Reservoir Modeling and Optimization Based on Deep Learning with Application to Enhanced Geothermal Systems

B. Yan, Zhen Xu, Manojkumar Gudala, Zeeshan Tariq, T. Finkbeiner
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引用次数: 3

Abstract

With the energy demand arising globally, geothermal recovery by Enhanced Geothermal Systems (EGS) becomes a promising option to bring a sustainable energy supply and mitigate CO2 emission. However, reservoir management of EGS primarily relies on reservoir simulation, which is quite expensive due to the reservoir heterogeneity, the interaction of matrix and fractures, and the intrinsic multi-physics coupled nature. Therefore, an efficient optimization framework is critical for the management of EGS. We develop a general reservoir management framework with multiple optimization options. A robust forward surrogate model fl is developed based on a convolutional neural network, and it successfully learns the nonlinear relationship between input reservoir model parameters (e.g., fracture permeability field) and interested state variables (e.g., temperature field and produced fluid temperature). fl is trained using simulation data from EGS coupled thermal-hydro simulation model by sampling reservoir model parameters. As fl is accurate, efficient and fully differentiable, EGS thermal efficiency can be optimized following two schemes: (1) training a control network fc to map reservoir geological parameters to reservoir decision parameters by coupling it withfl ; (2) directly optimizing the reservoir decision parameters based on coupling the existing optimizers such as Adam withfl. The forward model fl performs accurate and stable predictions of evolving temperature fields (relative error1.27±0.89%) in EGS and the time series of produced fluid temperature (relative error0.26±0.46%), and its speedup to the counterpart high-fidelity simulator is 4564 times. When optimizing withfc, we achieve thermal recovery with a reasonable accuracy but significantly low CPU time during inference, 0.11 seconds/optimization. When optimizing with Adam optimizer, we achieve the objective perfectly with relatively high CPU time, 4.58 seconds/optimization. This is because the former optimization scheme requires a training stage of fc but its inference is non-iterative, while the latter scheme requires an iterative inference but no training stage. We also investigate the option to use fc inference as an initial guess for Adam optimization, which decreases Adam's CPU time, but with excellent achievement in the objective function. This is the highest recommended option among the three evaluated. Efficiency, scalability and accuracy observed in our reservoir management framework makes it highly applicable to near real-time reservoir management in EGS as well as other similar system management processes.
基于深度学习的储层建模与优化及其在增强型地热系统中的应用
随着全球能源需求的增加,增强型地热系统(EGS)的地热回收成为实现可持续能源供应和减少二氧化碳排放的一个有前途的选择。然而,EGS的储层管理主要依赖于储层模拟,由于储层的非均质性、基质与裂缝的相互作用以及固有的多物理耦合性质,模拟成本相当高。因此,高效的优化框架对EGS的管理至关重要。我们开发了一个具有多个优化选项的通用油藏管理框架。建立了基于卷积神经网络的鲁棒正演代理模型fl,成功学习了输入的储层模型参数(如裂缝渗透率场)与感兴趣的状态变量(如温度场和产液温度)之间的非线性关系。通过采样储层模型参数,利用EGS耦合热-水模拟模型的模拟数据对fl进行训练。由于fl具有准确、高效和完全可微的特点,优化EGS热效率可采用两种方案:(1)将控制网络fc与fl耦合,训练控制网络fc将储层地质参数映射到储层决策参数;(2)基于Adam等现有优化器与fl的耦合直接优化储层决策参数。正演模型fl能够准确、稳定地预测EGS温度场的变化(相对误差为1.27±0.89%)和产出液温度时间序列(相对误差为0.26±0.46%),其速度比对应的高保真模拟器提高了4564倍。当使用fc进行优化时,我们实现了具有合理精度的热恢复,但在推理期间CPU时间明显较低,0.11秒/优化。当使用Adam优化器进行优化时,我们以相对较高的CPU时间(4.58秒/优化)完美地实现了目标。这是因为前一种优化方案需要fc的训练阶段,但其推理是非迭代的,而后一种方案需要迭代推理,但不需要训练阶段。我们还研究了使用fc推理作为Adam优化的初始猜测的选项,这减少了Adam的CPU时间,但在目标函数上取得了很好的成绩。这是在评估的三个选项中最推荐的选项。在我们的油藏管理框架中观察到的效率、可扩展性和准确性使其非常适用于EGS中的近实时油藏管理以及其他类似的系统管理流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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