Literature DB >> 33333403

Source apportionment of soil heavy metals using robust spatial receptor model with categorical land-use types and RGWR-corrected in-situ FPXRF data.

Mingkai Qu1, Jian Chen2, Biao Huang2, Yongcun Zhao2.   

Abstract

High-density samples are usually a prerequisite for obtaining high-precision source apportionment results in large-scale areas. In-situ field portable X-ray fluorescence spectrometry (FPXRF) is a fast and cheap way to increase the sample size of soil heavy metals (HMs). Moreover, categorical land-use types may be closely associated with source contributions. However, the above information has rarely been incorporated into the source apportionment. In this study, robust geographically weighted regression (RGWR) was first used to correct the spatially varying effect of the related soil factors (e.g., soil water and soil organic matter) on in-situ FPXRF in an urban-rural fringe of Wuhan City, China, and the correction accuracy of RGWR was compared with those of the traditionally non-spatial multiple linear regression (MLR) and basic GWR. Then, the effect of land-use types on HM concentrations was partitioned using analysis of variance (ANOVA). Last, based on the robust spatial receptor model (i.e., robust absolute principal component scores/RGWR [RAPCS/RGWR]), this study proposed RAPCS/RGWR with categorical land-use types and RGWR-corrected in-situ FPXRF data (RAPCS/RGWR_LU&FPXRF), and its performance was compared with those of RAPCS/RGWR with none or one kind of auxiliary data. Results showed that (i) the performances of the correction models for in-situ FPXRF data were in the order of RGWR > GWR > MLR, and the relative improvement of RGWR over MLR ranged from 52.6% to 70.71% for each HM; (ii) categorical land-use types significantly affected the concentrations of soil Zn, Cu, As, and Pb; (iii) the highest estimation accuracy for source contributions was obtained by RAPCS/RGWR_LU&FPXRF, and the lowest estimation accuracy was obtained by basic RAPCS/RGWR. It is concluded that land-use types and RGWR-corrected in-situ FPXRF data are closely associated with the source contribution, and RAPCS/RGWR_LU&FPXRF is a cost-effective source apportionment method for soil HMs in large-scale areas.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Auxiliary data; In-situ FPXRF data; Land-use types; RAPCS/RGWR_LU&FPXRF; Soil heavy metals; Source apportionment

Year:  2020        PMID: 33333403     DOI: 10.1016/j.envpol.2020.116220

Source DB:  PubMed          Journal:  Environ Pollut        ISSN: 0269-7491            Impact factor:   8.071


  2 in total

1.  Basin-Scale Pollution Loads Analyzed Based on Coupled Empirical Models and Numerical Models.

Authors:  Man Zhang; Xiaolong Chen; Shuihua Yang; Zhen Song; Yonggui Wang; Qing Yu
Journal:  Int J Environ Res Public Health       Date:  2021-11-26       Impact factor: 3.390

2.  Effect Mechanism of Land Consolidation on Soil Bacterial Community: A Case Study in Eastern China.

Authors:  Yaoben Lin; Yanmei Ye; Shuchang Liu; Jiahao Wen; Danling Chen
Journal:  Int J Environ Res Public Health       Date:  2022-01-13       Impact factor: 3.390

  2 in total

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