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Trajectory piecewise quadratic reduced-order model for subsurface flow, with application to PDE-constrained optimization

机译:地下流动轨迹分段二次降阶模型及其在PDE约束优化中的应用

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A new reduced-order model based on trajectory piecewise quadratic (TPWQ) approximations and proper orthogonal decomposition (POD) is introduced and applied for subsurface oil-water flow simulation. The method extends existing techniques based on trajectory piecewise linear (TPWL) approximations by incorporating second-derivative terms into the reduced-order treatment. Both the linear and quadratic reduced-order methods, referred to as POD-TPWL and POD-TPWQ, entail the representation of new solutions as expansions around previously simulated high-fidelity (full-order) training solutions, along with POD-based projection into a low-dimensional space. POD-TPWQ entails significantly more offline preprocessing than POD-TPWL as it requires generating and projecting several third-order (Hessian-type) terms. The POD-TPWQ method is implemented for two-dimensional systems. Extensive numerical results demonstrate that it provides consistently better accuracy than POD-TPWL, with speedups of about two orders of magnitude relative to high-fidelity simulations for the problems considered. We demonstrate that POD-TPWQ can be used as an error estimator for POD-TPWL, which motivates the development of a trust-region-based optimization framework. This procedure uses POD-TPWL for fast function evaluations and a POD-TPWQ error estimator to determine when retraining, which entails a high-fidelity simulation, is required. Optimization results for an oil-water problem demonstrate the substantial speedups that can be achieved relative to optimizations based on high-fidelity simulation. (C) 2016 Elsevier Inc. All rights reserved.
机译:提出了一种基于轨迹分段二次逼近(TPWQ)近似和固有正交分解(POD)的降阶模型,并将其应用于地下油水流动模拟。该方法通过将二阶导数项合并到降阶处理中,扩展了基于轨迹分段线性(TPWL)近似的现有技术。线性和二次降阶方法(称为POD-TPWL和POD-TPWQ)都需要将新解决方案表示为围绕以前模拟的高保真(全阶)训练解决方案的扩展,以及基于POD的投影到低维空间。与POD-TPWL相比,POD-TPWQ所需要的脱机预处理要多得多,因为它需要生成和投影几个三阶(Hessian型)项。 POD-TPWQ方法用于二维系统。大量的数值结果表明,与POD-TPWL相比,它提供了始终如一的更好的精度,相对于所考虑问题的高保真模拟,其速度提高了大约两个数量级。我们证明了POD-TPWQ可以用作POD-TPWL的错误估计器,从而促进了基于信任区域的优化框架的发展。此过程使用POD-TPWL进行快速功能评估,并使用POD-TPWQ误差估计器来确定何时需要进行重新训练,而重新训练需要进行高保真模拟。油水问题的优化结果表明,相对于基于高保真模拟的优化,可以实现明显的加速。 (C)2016 Elsevier Inc.保留所有权利。

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