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Source apportionment of fine particulate matter in Houston, Texas: insights to secondary organic aerosols

机译:德克萨斯州休斯顿的细颗粒物质的源分摊:次级有机气溶胶的见解

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Online and offline measurements of ambient particulate matter (PM) near the urban and industrial Houston Ship Channel in Houston, Texas, USA, during May 2015 were utilized to characterize its chemical composition and to evaluate the relative contributions of primary, secondary, biogenic, and anthropogenic sources. Aerosol mass spectrometry (AMS) on nonrefractory PM1 (PM ≤ 1μm) indicated major contributions from sulfate (averaging 50% by mass), organic aerosol (OA, 40%), and ammonium (14%). Positive matrix factorization (PMF) of AMS data categorized OA on average as 22% hydrocarbon-like organic aerosol (HOA), 29% cooking-influenced less-oxidized oxygenated organic aerosol (CI-LO-OOA), and 48% more-oxidized oxygenated organic aerosol (MO-OOA), with the latter two sources indicative of secondary organic aerosol (SOA). Chemical analysis of PM2.5 (PM ≤ 2.5μm) filter samples agreed that organic matter (35%) and sulfate (21%) were the most abundant components. Organic speciation of PM2.5 organic carbon (OC) focused on molecular markers of primary sources and SOA tracers derived from biogenic and anthropogenic volatile organic compounds (VOCs). The sources of PM2.5 OC were estimated using molecular marker-based positive matric factorization (MM-PMF) and chemical mass balance (CMB) models. MM-PMF resolved nine factors that were identified as diesel engines (11.5%), gasoline engines (24.3%), nontailpipe vehicle emissions (11.1%), ship emissions (2.2%), cooking (1.0%), biomass burning (BB, 10.6%), isoprene SOA (11.0%), high-NOx anthropogenic SOA (6.6%), and low-NOx anthropogenic SOA (21.7%). Using available source profiles, CMB apportioned 41% of OC to primary fossil sources (gasoline engines, diesel engines, and ship emissions), 5% to BB, 15% to SOA (including 7.4% biogenic and 7.6% anthropogenic), and 39% to other sources that were not included in the model and are expected to be secondary. This study presents the first application of in situ AMS-PMF, MM-PMF, and CMB for OC source apportionment and the integration of these methods to evaluate the relative roles of biogenic, anthropogenic, and BB-SOA. The three source apportionment models agreed that ~50% of OC is associated with primary emissions from fossil fuel use, particularly motor vehicles. Differences among the models reflect their ability to resolve sources based upon the input chemical measurements, with molecular marker-based methods providing greater source specificity and resolution for minor sources. By combining results from MM-PMF and CMB, BB was estimated to contribute 11% of OC, with 5% primary emissions and 6% BB-SOA. SOA was dominantly anthropogenic (28%) rather than biogenic (11%) or BB-derived. The three-model approach demonstrates significant contributions of anthropogenic SOA to fine PM. More broadly, the findings and methodologies presented herein can be used to advance local and regional understanding of anthropogenic contributions to SOA.
机译:在美国德克萨斯州德克萨斯州休斯顿的城市和工业休斯顿船渠道附近的环境和离线测量,于2015年5月,用于表征其化学成分,评价原发性,二级,生物的相对贡献和人为来源。在非致癌PM1(PM≤1μm)上的气溶胶质谱(AMS)表明硫酸盐(平均50质量%),有机气溶胶(OA,40%)和铵(14%)的主要贡献。 AMS数据的正矩阵分解(PMF)分类为22%的烃类有机气溶胶(HOA),29%烹饪影响的较低氧化的含氧有机气溶胶(CI-LO-OOA)和48%更加氧化含氧有机气溶胶(MO-OOA),后者两个源指示二次有机气溶胶(SOA)。 PM2.5(PM≤2.5μm)过滤样品的化学分析商定,有机物(35%)和硫酸盐(21%)是最丰富的组分。 PM2.5有机碳(OC)的有机物种集中于源自生物和人为挥发性有机化合物(VOC)的主要源和SOA示踪剂的分子标记。使用基于分子标记的阳性测度(MM-PMF)和化学质量平衡(CMB)模型来估计PM2.5 OC的来源。 MM-PMF已解决的9个因素被确定为柴油发动机(11.5%),汽油发动机(24.3%),Nontailpipe车辆排放(11.1%),船舶排放(2.2%),烹饪(1.0%),生物量燃烧(BB, 10.6%),异戊二烯SOA(11.0%),高NOx人为SOA(6.6%)和低NOX人为SOA(21.7%)。使用可用的来源配置文件,CMB分配了41%的OC到原发性化石源(汽油发动机,柴油发动机和船舶排放),5%至BB,15%至SOA(包括7.4%的生物生成和7.6%的人为),39%对于未包含在模型中的其他来源,预计将是次要的。本研究介绍了原位AMS-PMF,MM-PMF和CMB的第一次应用,用于OC源分配,并对这些方法的集成来评估生物,人为和BB-SOA的相对作用。三种源分摊式模型同意〜50%的OC与化石燃料使用,特别是机动车辆的主要排放相关。模型之间的差异反映了它们基于输入化学测量来解析源的能力,其基于分子标记的方法为轻微来源提供更大的源特异性和分辨率。通过组合MM-PMF和CMB的结果,估计BB占oc的11%,具有5%的初级排放和6%BB-SOA。 SOA是主要的人为(28%)而不是生物生物(11%)或BB衍生的。三种模型方法证明了人为SOA对PM PM的显着贡献。更广泛地,本文提出的发现和方法可用于推进对SOA的局部和区域对人为贡献的理解。
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