Incorporation of source contributions to improve the accuracy of soil heavy metal mapping using small sample sizes at a county scale

IF 5.2 2区 农林科学 Q1 SOIL SCIENCE
Jie SONG , Xin WANG , Dongsheng YU , Jiangang LI , Yanhe ZHAO , Siwei WANG , Lixia MA
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引用次数: 0

Abstract

Estimating heavy metal (HM) distribution with high precision is the key to effectively preventing Chinese medicinal plants from being polluted by the native soil. A total of 44 surface soil samples were gathered to detect the concentrations of eight HMs (As, Hg, Cu, Cr, Ni, Zn, Pb, and Cd) in the herb growing area of Luanping County, northeastern Hebei Province, China. An absolute principal component score-multiple linear regression (APCS-MLR) model was used to quantify pollution source contributions to soil HMs. Furthermore, the source contribution rates and environmental data of each sampling point were simultaneously incorporated into a stepwise linear regression model to identify the crucial indicators for predicting soil HM spatial distributions. Results showed that 88% of Cu, 72% of Cr, and 72% of Ni came from natural sources; 50% of Zn, 49% of Pb, and 59% of Cd were mainly caused by agricultural activities; and 44% of As and 56% of Hg originated from industrial activities. When three-type (natural, agricultural, and industrial) source contribution rates and environmental data were simultaneously incorporated into the stepwise linear regression model, the fitting accuracy was significantly improved and the model could explain 31%–86% of the total variance in soil HM concentrations. This study introduced three-type source contributions of each sampling point based on APCS-MLR analysis as new covariates to improve soil HM estimation precision, thus providing a new approach for predicting the spatial distribution of HMs using small sample sizes at the county scale.

结合源贡献,提高县级小样本量土壤重金属制图的准确性
高精度地估算重金属(HM)分布是有效防止中药植物受原生土壤污染的关键。本研究在河北省东北部的滦平县药材种植区采集了 44 个表层土壤样品,以检测八种重金属(砷、汞、铜、铬、镍、锌、铅和镉)的浓度。采用绝对主成分得分-多元线性回归(APCS-MLR)模型量化了土壤高锰酸盐的污染源贡献。此外,还将污染源贡献率和每个采样点的环境数据同时纳入逐步线性回归模型,以确定预测土壤有害有机物空间分布的关键指标。结果表明,88% 的铜、72% 的铬和 72% 的镍来自天然来源;50% 的锌、49% 的铅和 59% 的镉主要由农业活动引起;44% 的砷和 56% 的汞则来自工业活动。当三类(自然、农业和工业)来源贡献率和环境数据同时纳入逐步线性回归模型时,拟合精度显著提高,模型可解释土壤 HM 浓度总方差的 31%-86% 。该研究引入了基于 APCS-MLR 分析的各采样点的三类源贡献率作为新的协变量,提高了土壤 HM 估算的精度,从而为利用小样本量预测县域范围内 HM 的空间分布提供了一种新的方法。
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来源期刊
Pedosphere
Pedosphere 环境科学-土壤科学
CiteScore
11.70
自引率
1.80%
发文量
147
审稿时长
5.0 months
期刊介绍: PEDOSPHERE—a peer-reviewed international journal published bimonthly in English—welcomes submissions from scientists around the world under a broad scope of topics relevant to timely, high quality original research findings, especially up-to-date achievements and advances in the entire field of soil science studies dealing with environmental science, ecology, agriculture, bioscience, geoscience, forestry, etc. It publishes mainly original research articles as well as some reviews, mini reviews, short communications and special issues.
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