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Coupled simulation-optimization model for coastal aquifer management using genetic programming-based ensemble surrogate models and multiple-realization optimization

机译:基于遗传规划的集成替代模型和多元实现的海岸带含水层管理耦合模拟优化模型

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摘要

Approximation surrogates are used to substitute the numerical simulation model within optimization algorithms in order to reduce the computational burden on the coupled simulation-optimization methodology. Practical utility of the surrogate-based simulation-optimization have been limited mainly due to the uncertainty in surrogate model simulations. We develop a surrogate-based coupled simulation-optimization methodology for deriving optimal extraction strategies for coastal aquifer management considering the predictive uncertainty of the surrogate model. Optimization models considering two conflicting objectives are solved using a multiobjective genetic algorithm. Objectives of maximizing the pumping from production wells and minimizing the barrier well pumping for hydraulic control of saltwater intrusion are considered. Density-dependent flow and transport simulation model FEMWATER is used to generate input-output patterns of groundwater extraction rates and resulting salinity levels. The nonparametric bootstrap method is used to generate different realizations of this data set. These realizations are used to train different surrogate models using genetic programming for predicting the salinity intrusion in coastal aquifers. The predictive uncertainty of these surrogate models is quantified and ensemble of surrogate models is used in the multiple-realization optimization model to derive the optimal extraction strategies. The multiple realizations refer to the salinity predictions using different surrogate models in the ensemble. Optimal solutions are obtained for different reliability levels of the surrogate models. The solutions are compared against the solutions obtained using a chance-constrained optimization formulation and single-surrogate-based model. The ensemble-based approach is found to provide reliable solutions for coastal aquifer management while retaining the advantage of surrogate models in reducing computational burden.
机译:近似替代用于代替优化算法中的数值模拟模型,以减少耦合的模拟优化方法的计算负担。由于代理模型仿真的不确定性,基于代理的仿真优化的实用性受到了限制。考虑到替代模型的预测不确定性,我们开发了一种基于替代模型的耦合模拟优化方法,以得出沿海含水层管理的最佳提取策略。使用多目标遗传算法求解考虑两个冲突目标的优化模型。考虑了最大化生产井的抽水和最小化用于盐水入侵的水力控制的屏障井抽水的目标。与密度有关的流动和运输模拟模型FEMWATER用于生成地下水开采率和所含盐度水平的输入-输出模式。非参数自举方法用于生成此数据集的不同实现。这些实现用于使用遗传程序来训练沿海含水层的盐度入侵,以训练不同的替代模型。对这些替代模型的预测不确定性进行了量化,并在多元实现优化模型中使用替代模型的集合来得出最佳提取策略。多个实现是指在集合中使用不同的替代模型的盐度预测。针对替代模型的不同可靠性级别获得了最佳解决方案。将解决方案与使用机会受限的优化公式和基于单一代理的模型获得的解决方案进行比较。发现基于整体的方法为沿海含水层管理提供了可靠的解决方案,同时保留了替代模型在减少计算负担方面的优势。

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