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Application of Mixed-Integer Nonlinear Optimization Programming Based on Ensemble Surrogate Model for Dense Nonaqueous Phase Liquid Source Identification in Groundwater

机译:基于集合替代模型在地下水中致密非水相液源识别的混合整数非线性优化规划的应用

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Groundwater contamination source identification (GCSI) is critical for taking effective measures to protect groundwater resources, assess risks, mitigate disasters, and design remediation strategies. Simulation-optimization techniques have been effective tools for GCSI. However, previous studies have applied individual surrogate models when replacing simulation models, rather than making efforts to combine various methods to improve the approximation accuracy of the surrogate model over the simulation model. In this study, the kernel extreme learning machine (KELM) model was proposed to enhance the surrogate model, and to approach GCSI problems, especially those of dense nonaqueous phase liquid-contaminated aquifers, more effectively. In addition, a kriging model and a support vector regression (SVR) model were built and compared with the KELM model, and various ensemble surrogate (ES) modeling techniques were applied to establish four ES models. Results showed that the KELM model was more accurate than the kriging and SVR models; however, the ES models performed much better than the three individual surrogate models. The most precise ES model increased the certainty coefficient (R-2) to 0.9837, whereas limiting the maximum relative error to 13.14%. Finally, a mixed-integer nonlinear programming optimization model was established to identify the groundwater contamination source in terms of location and release history, and simultaneously assess aquifer parameters. The ES model developed in this article could reasonably predict the system response under given operation conditions. Replacement of the simulation model by the ES model considerably reduced the computation burden of the simulation-optimization process and simultaneously achieved high computation accuracy.
机译:地下水污染源识别(GCSI)对于采取有效措施来保护地下水资源,评估风险,减压灾害和设计修复策略至关重要。仿真优化技术对GCSI具有有效的工具。然而,以前的研究在替换模拟模型时应用了个别代理模型,而不是努力结合各种方法来提高仿真模型上代理模型的近似精度。在本研究中,提出了内核极端学习机(KELM)模型来增强替代模型,并更有效地接近GCSI问题,尤其是致密的非水相液体污染的含水层。另外,与Kriging模型和支持向量回归(SVR)模型建造并与KELM模型进行了比较,并且应用了各种组合代理(ES)建模技术来建立四个ES模型。结果表明,KELM模型比Kriging和SVR模型更准确;然而,ES模型比三个单独的代理模型更好地表现得多。最精确的ES模型提高了确定性系数(R-2)至0.9837,而将最大相对误差限制为13.14%。最后,建立了混合整数非线性编程优化模型,以在位置和释放历史方面识别地下水污染源,同时评估含水层参数。本文开发的ES模型可以合理地预测给定的操作条件下的系统响应。 ES模型更换模拟模型显着降低了仿真优化过程的计算负担,并同时实现了高计算精度。

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