层析成像,以表征骨折网络及其在潜在增强地热系统储层中的异质性。在该过程中,首先基于关于网络的先前信息生成随机初始离散裂缝网络(DFN)实现。校准DFN所需的观察结果基于沿钻孔的至少一个主应力分量的取向和大小的局部变化。马尔可夫链蒙特卡罗序列用于通过域内的裂缝平移迭代地更新DFN。 Markov序列将模拟应力曲线与钻孔中观察到的应力分布进行了比较,评估每个迭代与都市 - Hastings接受标准,并在集合中存储可接受的DFN实现。最后,该获得的集合用于可视化概率图中裂缝的电位发生,指示可能的裂缝位置和长度。我们测试该方法以重建简单的合成和更复杂的露头的骨折网络,并成功地映像域中的显着骨折。

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