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Assessment of the sequential principal component analysis chemometric tool to identify the soluble atmospheric pollutants in rainwater

机译:评估顺序主成分分析化学计量学工具以鉴定雨水中的可溶性大气污染物

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In this study a new method of principal component (PC) analysis, sequential PC analysis (SPCA), is proposed and assessed on real samples. The aim was to identify the atmospheric emission sources of soluble compounds in rainwater samples, and the sample collection was performed with an automatic sampler. Anions and cations were separated and quantified by ion chromatography, whereas trace metals and metalloids were determined by inductively coupled plasma mass spectrometry. SPCA results showed eight interfering PCs and ten significant PCs. The interfering cases originated from different atmospheric sources, such as resuspended crustal particles, marine aerosols, urban traffic and a fertilizer factory. The significant PCs explained 84.6% of the total variance; 28.1% accounted for the main contribution, which was resuspended industrial soil from a fertilizer factory containing NO2-, NH4+, NO3-, SO42-, F-, Al, K+, Mn, Sb and Ca2+ as indicators of the fertilizer factory. Another important source (15.0%) was found for Na+, Mg2+, K+, Cl- and SO42-, which represents the marine influence from south and southwest directions. Emissions of Ba2+, Pb, Sr2+, Sb and Mo, which represent a traffic source deposited in soils, were identified as another abundant contribution (12.1%) to the rainwater composition. Other important contributions to the rainwater samples that were identified through SPCA included the following: different urban emissions (Cu, As, Cd, Zn, Mo and Co, 18.1%), emissions from vegetation (HCOO-, 7.7%) and emissions from industrial combustion processes (Ni, V 15.6%). The application of SPCA proved to be a useful tool to identify the complete information on rainwater samples as indicators of urban air pollution in a city influenced mainly by vehicle traffic emissions and resuspended polluted soils.
机译:在这项研究中,提出了一种新的主​​成分(PC)分析方法,即顺序PC分析(SPCA),并在实际样品上进行了评估。目的是确定雨水样品中大气中可溶性化合物的排放源,并使用自动采样器进行样品收集。通过离子色谱法分离和定量阴离子和阳离子,而通过电感耦合等离子体质谱法测定痕量金属和准金属。 SPCA结果显示有八台干扰PC和十台重要PC。干扰案例来自不同的大气源,例如重悬的地壳颗粒,海洋气溶胶,城市交通和化肥厂。显着的PC解释了总方差的84.6%; 28.1%占主要贡献,这是从含有NO 2 -,NH 4 + < / sup>,NO 3 -,SO 4 2-,F - ,Al,K + ,Mn,Sb和Ca 2 + 作为化肥厂的指标。发现Na + ,Mg 2 + ,K + ,Cl -的另一个重要来源(15.0%) SO 4 2-分别代表南,西南方向的海洋影响。 Ba 2 + ,Pb,Sr 2 + ,Sb和Mo的排放是沉积在土壤中的一种交通源,被确定为对土壤的另一贡献(12.1%)。雨水的成分。通过SPCA确定的对雨水样品的其他重要贡献还包括以下方面:不同的城市排放量(Cu,As,Cd,Zn,Mo和Co占18.1%),植被排放量(HCOO -, 7.7%)和工业燃烧过程中的排放(镍,钒15.6%)。事实证明,SPCA的应用是一种有用的工具,可用来识别雨水样本的完整信息,以此作为主要受车辆排放和悬浮污染土壤影响的城市空气污染的指标。

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