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细颗粒物(PM)源及其使用正矩阵分解模型的个体贡献估计

Fine Particulate Matter (PM) Sources and Its Individual Contribution Estimation Using a Positive Matrix Factorization Model.

作者信息

Lee Gahye, Kim Minkyeong, Park Duckshin, Yoo Changkyoo

机构信息

Seohaean Research Institute, Chung Nam Institute, Hongseong 32227, Republic of Korea.

Korea Railroad Research Institute (KRRI), 176 Cheoldobakmulkwan-ro, Uiwang-si 16105, Republic of Korea.

出版信息

Toxics. 2023 Jan 11;11(1):69. doi: 10.3390/toxics11010069.

Abstract

The effective management and regulation of fine particulate matter (PM) is essential in the Republic of Korea, where PM concentrations are very high. To do this, however, it is necessary to identify sources of PM pollution and determine the contribution of each source using an acceptance model that includes variability in the chemical composition and physicochemical properties of PM, which change according to its spatiotemporal characteristics. In this study, PM was measured using PMS-104 instruments at two monitoring stations in Bucheon City, Gyeonggi Province, from 22 April to 3 July 2020; the PM chemical composition was also analyzed. Sources of PM pollution were then identified and the quantitative contribution of each source to the pollutant mix was estimated using a positive matrix factorization (PMF) model. From the PMF analysis, secondary aerosols, coal-fired boilers, metal-processing facilities, motor vehicle exhaust, oil combustion residues, and soil-derived pollutants had average contribution rates of 5.73 μg/m, 3.11 μg/m, 2.14 μg/m, 1.94 μg/m, 1.87 μg/m, and 1.47 μg/m, respectively. The coefficient of determination (R) was 0.87, indicating the reliability of the PMF model. Conditional probability function plots showed that most of the air pollutants came from areas where PM-emitting facilities are concentrated and highways are present. Pollution sources with high contribution rates should be actively regulated and their management prioritized. Additionally, because automobiles are the leading source of artificially-derived PM, their effective control and management is necessary.

摘要

在韩国,细颗粒物(PM)浓度非常高,因此对其进行有效管理和调控至关重要。然而,要做到这一点,有必要识别PM污染的来源,并使用一个包含PM化学成分和物理化学性质变化的接受模型来确定每个来源的贡献,这些性质会根据其时空特征而改变。在本研究中,于2020年4月22日至7月3日期间,使用PMS - 104仪器在京畿道富川市的两个监测站对PM进行了测量;同时还分析了PM的化学成分。随后识别了PM污染的来源,并使用正矩阵因子分解(PMF)模型估算了每个来源对污染物混合的定量贡献。从PMF分析来看,二次气溶胶、燃煤锅炉、金属加工设施、机动车尾气、燃油燃烧残留物和土壤衍生污染物的平均贡献率分别为5.73μg/m、3.11μg/m、2.14μg/m、1.94μg/m、1.87μg/m和1.47μg/m。决定系数(R)为0.87,表明PMF模型的可靠性。条件概率函数图显示,大多数空气污染物来自PM排放设施集中且有高速公路的区域。对贡献率高的污染源应积极进行调控并优先管理。此外,由于汽车是人为来源PM的主要源头,因此有必要对其进行有效控制和管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4ccf/9866003/ae66e43487d0/toxics-11-00069-g001.jpg

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