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运用机器学习方法研究黄河下游典型冲积平原地区包气带土壤水分特征曲线的土壤传递函数。

Pedo-transfer functions of the soil water characteristic curves of the vadose zone in a typical alluvial plain area in the lower reaches of the Yellow River using machine learning methods.

作者信息

Zhan Jiang, Li Zhiping, Yu Xiaopeng, Zhao Guizhang, Yuan Qiaoling

机构信息

College of Geosciences and Engineering, North China University of Water Resources and Electric Power, Zhengzhou, 450045, China.

Yellow River Engineering Consulting Co, Ltd, Zhengzhou, 450045, China.

出版信息

Environ Monit Assess. 2022 Oct 6;194(12):850. doi: 10.1007/s10661-022-10397-x.

Abstract

The soil water characteristic curve (SWCC) is of great significance for studying the hydrological cycle, agricultural water management, and unsaturated soil mechanics. However, it is difficult to effectively obtain a large number of SWCCs because of the cumbersome and expensive determination experiments for SWCCs. Pedo-transfer functions (PTFs) established using soil physicochemical properties have become an effective method for solving this problem. However, due to the limitations of the establishment methods and the wide spatial variability of soil properties, it is still difficult to establish PTFs in a specific region. In order to establish the PTFs of SWCCs for the alluvial plain area of the lower reaches of the Yellow River, 233 soil samples were collected from the vadose zone in a typical area. These data were used as the data sources, and eight variables including clay, silt content, fractal dimension, bulk density, total porosity, pH value, organic matter content, and electrical conductivity were used as the influencing factors. By applying and comparing three machine learning algorithms, the PTFs of the SWCCs based on the random forest algorithm were obtained. Based on the Gini index of the random forest, the insensitive factors were eliminated and the optimal variable input mode was constructed. Based on the verification, there was little difference between the predicted water content and the measured water content. The determination coefficient R is 0.9308; the root mean square error (RMSE) is 0.0447; and the mean relative error (MRE) is 22.40%.

摘要

土壤水分特征曲线(SWCC)对于研究水文循环、农业水资源管理以及非饱和土力学具有重要意义。然而,由于SWCC测定实验繁琐且成本高昂,难以有效获取大量的SWCC。利用土壤理化性质建立的土壤传递函数(PTF)已成为解决这一问题的有效方法。然而,由于建立方法的局限性以及土壤性质的广泛空间变异性,在特定区域建立PTF仍然困难。为了建立黄河下游冲积平原地区SWCC的PTF,在典型区域的包气带采集了233个土壤样本。这些数据用作数据源,选取黏粒、粉粒含量、分形维数、容重、总孔隙度、pH值、有机质含量和电导率8个变量作为影响因素。通过应用和比较三种机器学习算法,得到基于随机森林算法的SWCC的PTF。基于随机森林的基尼指数,剔除不敏感因素,构建最优变量输入模式。经检验,预测含水量与实测含水量差异不大。决定系数R为0.9308;均方根误差(RMSE)为0.0447;平均相对误差(MRE)为22.40%。

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