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用于评估生物炭-重金属吸附效率以有效修复土壤-植物环境的预测性机器学习模型

Predictive Machine Learning Model to Assess the Adsorption Efficiency of Biochar-Heavy Metals for Effective Remediation of Soil-Plant Environment.

作者信息

Li Xiang, Chen Bing, Chen Weisheng, Yin Yilong, Huang Lianxi, Wei Lan, Awad Mahrous, Liu Zhongzhen

机构信息

Key Laboratory of Plant Nutrition and Fertilizer in South Region, Ministry of Agriculture, Guangdong Key Laboratory of Nutrient Cycling and Farmland Conservation, Institute of Agricultural Resources and Environment, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, China.

Institute of Animal Science, Guangdong Academy of Agricultural Sciences, Collaborative Innovation Center of Aquatic Sciences, Key Laboratory of Animal Nutrition and Feed Science in South China, Ministry of Agriculture and Rural Affairs, Guangdong Provincial Key Laboratory of Animal Breeding and Nutrition, Guangzhou 510640, China.

出版信息

Toxics. 2024 Aug 7;12(8):575. doi: 10.3390/toxics12080575.

Abstract

Biochar is crucial for agricultural output and plays a significant role in effectively eliminating heavy metals (HMs) from the soil, which is essential for maintaining a soil-plant environment. This work aimed to assess machine learning models to analyze the impact of soil parameters on the transformation of HMs in biochar-soil-plant environments, considering the intricate non-linear relationships involved. A total of 211 datasets from pot or field experiments were evaluated. Fourteen factors were taken into account to assess the efficiency and bioavailability of HM-biochar amendment immobilization. Four predictive models, namely linear regression (LR), partial least squares (PLS), support vector regression (SVR), and random forest (RF), were compared to predict the immobilization efficiency of biochar-HM. The findings revealed that the RF model was created using 5-fold cross-validation, which exhibited a more reliable prediction performance. The results indicated that soil features accounted for 79.7% of the absorption of HM by crops, followed by biochar properties at 17.1% and crop properties at 3.2%. The main elements that influenced the result have been determined as the characteristics of the soil (including the presence of different HM species and the amount of clay) and the quantity and attributes of the biochar (such as the temperature at which it was produced by pyrolysis). Furthermore, the RF model was further developed to predict bioaccumulation factors (BAF) and variations in crop uptake (CCU). The R values were found to be 0.7338 and 0.6997, respectively. Thus, machine learning (ML) models could be useful in understanding the behavior of HMs in soil-plant ecosystems by employing biochar additions.

摘要

生物炭对农业产出至关重要,在有效去除土壤中的重金属方面发挥着重要作用,这对于维持土壤-植物环境至关重要。这项工作旨在评估机器学习模型,以分析土壤参数对生物炭-土壤-植物环境中重金属转化的影响,同时考虑到其中复杂的非线性关系。总共评估了来自盆栽或田间试验的211个数据集。考虑了14个因素来评估重金属-生物炭改良固定化的效率和生物有效性。比较了四种预测模型,即线性回归(LR)、偏最小二乘法(PLS)、支持向量回归(SVR)和随机森林(RF),以预测生物炭-重金属的固定化效率。研究结果表明,使用五折交叉验证创建的RF模型表现出更可靠的预测性能。结果表明,土壤特征占作物对重金属吸收的79.7%,其次是生物炭性质占17.1%,作物性质占3.2%。已确定影响结果的主要因素是土壤特征(包括不同重金属种类的存在和粘土含量)以及生物炭的数量和属性(例如热解产生它的温度)。此外,进一步开发了RF模型以预测生物累积因子(BAF)和作物吸收变化(CCU)。发现R值分别为0.7338和0.6997。因此,机器学习(ML)模型通过添加生物炭可有助于理解土壤-植物生态系统中重金属的行为。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c19f/11359540/1b9ef278426d/toxics-12-00575-g001.jpg

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