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伊朗西南部地区铬的空间分析:概率健康风险和多元全局敏感性分析。

Spatial analysis of chromium in southwestern part of Iran: probabilistic health risk and multivariate global sensitivity analysis.

机构信息

Department for Management of Science and Technology Development, Ton Duc Thang University, Ho Chi Minh City, Vietnam.

Faculty of Environment and Labour Safety, Ton Duc Thang University, Ho Chi Minh City, Vietnam.

出版信息

Environ Geochem Health. 2019 Oct;41(5):2023-2038. doi: 10.1007/s10653-019-00260-3. Epub 2019 Feb 18.

Abstract

This study was concerned with chromium as a potential carcinogenic contaminant in 64 wells located in five aquifers, southwest of Iran. A probabilistic health risk assessment indicated a high risk to the local residents including adults and children in the study area. A sequential sensitivity analysis and a novel approach known as multivariate global sensitivity analysis using both principal component analysis and B-spline were applied to investigate the behavior of health risk model along time considering four independent input parameters in the risk equation. In this context, based on the results of sensitivity analysis, concentration of chromium in drinking water (C) and body weight (W) were the most influential parameters. Random forest (RF) was used as a variable selection method to choose the most influential parameters for the prediction of chromium. Five parameters, among 13 water quality variables, including phosphate, nitrate, fluoride, manganese and iron were selected by RF as the most important parameters for spatial prediction. Hybrid methods of RF and ordinary kriging (RFOK) and RF and inverse distance weighting (RFIDW) were then applied for spatial prediction of Cr using the secondary variables. The RFOK and RFIDW were more efficient than that of ordinary kriging (OK) with respect to a cross-validation algorithm. For instance, in terms of relative root mean squared error, the performance of OK was improved from 31.72 to 23.21 and 23.61 for RFOK and RFIDW, respectively.

摘要

本研究关注的是伊朗西南部五个含水层中 64 口井中的铬是否为潜在的致癌污染物。概率健康风险评估表明,研究区域内的当地居民,包括成年人和儿童,面临着高风险。为了研究健康风险模型在考虑风险方程中四个独立输入参数的情况下随时间的变化情况,采用了顺序敏感性分析和一种新的方法,即基于主成分分析和 B 样条的多元全局敏感性分析。在这种情况下,根据敏感性分析的结果,饮用水中铬的浓度(C)和体重(W)是最具影响力的参数。随机森林(RF)被用作变量选择方法,以选择最具影响力的参数来预测铬。在 13 个水质变量中,有 5 个参数(包括磷酸盐、硝酸盐、氟化物、锰和铁)被 RF 选为空间预测铬的最重要参数。然后,将 RF 与普通克里金(RFOK)和 RF 与反距离加权(RFIDW)的混合方法应用于使用次要变量对 Cr 的空间预测。在交叉验证算法方面,RFOK 和 RFIDW 比普通克里金(OK)的效率更高。例如,在相对均方根误差方面,OK 的性能从 31.72 提高到了 23.21 和 23.61,对于 RFOK 和 RFIDW 分别如此。

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