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Identification of potentially contaminated areas of soil microplastic based on machine learning: A case study in Taihu Lake region, China

The Science of The Total Environment 2023 43 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 60 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Yifei Qiu, Yifei Qiu, Yifei Qiu, Yifei Qiu, Yifei Qiu, Yifei Qiu, Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Shenglü Zhou Mengmeng Zou, Chuchu Zhang, Chuchu Zhang, Chuchu Zhang, Chuchu Zhang, Chuchu Zhang, Mengmeng Zou, Mengmeng Zou, Wendong Qin, Mengmeng Zou, Mengmeng Zou, Mengmeng Zou, Wendong Qin, Wendong Qin, Wendong Qin, Wendong Qin, Yifei Qiu, Chuchu Zhang, Wendong Qin, Chengxiang Lv, Chengxiang Lv, Wendong Qin, Chengxiang Lv, Wendong Qin, Wendong Qin, Wendong Qin, Chengxiang Lv, Chengxiang Lv, Chengxiang Lv, Shenglü Zhou Yifei Qiu, Yifei Qiu, Mengmeng Zou, Shenglü Zhou Shenglü Zhou Mengmeng Zou, Mengmeng Zou, Mengmeng Zou, Mengmeng Zou, Mengmeng Zou, Shenglü Zhou Chuchu Zhang, Shenglü Zhou Chuchu Zhang, Shenglü Zhou

Summary

Researchers applied machine learning models — including random forest and support vector regression — to predict the spatial distribution of soil microplastic pollution in China's Taihu Lake region, finding that soil texture, population density, and proximity to known plastic sources were the dominant drivers, with nearly half of urban soils showing serious contamination.

Soil microplastic (MP) pollution has recently become increasingly aggravated, with severe consequences being generated. Understanding the spatial distribution characteristics of soil MPs is an important prerequisite for protecting and controlling soil pollution. However, determining the spatial distribution of soil MPs through a large number of soil field sampling and laboratory test analyses is unrealistic. In this study, we compared the accuracy and applicability of different machine learning models for predicting the spatial distribution of soil MPs. The support vector machine regression model with radial basis function (RBF) as kernel function (SVR-RBF) has a high prediction accuracy (R = 0.8934). Among the six ensemble models, random forest (R = 0.9007) could better explain the significance of source and sink factors affecting the occurrence of soil MPs. Soil texture, population density, and MPs point of interest (MPs-POI) were the main source-sink factors affecting the occurrence of soil MPs. Furthermore, the accumulation of MPs in soil was significantly affected by human activity. The spatial distribution map of soil MP pollution in the study area was drawn based on the bivariate local Moran's I model of soil MP pollution and the normalized difference vegetation index (NDVI) variation trend. A total of 48.74 km of soil was in an area of serious MP pollution, mainly concentrated in urban soil. This study provides a hybrid framework that includes spatial distribution prediction of MPs, source-sink analysis, and pollution risk area identification, providing scientific and systematic methods and techniques for pollution management in other soil environments.

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