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首页> 外文期刊>SN Applied Sciences >Estimation of particulate matter ( PM_(2.5), PM_(10)) concentration and its variation over urban sites in Bangladesh
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Estimation of particulate matter ( PM_(2.5), PM_(10)) concentration and its variation over urban sites in Bangladesh

机译:估计颗粒物质(PM_(2.5),PM_(10))浓度及其对孟加拉国城市地点的变化

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摘要

Satellite-retrieved aerosol optical depth essentially provides an economical option for regular monitoring of particulate matter (PM) concentration; however, the constrains and challenges come in terms of estimation accuracy. In the present study, we estimated PM_(2.5) and PM_(10) (PM of aerodynamic diameter lesser than 2.5, 10 μm, respectively) for 11 sites in Bangladesh using different methods. Univariate model showed destitute performance (R~2 < 0.1), whereas integrating MODIS-AOD with surface meteorology, multivariate models enhanced accuracy (R~2 >0.6); meanwhile, radial kernel-based 'eps'-type support vector regression model outperformed rest (R~2 >0.8). Furthermore, we investigated variations in ground concentration of PM_(2.5), PM_(10) during 2013–2018 and found annual mean concentration of 76.34 ± 34.12 μg m~(−3) and 136.25 ± 68.94 μg m~(−3), respectively. Predominant anthropogenic contribution to elevated pollution is well remarked by PM_(2.5)/PM_(10) ratio, highest during January (0.65 ± 0.06) and lowest during July (0.48 ± 0.11).Grievous pollution found in Narayanganj (PM_(2.5): 100.35 ± 56.76 μg m~(−3), PM_(10):200.25 ± 91.79 μg m~(−3)) and slightest in Sylhet (PM_(2.5): 56.13 ± 26.99 μg m~(−3), PM_(10):103.94 ± 49.37 μg m~(−3)). Intra-annual pattern asserts winter as sternly befouled and least pollution during monsoon, which may indicate significant influence of meteorology on PM pollution. We found that PM divulged negative correlation with air temperature (PM_(2.5): −0.78, PM_(10):−0.73), relative humidity (PM_(2.5): −0.66,PM_(10):−0.73) and rainfall (PM_(2.5): −0.59, PM_(10):−0.61). This study showed outrageous situation of PM pollution in urban areas in Bangladesh and proposed modest pathway for regular monitoring of PM that will help to combat pollution.
机译:卫星检索的气溶胶光学深度基本上提供了定期监测颗粒物质(PM)浓度的经济选择;但是,在估计准确性方面存在约束和挑战。在本研究中,我们使用不同方法估计PM_(2.5)和PM_(2.5)和PM_(10)(分别小于2.5,10μm的PM,分别为2.5,10μm),使用不同的方法在孟加拉国的11位点。单变量模型显示出贫困的性能(R〜2 <0.1),而使用表面气象集成MODIS-AOD,多变量模型增强精度(R〜2> 0.6);同时,基于径向内核的'EPS-型支持向量回归模型表现优于休息(R〜2> 0.8)。此外,我们在2013-2018期间调查了PM_(2.5),PM_(10)的地面浓度的变化,发现年平均浓度为76.34±34.12μgm〜(-3)和136.25±68.94μgm〜(-3),分别。 PM_(2.5)/的主要人为对升高污染的贡献良好评论PM_(10)比率,1月份最高(0.65±0.06)和7月期间最低(0.48±0.11)。在Narayanganj(PM_(2.5)中发现的严重污染:100.35±56.76μgm〜(-3),PM_(10):200.25±91.79μgm〜(-3))和Sylhet的丝毫(2.5):56.13±26.99μgm〜(-3),pm_(10):103.94±49.37μgm〜(-3))。在季风期间,年度年度模式陈述冬季严重呈现和最少的污染,这可能表明气象学对PM污染的重大影响。我们发现PM与空气温度泄露负相关(PM_(2.5):-0.78,PM_(10):-0.73),相对湿度(PM_(2.5):-0.66,PM_(10): - 0.73)和降雨(PM_(2.5):-0.59,PM_(10):-0.61)。本研究表明,孟加拉国城市地区PM污染的疏散情况,并提出了对PM定期监测的适度途径,有助于打击污染。

著录项

  • 来源
    《SN Applied Sciences》 |2020年第12期|1993.1-1993.15|共15页
  • 作者单位

    JIS University Kolkata India Indian Institute of Remote Sensing Dehradun India;

    ASICT Division Bangladesh Agricultural Research Institute Gazipur Bangladesh Center for Space Science and Technology Education in Asia and the Pacific Dehradun India;

    Savitribai Phule Pune University Pune India;

    Yazd University Yazd Iran Institute for Atmospheric Sciences‑Weather and Climate Meteorological Office University of Iceland and Icelandic Reykjavik Iceland;

    Department of Physics Institute for Atmospheric Sciences Weather and Climate Meteorological Office University of Iceland and Icelandic Reykjavik Iceland;

    Khulna University of Engineering and Technology Khulna Bangladesh.;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Particulate matter estimation; PM_(2.5); PM_(10); Support vector regression; Radial kernel; MODIS AOD;

    机译:颗粒物质估计;PM_(2.5);PM_(10);支持向量回归;径向内核;Modis Aod.;

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