Statistical and machine learning analysis for the application of microbially induced carbonate precipitation as a physical barrier to control seawater intrusion

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Charalampos Konstantinou , Yuze Wang
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Abstract

Seawater intrusion in coastal aquifers is a significant problem that can be addressed through the construction of subsurface dams or physical cut-off barriers. An alternative method is the use of microbially induced carbonate precipitation (MICP) to reduce the hydraulic conductivity of the porous medium and create a physical barrier. However, the effectiveness of this method depends on various factors, and the scientific literature presents conflicting results, making it challenging to generalise the findings. To overcome this challenge, a statistical and machine learning (ML) approach is employed to infer the causes for the reduction in hydraulic conductivity and identify the optimum MICP parameters for preventing seawater intrusion. The study involves data curation, exploratory analysis, and the development of various models to fit the input data (k-Nearest Neighbours – kNN, Support Vector Regression – SVR, Random Forests – RF, Gradient Boosting – XgBoost, Linear model with interaction terms, Ensemble learning algorithms with weighted averages – EnL-WA and stacking – EnL-Stack). The models performed reasonably well in the region where permeability reduction is sensitive to carbonate increase capturing the permeability reduction profile with respect to cementation level while demonstrating that they can be used in initial assessments of the specific conditions (e.g., soil properties). The best performing algorithms were the EnL-Stack and RF followed by XgBoost and SVR. The MICP method is effective in reducing hydraulic conductivity provided that the various biochemical parameters are optimised. Critical biochemical parameters for successful MICP formulations are the bacterial optical density, the urease activity, calcium chloride concentration and flow rate as well as the interaction terms across the properties of the porous media and the biochemical parameters. The models were used to identify the optimum MICP formulation for various porous media properties and the maximum permeability reduction profiles across cementation levels have been derived.

应用微生物诱导碳酸盐沉淀作为控制海水入侵的物理屏障的统计和机器学习分析
海水入侵沿海含水层是一个重大问题,可以通过建造地下水坝或物理隔断屏障来解决。另一种方法是利用微生物诱导碳酸盐沉淀(MICP)来降低多孔介质的水力传导性,形成物理屏障。然而,这种方法的有效性取决于各种因素,而且科学文献中的结果相互矛盾,因此很难对研究结果进行归纳总结。为了克服这一挑战,我们采用了一种统计和机器学习(ML)方法来推断水力传导性降低的原因,并确定防止海水入侵的最佳 MICP 参数。这项研究包括数据整理、探索性分析以及开发各种模型来拟合输入数据(k-Nearest Neighbours - kNN、Support Vector Regression - SVR、Random Forests - RF、Gradient Boosting - XgBoost、带交互项的线性模型、带加权平均的集合学习算法 - EnL-WA 和堆叠算法 - EnL-Stack)。在渗透率降低对碳酸盐增加敏感的区域,这些模型的表现相当不错,捕捉到了渗透率降低与胶结程度的关系,同时证明它们可用于对特定条件(如土壤特性)的初步评估。性能最好的算法是 EnL-Stack 和 RF,其次是 XgBoost 和 SVR。如果各种生化参数得到优化,MICP 方法可有效降低水导率。成功的 MICP 配方的关键生化参数包括细菌光密度、脲酶活性、氯化钙浓度和流速,以及多孔介质特性和生化参数之间的交互项。这些模型用于确定各种多孔介质性质的最佳 MICP 配方,并得出了不同固结水平的最大渗透率降低曲线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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