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GIS-Based Emission Inventory, Dispersion Modeling, and Assessment for Source Contributions of Particulate Matter in an Urban Environment

机译:基于GIS的排放清单,扩散模型以及城市环境中颗粒物来源贡献的评估

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The Industrial Source Complex Short Term (ISCST3) model was used to discern the sources responsible for high PM_(10) levels in Kanpur City, a typical urban area in the Ganga basin, India. A systematic geographic information system-based emission inventory was developed for PM_(10) in each of 85 grids of 2×2 km. The total emission of PM_(10) was estimated at 111 day~(-1) with an overall breakup as follows: (a) industrial point sources, 2.9 t day1 (26%); (b) vehicles, 2.3 t day~(-1) (21%); (c) domestic fuel burning, 2.1 t day~(-1) (19%); (d) paved and unpaved road dust, 1.6 t day~(-1) (15%); and the rest as other sources. To validate the ISCST3 model and to assess air-quality status, sampling was done in summer and winter at seven sampling sites for over 85 days; PM_(10) levels were very high (89-632 μg M~3). The results show that the model-predicted concentrations are in good agreement with observed values, and the model performance was found satisfactory. The validated model was run for each source on each day of sampling. The overall source contribution to ambient air pollution was as follows: vehicular traffic (16%), domestic fuel uses (16%), paved and unpaved road dust (14%), and industries (7%). Interestingly, the largest point source (coal-based power plant) did not contribute significantly to ambient air pollution. The reason might be due to release of pollutant at high stack height. The ISCST3 model was shown to produce source apportionment results like receptor modeling that could generate source apportionment results at any desired time and space resolution.
机译:工业来源综合短期模型(ISCST3)用于识别印度坎加盆地典型市区坎普尔市PM_(10)水平高的来源。针对2×2 km的85个网格中的PM_(10),开发了基于系统地理信息系统的排放清单。估计PM_(10)的总排放量为111天〜(-1),总体分解如下:(a)工业点源,2.9吨天1(26%); (b)车辆,每天2.3吨〜(-1)(21%); (c)国内燃料燃烧,2.1吨日〜(-1)(19%); (d)1.6吨/天〜(-1)的铺装和未铺装的道路扬尘(15%);其余的作为其他来源。为了验证ISCST3模型并评估空气质量状况,夏季和冬季在七个采样点进行了超过85天的采样; PM_(10)含量非常高(89-632μgM〜3)。结果表明,模型预测的浓度与观测值高度吻合,并且模型性能令人满意。在抽样的每一天为每个来源运行经过验证的模型。污染源对环境空气污染的总体贡献如下:车辆交通(16%),家庭燃料使用(16%),铺装和未铺装的道路扬尘(14%)以及工业(7%)。有趣的是,最大的点源(煤电厂)对环境空气污染的贡献不大。原因可能是由于高烟囱高度释放了污染物。 ISCST3模型显示出可以产生源分配结果,例如受体建模,可以在任何所需的时间和空间分辨率下生成源分配结果。

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