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首页> 外文期刊>Frontiers of environmental science & eng >A method for quantifying bias in modeled concentrations and source impacts for secondary particulate matter
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A method for quantifying bias in modeled concentrations and source impacts for secondary particulate matter

机译:一种量化次生颗粒物浓度和源影响建模偏差的方法

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Community Multi-Scale Air Quality (CMAQ) estimates of sulfates, nitrates, ammonium, and organic carbon are highly influenced by uncertainties in modeled secondary formation processes, such as chemical mechanisms, volatilization, and condensation rates. These compounds constitute the majority of PM_(2.5) mass, and reducing bias in estimated concentrations has benefits for policy measures and epidemiological studies. In this work, a method for adjusting source impacts on secondary species is developed that provides estimates of source contributions and reduces bias in modeled concentrations compared to observations. The bias correction adjusts concentrations and source impacts based on the difference between modeled concentrations and observations while taking into account uncertainties at the location of interest; and it is applied both spatially and temporally. We apply the method over the US for 2006. The mean bias for initial CMAQ concentrations compared to observations is -0.28 (OC), 0.11 (NO_3), 0.05 (NH4), and -0.08 (SO_4). The normalized mean bias in modeled concentrations compared to observations was effectively zero for OC, NO_3, NH_4, and SO_4 after applying the secondary bias correction. Ten-fold cross-validation was conducted to determine the performance of the spatial application of the bias correction. Cross-validation performance was favorable; correlation coefficients were greater than 0.69 for all species when comparing observations and concentrations based on kriged correction factors. The methods presented here address model uncertainties by improving simulated concentrations and source impacts of secondary particulate matter through data assimilation. Secondary-adjusted concentrations and source impacts from 20 emissions sources are generated for 2006 over continental US.
机译:硫酸盐,硝酸盐,铵和有机碳的社区多尺度空气质量(CMAQ)估算受建模的次级形成过程(例如化学机理,挥发和冷凝速率)不确定性的影响很大。这些化合物占PM_(2.5)质量的绝大部分,减少估计浓度的偏差对政策措施和流行病学研究具有好处。在这项工作中,开发了一种调整源对次生物种的影响的方法,该方法提供了源贡献的估算值,并且与观测值相比,减少了建模浓度的偏差。偏差校正会根据建模浓度和观测值之间的差异来调整浓度和源影响,同时考虑到感兴趣位置的不确定性;它在空间和时间上都适用。我们在2006年将这种方法应用于美国。与观察值相比,初始CMAQ浓度的平均偏差为-0.28(OC),0.11(NO_3),0.05(NH4)和-0.08(SO_4)。应用次级偏差校正后,与观察值相比,建模浓度的归一化平均偏差对于OC,NO_3,NH_4和SO_4实际上为零。进行十次交叉验证,以确定偏差校正在空间应用中的性能。交叉验证性能良好;在比较基于克里格校正因子的观测值和浓度时,所有物种的相关系数均大于0.69。本文介绍的方法通过数据同化来提高次级颗粒物的模拟浓度和源影响,从而解决了模型的不确定性。 2006年美国大陆产生了20种排放源的经二次调整后的浓度和源影响。

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