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首页> 外文期刊>Environmental Pollution >Estimating ground-level PM_(2.5) levels in Taiwan using data from air quality monitoring stations and high coverage of microsensors
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Estimating ground-level PM_(2.5) levels in Taiwan using data from air quality monitoring stations and high coverage of microsensors

机译:利用空气质量监测站的数据估算台湾的地面PM_(2.5)水平和微传感器的高覆盖范围

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摘要

A widespread monitoring network of Airbox microsensors was implemented since 2016 to provide high-resolution spatial distributions of ground-level PM2.5 data in Taiwan. We developed models for estimating ground-level PM2.5 concentrations for all the 3 km x 3 km grids in Taiwan by combining the data from air quality monitoring stations and the Airbox sensors. The PM2.5 data from the Airbox sensors (AB-PM2.5) was used to predict daily mean PM2.5 levels at the grids in 2017 using a semiparametric additive model. The estimated PM2.5 level at the grids was further applied as a predictor variable in the models to predict the monthly mean concentration of PM2.5 at all the grids in the previous year. The modeling -predicting procedures were repeated backward for the years from 2016 to 2006. The model results revealed that the model R-2 increased from 0.40 to 0.87 when the AB-PM2.5 data were included as a nonlinear component in the model, indicating that AB-PM2.5 is a significant predictor of ground-level PM2.5 concentration. The cross-validation (CV) results demonstrated that the root of mean squared prediction errors of the estimated monthly mean PM2.5 concentrations were smaller than 5 mu g/m(3) and the R-2 of the CV models of 0.79-0.88 during 2006-2017. We concluded that Airbox sensors can be used with monitoring data to more accurately estimate long-term exposure to PM2.5 for cohorts of small areas in health impact assessment studies. (C) 2020 Elsevier Ltd. All rights reserved.
机译:自2016年以来实施了广泛的监控空中电阻仪网络,以提供台湾地面PM2.5数据的高分辨率空间分布。通过将来自空气质量监测站和空气箱传感器的数据组合,我们开发了估计地面PM2.5估计地面PM2.5浓度的模型。使用半法添加剂模型,使用来自空气箱传感器(AB-PM2.5)的PM2.5数据来预测2017年在网格中的每日平均PM2.5。网格处的估计PM2.5电平进一步应用于模型中的预测变量,以预测前一年的所有网格上的PM2.5的每月平均浓度。从2016年到2006年的几年来落后模型。模型结果表明,当AB-PM2.5数据作为模型中的非线性组分时,R-2模型R-2增加到0.87,表明AB-PM2.5是地面PM2.5浓度的显着预测因子。交叉验证(CV)结果表明,估计的月平均pM2.5浓度的平均平方预测误差的根部小于5μg/ m(3),CV型号的R-2为0.79-0.88在2006 - 2017年期间。我们得出结论,空气箱传感器可与监测数据一起用于监测数据,以更准确地估计健康影响评估研究中的小区域的PM2.5的长期暴露。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Environmental Pollution》 |2020年第9期|114810.1-114810.10|共10页
  • 作者单位

    Acad Sinica Inst Stat Sci 128 Acad Rd Sect 2 Taipei 11529 Taiwan;

    Acad Sinica Inst Informat Sci 128 Acad Rd Sect 2 Taipei 11529 Taiwan;

    Acad Sinica Inst Stat Sci 128 Acad Rd Sect 2 Taipei 11529 Taiwan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Airbox; Long-term exposure to PM2.5; Semiparametric additive model;

    机译:空气箱;长期暴露于PM2.5;半甲型添加剂模型;

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