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首页> 外文期刊>Journal of the Air & Waste Management Association >Gridded bias correction of modeled PM_(2.5) for exposure assessment, and estimation of background concentrations over a coastal valley region of northwestern British Columbia, Canada
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Gridded bias correction of modeled PM_(2.5) for exposure assessment, and estimation of background concentrations over a coastal valley region of northwestern British Columbia, Canada

机译:Updished评估的建模PM_(2.5)的网格偏压校正,并在加拿大英西北部沿海谷地区估算背景集中

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摘要

Chemical transport models (CTM) can have large biases and errors when simulating pollutant concentrations. To improve the characterization of fine particulate matter (PM_(2.5)) over complex terrain for exposure assessments, three mathematical formulae that utilized the relationship between modeled and observed quantile concentrations at a monitor location were developed. These were then applied to 1 year of CMAQ model output of PM_(2.5) over the Terrace-Kitimat Valley of northwestern British Columbia, Canada. The final products enhanced the representation of ambient levels at existing monitoring stations when evaluated with conventional statistical measures. Better agreement of corrected outputs with observed compliance metrics was also found. On average, the absolute errors of amended outputs were 11 % and 10% for the annual mean PM_(2.5) and 98th percentiles of daily concentrations, respectively, compared to 45% and 61%, respectively, in the original outputs. These improvements provided greater confidence to use the amended outputs to estimate concentrations at locations without monitors. The predominance of pristine conditions in the modeling domain was exploited to derive annual background PM_(2.5) concentrations over the valley, which was estimated to be 2.0-2.3 μg m~(-3). To our knowledge, this is the first study to calculate background PM_(2.5) concentrations over northern BC coastlands using bias-corrected outputs from an air quality model. Implications: Bias correction of CMAQ model output was necessary for assessing regulatory compliance for ambient PM_(2.5). The implications are notable. First, for low to moderate spatial heterogeneity in monitoring data, the use of regression equations that relates quantile mean concentrations of model outputs to those of observational data enhances the estimation of PM_(2.5) at unmonitored locations. Second, by providing spatial pollutant distribution ahead of planned industrial development in Terrace-Kitimat Valley (TKV), corrected model output offers a baseline for tracking progress in airshed management. Third, correction improved pollutant exposure classification, for which the risk was predominantly low. Finally, 2.0-2.3 μg m~(-3) should be considered as PM_(2.5) concentrations that are irreducible when setting voluntary targets for ambient levels in the area.
机译:在模拟污染物浓度时,化学传输模型(CTM)可具有大的偏见和误差。为了改善细颗粒物质的表征(PM_(2.5))在复杂地形上进行曝光评估,开发了三种数学公式,其利用在监测位置在监测位置进行建模和观察到的定量浓度之间的关系。然后将这些人应用于加拿大西北哥伦比亚州西北露台的PM_(2.5)的1年CMAQ模型输出。最终产品在用常规统计措施评估时增强了现有监测站的环境水平的表示。还发现了更好地达成了矫正产出与观察到的合规度量。平均而言,经修正的产出的绝对误差分别为每年平均PM_(2.5)和98百分位数分别在原始产出中的45%和61%的浓度为11%和10%。这些改进提供了更大的信心,使修改的产出在没有监视器的情况下估算浓度。利用模拟结构域的原始条件的优势被利用,从而通过谷的年度背景PM_(2.5)浓度估计为2.0-2.3μgm〜(-3)。为了我们的知识,这是第一次计算使用来自空气质量模型的偏置输出的BC北部海岸线的背景PM_(2.5)浓度。含义:CMAQ模型输出的偏置校正是评估环境PM_(2.5)的监管依从性所必需的。含义是值得注意的。首先,对于监测数据中的低于中等空间异质性,使用与观测数据中的模型输出的数量平均浓度相关的回归方程增强了未监控位置的PM_(2.5)的估计。其次,通过在Terrace-Kitimat谷(TKV)中计划的工业开发前提前提供空间污染物分布,纠正模型输出提供了一种基准,用于跟踪空中计算机管理进展。第三,纠正改善了污染物暴露分类,风险主要是低的。最后,2.0-2.3μgm〜(3)应被视为PM_(2.5)浓度,这些浓度是不可缩短的,当设置该地区的环境水平的自愿目标时。

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    Natural Resources and Environmental Studies University of Northern British Columbia Prince George BC Canada;

    Natural Resources and Environmental Studies University of Northern British Columbia Prince George BC Canada;

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