Cao Jin-Man, Liu Yu-Qian, Liu Yan-Qing, Xue Shu-Dan, Xiong Hai-Hong, Xu Chong-Lin, Xu Qi, Duan Gui-Lan
State Key Lab of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China; University of Chinese Academy of Sciences, Beijing 100049, China.
State Key Lab of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China; Henan Institute of Advanced Technology, Zhengzhou University, Zhengzhou 450052, China.
J Environ Sci (China). 2025 Jan;147:259-267. doi: 10.1016/j.jes.2023.11.016. Epub 2023 Nov 27.
Arsenic (As) pollution in soils is a pervasive environmental issue. Biochar immobilization offers a promising solution for addressing soil As contamination. The efficiency of biochar in immobilizing As in soils primarily hinges on the characteristics of both the soil and the biochar. However, the influence of a specific property on As immobilization varies among different studies, and the development and application of arsenic passivation materials based on biochar often rely on empirical knowledge. To enhance immobilization efficiency and reduce labor and time costs, a machine learning (ML) model was employed to predict As immobilization efficiency before biochar application. In this study, we collected a dataset comprising 182 data points on As immobilization efficiency from 17 publications to construct three ML models. The results demonstrated that the random forest (RF) model outperformed gradient boost regression tree and support vector regression models in predictive performance. Relative importance analysis and partial dependence plots based on the RF model were conducted to identify the most crucial factors influencing As immobilization. These findings highlighted the significant roles of biochar application time and biochar pH in As immobilization efficiency in soils. Furthermore, the study revealed that Fe-modified biochar exhibited a substantial improvement in As immobilization. These insights can facilitate targeted biochar property design and optimization of biochar application conditions to enhance As immobilization efficiency.
土壤中的砷(As)污染是一个普遍存在的环境问题。生物炭固定化是解决土壤砷污染的一个有前景的解决方案。生物炭在土壤中固定砷的效率主要取决于土壤和生物炭的特性。然而,特定性质对砷固定化的影响在不同研究中有所不同,基于生物炭的砷钝化材料的开发和应用往往依赖于经验知识。为了提高固定化效率并降低劳动力和时间成本,采用了机器学习(ML)模型来预测生物炭应用前的砷固定化效率。在本研究中,我们从17篇出版物中收集了一个包含182个砷固定化效率数据点的数据集,以构建三个ML模型。结果表明,随机森林(RF)模型在预测性能上优于梯度提升回归树和支持向量回归模型。基于RF模型进行了相对重要性分析和偏依赖图分析,以确定影响砷固定化的最关键因素。这些发现突出了生物炭施用时间和生物炭pH值在土壤砷固定化效率中的重要作用。此外,研究表明铁改性生物炭在砷固定化方面有显著改善。这些见解有助于有针对性地设计生物炭性质和优化生物炭施用条件,以提高砷固定化效率。