利用堆叠集合代用模型识别地下水污染源的集合优化器

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-09-24 DOI:10.1016/j.jconhyd.2024.104437
Liuzhi Zhu , Wenxi Lu , Chengming Luo , Yaning Xu , Zibo Wang
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引用次数: 0

摘要

模拟优化法在地下水污染源识别(GCSI)中的应用遇到了两个主要挑战:调用模拟模型的时间成本很高,以及由于反演问题的复杂性、非线性和多拟性,识别结果的准确性受到限制。为了解决这些问题,我们创新性地开发了一种基于集合学习策略的反演框架。该框架由一个堆叠集合模型(SEM)和一个集合优化器(E-GKSEEFO)组成,前者集成了三个不同的机器学习模型(极随机树、自适应提升和双向门控循环单元),后者则结合了两个新提出的蜂群智能优化器(成吉思汗鲨鱼优化器和电鳗觅食优化器)。具体而言,SEM 可作为地下水数值模拟模型的替代模型。与原始模拟模型相比,它在保持精度的同时大大减少了时间成本。E-GKSEEFO 作为优化模型的搜索策略,大大提高了优化结果的准确性。我们通过两个源自实际煤矸石堆的假设场景验证了 SEM-E-GKSEEFO 集合反演框架的性能。结果如下(1) 在处理来自 GCSI 的高维非线性数据时,与单一机器学习模型相比,SEM 的拟合性能有所提高。(2) E-GKSEEFO 对 GCSI 识别结果的准确性明显高于单个优化器。这些发现肯定了所提出的 SEM-E-GKSEEFO 集合反演框架的有效性和优越性。
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An ensemble optimizer with a stacking ensemble surrogate model for identification of groundwater contamination source
The application of the simulation-optimization method for groundwater contamination source identification (GCSI) encounters two main challenges: the substantial time cost of calling the simulation model, and the limitations on the accuracy of identification results due to the complexity, nonlinearity, and ill-posed nature of the inverse problem. To address these issues, we have innovatively developed an inversion framework based on ensemble learning strategies. This framework comprises a stacking ensemble model (SEM), which integrates three distinct machine learning models (Extremely Randomized Trees, Adaptive Boosting, and Bidirectional Gated Recurrent Unit), and an ensemble optimizer (E-GKSEEFO), which combines two newly proposed swarm intelligence optimizers (Genghis Khan Shark Optimizer and Electric Eel Foraging Optimizer). Specifically, the SEM serves as a surrogate model for the groundwater numerical simulation model. Compared to the original simulation model, it significantly reduces time cost while maintaining accuracy. The E-GKSEEFO, functioning as the search strategy for the optimization model, greatly enhances the accuracy of the optimization results. We have verified the performance of the SEM-E-GKSEEFO ensemble inversion framework through two hypothetical scenarios derived from an actual coal gangue pile. The results are as follows. (1) The SEM exhibits improved fitting performance compared to single machine learning models when dealing with high-dimensional nonlinear data from GCSI. (2) The E-GKSEEFO achieves significantly higher accuracy in the identification results of GCSI than individual optimizers. These findings affirm the effectiveness and superiority of the proposed SEM-E-GKSEEFO ensemble inversion framework.
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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