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Improving air quality model predictions of organic species using measurement-derived organic gaseous and particle emissions in a petrochemical-dominated region

机译:在石油统治区域中使用测量衍生的有机气态和颗粒排放来改善有机物种的空气质量模型预测

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This study assesses the impact of revised volatile organic compound?(VOC) and organic aerosol (OA) emissions estimates in the GEM-MACH (Global Environmental Multiscale–Modelling Air Quality and CHemistry) chemical transport model (CTM) on air quality model predictions of organic species for the Athabasca oil sands (OS) region in Northern Alberta, Canada. The first emissions data set that was evaluated (base-case run) makes use of regulatory-reported VOC and particulate matter emissions data for the large oil sands mining facilities. The second emissions data set (sensitivity run) uses total facility emissions and speciation profiles derived from box-flight aircraft observations around specific facilities. Large increases in some VOC and OA emissions in the revised-emissions data set for four large oil sands mining facilities and decreases for others were found to improve the modeled VOC and OA concentration maxima in facility plumes, as shown with the 99th percentile statistic and illustrated by case studies. The results show that the VOC emission speciation profile from each oil sand facility is unique and different from standard petrochemical-refinery emission speciation profiles used for other regions in North America. A significant increase in the correlation coefficient is reported for the long-chain alkane predictions against observations when using the revised emissions based on aircraft observations. For some facilities, larger long-chain alkane emissions resulted in higher secondary organic aerosol (SOA) production, which improved OA predictions in those plumes. Overall, the use of the revised-emissions data resulted in an improvement of the model mean OA bias; however, a decrease in the OA correlation coefficient and a remaining negative bias suggests the need for further improvements to model OA emissions and formation processes. The weight of evidence suggests that the top-down emission estimation technique helps to better constrain the fugitive organic emissions in the oil sands region, which are a challenge to estimate given the size and complexity of the oil sands operations and the number of steps in the process chain from bitumen extraction to refined oil product. This work shows that the top-down emissions estimation technique may help to constrain bottom-up emission inventories in other industrial regions of the world with large sources of VOCs and OA.
机译:本研究评估修订后的挥发性有机化合物的影响?(VOC)和有机气溶胶在空气质量模型预测创业板MACH(全球环境多尺度建模空气质量和化学),化学传输模型(CTM)(OA)排放估算对于阿萨巴斯卡油砂(OS)在北阿尔伯塔,加拿大区域的有机物质。该评价(基本情况运行)第一排放数据集利用监管报告的VOC和大型油砂开采设施的颗粒物排放数据。所述第二排放量的数据集(灵敏度运行)使用从围绕特定设施盒飞行飞机观测衍生总设施排放量和形态分布。在修改后的排放数据为四个大型油砂开采设施设置一些VOC和OA排放大量增加和他人减少被发现改善设施羽流建模的VOC和OA浓度最大值,如图所示与第99百分位统计和示出通过案例研究。结果表明,从各油砂设施的VOC排放形态轮廓是用于北美等地区标准石化炼油厂排放的形态轮廓独特和不同。在相关系数A显著增加是使用基于飞机观测订正排放时报告针对观测长链烷烃的预测。对于一些设施,更大的长链烷烃的排放导致更高的二次有机气溶胶(SOA)的产生,在那些其中羽毛改进OA预测。总体而言,使用修订后的排放数据,导致模型平均OA偏见的改善;然而,在OA相关系数的降低和剩余负偏压提出了进一步改进模型OA排放量和形成过程的必要。的证据的重量显示,自顶向下的排放量估算技术有助于更好地约束在油砂区域逃犯有机排放量,这是为了估计给定的油砂操作的尺寸和复杂性的中的步骤的数目的挑战从沥青提取到成品油过程链。这项工作表明,自上而下的排放量估算技术可能有助于限制全球与挥发性有机化合物和OA的大源等工业区自下而上排放清单。

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