Multiple linear regression model for bromate formation based on the survey data of source waters from geographically different regions across China

被引:0
|
作者
Jianwei Yu
Juan Liu
Wei An
Yongjing Wang
Junzhi Zhang
Wei Wei
Ming Su
Min Yang
机构
[1] Chinese Academy of Sciences,State Key Laboratory of Environmental Aquatic Chemistry, Research Center for Eco
[2] Beijing Technology and Business University,Environmental Sciences
[3] Beijing University of Civil Engineering and Architecture,Key Laboratory of Urban Stormwater System and Water Environment, Ministry of Education, School of Environment and Energy Engineering
关键词
Bromate formation potential; Ozonation; Alkalinity; Drinking water; MLR model;
D O I
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中图分类号
学科分类号
摘要
A total of 86 source water samples from 38 cities across major watersheds of China were collected for a bromide (Br−) survey, and the bromate (BrO3−) formation potentials (BFPs) of 41 samples with Br− concentration >20 μg L−1 were evaluated using a batch ozonation reactor. Statistical analyses indicated that higher alkalinity, hardness, and pH of water samples could lead to higher BFPs, with alkalinity as the most important factor. Based on the survey data, a multiple linear regression (MLR) model including three parameters (alkalinity, ozone dose, and total organic carbon (TOC)) was established with a relatively good prediction performance (model selection criterion = 2.01, R2 = 0.724), using logarithmic transformation of the variables. Furthermore, a contour plot was used to interpret the influence of alkalinity and TOC on BrO3− formation with prediction accuracy as high as 71 %, suggesting that these two parameters, apart from ozone dosage, were the most important ones affecting the BFPs of source waters with Br− concentration >20 μg L−1. The model could be a useful tool for the prediction of the BFPs of source water.
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页码:1232 / 1239
页数:7
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