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An adaptive dynamic surrogate model using a constrained trust region algorithm: application to DNAPL-contaminated-groundwater-remediation design

机译:一种自适应动态代理模型,使用受约束的信任区域算法:应用于DNAPL-污染地下水 - 修复设计

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摘要

Simulation optimization is a robust tool in the design of groundwater remediation strategy. Simulation models for groundwater contaminated by dense non-aqueous phase liquids (DNAPLs) are usually computationally expensive, especially when used within a simulation optimization framework. Surrogate models have been proved to possess the potential to speed up complex models without sacrificing accuracy or detail. In this study, a constrained trust region (CTR)-based adaptive dynamic surrogate model was proposed and applied to a DNAPL-contaminated-groundwater-remediation-design scenario. First, the multiphase flow simulation model was constructed to simulate the groundwater remediation process. Then, preliminary input-output sample points were generated using the Latin hypercube sampling method and the developed simulation model. Next, the static Kriging surrogate model, as well as the nonlinear optimization model, were constructed. Finally, the surrogate model and optimization model were updated based on the CTR method and the optimal remediation strategy was obtained. The application of the CTR-based dynamic surrogate model reduced the mean relative error by 46% compared with the static surrogate model, and greatly improved the reliability of the optimal remediation strategy. The CTR-based dynamic surrogate model had the best fitting accuracy of multiphase flow simulation when compared with the expected improvement-based dynamic surrogate model and the optimal solution-based dynamic surrogate model. The corresponding optimization model also had the minimum remediation cost. This study demonstrates that the proposed CTR-based dynamic surrogate model is an effective tool to increase the accuracy of surrogate models and the reliability of their optimization results.
机译:仿真优化是地下水修复策略设计中的一种强大的工具。由致密的非水相液体(DNAPLS)污染的地下水模拟模型通常是计算昂贵的,特别是当在模拟优化框架内使用时。已证明代理模型具有促进复杂模型的可能性,而不会牺牲准确性或细节。在该研究中,提出了一个受约束的信任区域(CTR)适应性动态替代模型,并应用于DNAPL污染地下水 - 修复设计场景。首先,构造多相流模拟模型以模拟地下水修复过程。然后,使用拉丁超立体采样方法和开发的仿真模型生成初步输入输出采样点。接下来,构建静态克里格替代模型以及非线性优化模型。最后,基于CTR方法更新了代理模型和优化模型,获得了最佳修复策略。与静态代理模型相比,CTR基动态代理模型的应用将平均相对误差减少46%,大大提高了最佳修复策略的可靠性。与基于预期的改进的动态代理模型和最优溶液的动态代理模型相比,基于CTR的动态替代模型具有最佳的多相流模拟精度。相应的优化模型也具有最低的修复成本。本研究表明,基于CTR的动态代理模型是一种有效的工具,可以提高代理模型的准确性和优化结果的可靠性。

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