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Get Free AccessBiochar application is a promising strategy for the remediation of contaminated soil, while ensuring sustainable waste management. Biochar remediation of heavy metal (HM)-contaminated soil primarily depends on the properties of the soil, biochar, and HM. The optimum conditions for HM immobilization in biochar-amended soils are site-specific and vary among studies. Therefore, a generalized approach to predict HM immobilization efficiency in biochar-amended soils is required. This study employs machine learning (ML) approaches to predict the HM immobilization efficiency of biochar in biochar-amended soils. The nitrogen content in the biochar (0.3-25.9%) and biochar application rate (0.5-10%) were the two most significant features affecting HM immobilization. Causal analysis showed that the empirical categories for HM immobilization efficiency, in the order of importance, were biochar properties > experimental conditions > soil properties > HM properties. Therefore, this study presents new insights into the effects of biochar properties and soil properties on HM immobilization. This approach can help determine the optimum conditions for enhanced HM immobilization in biochar-amended soils.
Kumuduni Niroshika Palansooriya, Jie Li, Pavani Dulanja Dissanayake, Manu Suvarna, Lanyu Li, Xiangzhou Yuan, Binoy Sarkar, Daniel C.W. Tsang, Jörg Rinklebe, Xiaonan Wang, Yong Sik Ok (2022). Prediction of Soil Heavy Metal Immobilization by Biochar Using Machine Learning. , 56(7), DOI: https://doi.org/10.1021/acs.est.1c08302.
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Type
Article
Year
2022
Authors
11
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1021/acs.est.1c08302
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