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Robust optimization of well location to enhance hysteretical trapping of CO2: Assessment of various uncertainty quantification methods and utilization of mixed response surface surrogates

机译:稳定优化井位以增强CO2的滞回捕集:评估各种不确定性量化方法和混合响应面替代物的利用

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摘要

The paper aims to solve a robust optimization problem (optimization in presence of uncertainty) for finding the optimal locations of a number of CO2 injection wells for geological sequestration of carbon dioxide in a saline aquifer. The parametric uncertainties are the interfacial tension between CO2 and aquifer brine, the Land's trapping coefficient and the boundary aquifer's absolute. The spatial uncertainties are due to the channelized permeability field which exhibits a binary channel-non-channel system. The objective function of the optimization is the amount of residually trapped CO2 due to the hysteresis of the relative permeability curves. A risk-averse value derived from the cumulative density function of the distribution of the amount of trapped gas is chosen as the objective function value. In order to ensure that the uncertainties are effectively taken into account, Monte Carlo simulation and Polynomial Chaos Expansion (PCE)-based methods are used and compared with each other. For different cases of parametric and spatial uncertainties, the most accurate uncertainty quantification (UQ) method is chosen to be integrated within the optimization algorithm. While for parametric uncertainty cases of up to two uncertain variables, PCE-based methods computationally outperform Monte Carlo simulations, it is shown that for the multimodal distributions of the function of trapped gas occurring for the spatial uncertainty case, Monte Carlo simulations are more reliable than PCE-based UQ methods. For the discrete (integer) optimization problem, various mixed response surface surrogate models are tested and the robust optimization resulted in optimal CO2 injection well locations. This article is protected by copyright. All rights reserved.
机译:本文旨在解决一个鲁棒的优化问题(在存在不确定性的情况下进行优化),以找到大量二氧化碳注入井的最佳位置,以便对盐水层中的二氧化碳进行地质隔离。参数不确定性是CO2和含水层盐水之间的界面张力,Land的捕集系数和边界含水层的绝对值。空间不确定性是由于通道渗透率场表现出二元通道-非通道系统。优化的目标函数是由于相对渗透率曲线的滞后性而导致的残留捕集的CO2量。从捕获气体量的分布的累积密度函数得出的规避风险的值被选为目标函数值。为了确保有效地考虑不确定性,使用了蒙特卡罗模拟和基于多项式混沌扩展(PCE)的方法并将它们相互比较。对于参数和空间不确定性的不同情况,选择最准确的不确定性量化(UQ)方法集成在优化算法中。尽管对于最多包含两个不确定变量的参数不确定情况,基于PCE的方法在计算上优于蒙特卡洛模拟,但对于空间不确定情况下发生的捕获气体函数的多峰分布,蒙特卡洛模拟的可靠性要高于蒙特卡洛模拟。基于PCE的UQ方法。对于离散(整数)优化问题,测试了各种混合响应曲面替代模型,并且鲁棒的优化导致了最佳的CO2注入井位置。本文受版权保护。版权所有。

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