Characterization and prediction of soil hydraulic and solute transport parameters using a random forest model

环境科学 土壤科学 导水率 表征(材料科学) 随机森林 水文学(农业) 岩土工程 地质学 土壤水分 计算机科学 材料科学 机器学习 纳米技术
作者
Xinni Ju,Dongli She,Xuan Huang,Yongqiu Xia,Lei Gao
出处
期刊:European Journal of Soil Science [Wiley]
卷期号:75 (2) 被引量:2
标识
DOI:10.1111/ejss.13471
摘要

Abstract To effectively control nonpoint source pollution and predict its transport and load, understanding water and solute transport processes, patterns and mechanisms is essential. However, the measurement of water movement and solute transport parameters is usually a laborious and time‐consuming task. It is important to predict water movement and solute transport parameters from more readily available soil physical and chemical properties. In this study, a database of soil hydraulic and solute transport parameters containing information retrieved from 83 published studies on soil properties, land use, management measures, etc. was established to characterize and simulate soil water movement and solute transport processes. Our results showed that the soil particle composition was closely related to all soil hydraulic and solute transport parameters. As the soil texture changed from sand to clay, the soil residual water content ( θr ) obviously increased. The soil porosity was significantly positively correlated with θr , saturated water content ( θs ), van Genuchten parameter α , dispersity ( λ ) and retardation factor ( R ) and negatively correlated with van Genuchten parameter n ( p < 0.01). The use of random forest models allowed the prediction of soil hydraulic and solute transport parameters by inputting common or even incomplete soil property parameters. The bulk density and particle composition jointly contributed 66% to the prediction of the soil hydraulic parameters and 44% to the prediction of the solute transport parameters. The pH exerted a notable impact on the solute transport parameters, especially dispersion coefficient ( D ), λ and R . The results may be useful in providing data support and facilitating the development of watershed nonpoint source pollution models.

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