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基于多源辅助变量和随机森林模型的耕地土壤重金属空间分布预测

[Prediction of Spatial Distribution of Heavy Metals in Cultivated Soil Based on Multi-source Auxiliary Variables and Random Forest Model].

作者信息

Xie Xue-Feng, Guo Wei-Wei, Pu Li-Jie, Miu Yuan-Qing, Jiang Guo-Jun, Zhang Jian-Zhen, Xu Fei, Wu Tao

机构信息

College of Geography and Environmental Sciences, Zhejiang Normal University, Jinhua 321004, China.

School of Geography and Ocean Science, Nanjing University, Nanjing 210023, China.

出版信息

Huan Jing Ke Xue. 2024 Jan 8;45(1):386-395. doi: 10.13227/j.hjkx.202303035.

Abstract

Spatial prediction of the concentrations of soil heavy metals (HMs) in cultivated land is critical for monitoring cultivated land contamination and ensuring sustainable eco-agriculture. In this study, 32 environmental variables from terrain, climate, soil attributes, remote-sensing information, vegetation indices, and anthropogenic activities were used as auxiliary variables, and random forest (RF), regression Kriging (RK), ordinary Kriging (OK), and multiple linear regression (MLR) models were proposed to predict the concentrations of As, Cd, Cr, Cu, Hg, Ni, Pb, and Zn in cultivated soils. In comparison to those of RK, OK, and MLR, the RF model had the best prediction performance for As, Cd, Cr, Hg, Pb, and Zn, whereas the OK and RK models had highest prediction performance for Cu and Ni, respectively, showing that was the highest, and mean absolute error (MAE) and root mean square error (RMSE) were the lowest. The prediction performance of the spatial distribution of soil HMs under different prediction methods was basically consistent. The high value areas of eight HMs concentrations were all distributed in the southern plain area. However, the RF model depicted the details of spatial prediction more prominently. Moreover, the importance ranking of influencing factors derived from the RF model indicated that the spatial variation in concentrations of the eight HMs in Lanxi City were mainly affected by the combined effects of Se, TN, pH, elevation, annual average temperature, annual average rainfall, distance from rivers, and distance from factories. Given the above, random forest models could be used as an effective method for the spatial prediction of soil heavy metals, providing scientific reference for regional soil pollution investigation, assessment, and management.

摘要

耕地土壤重金属(HMs)浓度的空间预测对于监测耕地污染和确保生态农业可持续发展至关重要。本研究将来自地形、气候、土壤属性、遥感信息、植被指数和人为活动的32个环境变量用作辅助变量,提出了随机森林(RF)、回归克里格(RK)、普通克里格(OK)和多元线性回归(MLR)模型来预测耕地土壤中砷、镉、铬、铜、汞、镍、铅和锌的浓度。与RK、OK和MLR模型相比,RF模型对砷、镉、铬、汞、铅和锌具有最佳的预测性能,而OK和RK模型分别对铜和镍具有最高的预测性能,表明其预测性能最高,平均绝对误差(MAE)和均方根误差(RMSE)最低。不同预测方法下土壤HMs空间分布的预测性能基本一致。八种HMs浓度的高值区均分布在南部平原地区。然而,RF模型更突出地描绘了空间预测的细节。此外,RF模型得出的影响因素重要性排序表明,兰溪市八种HMs浓度的空间变异主要受硒、总氮、pH值、海拔、年平均温度、年平均降雨量、与河流的距离和与工厂的距离等因素的综合影响。综上所述,随机森林模型可作为土壤重金属空间预测的有效方法,为区域土壤污染调查、评估和管理提供科学参考。

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