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Predicting bacterial transport through saturated porous media using an automated machine learning model

Frontiers in Microbiology 2023 7 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Jie Zhuang, Fengxian Chen, Jie Zhuang, Bin Zhou, Jie Zhuang, Xijuan Chen Bin Zhou, Fengxian Chen, Liqiong Yang, Xijuan Chen Bin Zhou, Bin Zhou, Liqiong Yang, Liqiong Yang, Xijuan Chen Xijuan Chen Xijuan Chen Jie Zhuang, Jie Zhuang, Xijuan Chen

Summary

Not relevant to microplastics — this study uses machine learning to predict the transport of E. coli bacteria through saturated soils, relevant to groundwater contamination from manure.

<i>Escherichia coli</i>, as an indicator of fecal contamination, can move from manure-amended soil to groundwater under rainfall or irrigation events. Predicting its vertical transport in the subsurface is essential for the development of engineering solutions to reduce the risk of microbiological contamination. In this study, we collected 377 datasets from 61 published papers addressing <i>E. coli</i> transport through saturated porous media and trained six types of machine learning algorithms to predict bacterial transport. Eight variables, including bacterial concentration, porous medium type, median grain size, ionic strength, pore water velocity, column length, saturated hydraulic conductivity, and organic matter content were used as input variables while the first-order attachment coefficient and spatial removal rate were set as target variables. The eight input variables have low correlations with the target variables, namely, they cannot predict target variables independently. However, using the predictive models, input variables can effectively predict the target variables. For scenarios with higher bacterial retention, such as smaller median grain size, the predictive models showed better performance. Among six types of machine learning algorithms, Gradient Boosting Machine and Extreme Gradient Boosting outperformed other algorithms. In most predictive models, pore water velocity, ionic strength, median grain size, and column length showed higher importance than other input variables. This study provided a valuable tool to evaluate the transport risk of <i>E.coli</i> in the subsurface under saturated water flow conditions. It also proved the feasibility of data-driven methods that could be used for predicting other contaminants' transport in the environment.

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