VOC source apportionment: How monitoring characteristics influence positive matrix factorization (PMF) solutions

被引:4
|
作者
Frischmon, Caroline [1 ]
Hannigan, Michael [1 ]
机构
[1] Univ Colorado Boulder, Dept Mech Engn, Boulder, CO 80309 USA
来源
ATMOSPHERIC ENVIRONMENT-X | 2024年 / 21卷
关键词
VOLATILE ORGANIC-COMPOUNDS; RECEPTOR MODELS; HEALTH; EXPOSURES; EMISSIONS; PM2.5; COMMUNITIES; VARIABILITY; PRODUCTS; IMPACT;
D O I
10.1016/j.aeaoa.2023.100230
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Positive matrix factorization (PMF) can be used to develop more targeted air quality mitigation strategies by identifying major sources of a pollutant in an area. This technique is dependent, however, on the ability of PMF to resolve factors that accurately represent all sources of that pollutant in an area. We investigated how the accuracy of PMF solutions might be influenced by monitoring data characteristics, such as temporal resolution, monitoring location, and species composition, to better inform the use of PMF in VOC mitigation strategies. We applied PMF to five VOC monitoring programs collected within a four-year period in Colorado and found generally consistent factors, which we identified as oil extraction, processing, and evaporation; natural gas; vehicle exhaust; and liquid gasoline/short-lived oil and gas. The main determinant influencing whether or not a dataset resolved each of these sources was whether the dataset had a comprehensive list of VOC species covering key species of each source. Pollution spikes were not well-modeled in any of the solutions. Hyperlocal and volatile chemical product factors expected to be resolved in the industrialized, urban location were also missing, highlighting three limitations of PMF analysis. Wind direction dependence and diurnal trends aided in source identification, suggesting that high-time resolution data is important for developing actionable PMF results. Based on these findings, we recommend that air monitoring for PMF-informed VOC mitigation efforts include high temporal resolution and a comprehensive array of VOC species.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] Source apportionment using positive matrix factorization on daily measurements of inorganic and organic speciated PM2.5
    Dutton, Steven J.
    Vedal, Sverre
    Piedrahita, Ricardo
    Milford, Jana B.
    Miller, Shelly L.
    Hannigan, Michael P.
    ATMOSPHERIC ENVIRONMENT, 2010, 44 (23) : 2731 - 2741
  • [22] Multiply improved positive matrix factorization for source apportionment of volatile organic compounds during the COVID-19 shutdown in Tianjin, China
    Gu, Yao
    Liu, Baoshuang
    Dai, Qili
    Zhang, Yufen
    Zhou, Ming
    Feng, Yinchang
    Hopke, Philip K.
    ENVIRONMENT INTERNATIONAL, 2022, 158
  • [23] Chemical characterization of submicron particulate matter (PM1) and its source apportionment using positive matrix factorization
    Jhamaria, Charu
    Sharma, Shivani
    Yadav, Manish
    Tiwari, Suresh
    Singh, Namrata
    CLEAN-SOIL AIR WATER, 2024, 52 (07)
  • [24] p-Phenylenediamine antioxidants in PM2.5: New markers for traffic in positive matrix factorization source apportionment
    Jiang, Nan
    Hao, Xuexin
    Wang, Zichen
    Li, Minzhen
    Zhang, Dong
    Cao, Rong
    Zhang, Ruiqin
    Zhang, Haijun
    Chen, Jiping
    Geng, Ningbo
    JOURNAL OF HAZARDOUS MATERIALS, 2024, 476
  • [25] Combined positive matrix factorization (PMF) and nitrogen isotope signature analysis to provide insights into the source contribution to aerosol free amino acids
    Wen, Zequn
    Li, Bo
    Xiao, Hua-Yun
    Zhe, Lv
    Zhu, Ren-Guo
    ATMOSPHERIC ENVIRONMENT, 2022, 268
  • [26] Enhancing source identification of hourly PM2.5 data in Seoul based on a dataset segmentation scheme by positive matrix factorization (PMF)
    Park, Min-Bin
    Lee, Tae-Jung
    Lee, Eun-Sun
    Kim, Dong-Sool
    ATMOSPHERIC POLLUTION RESEARCH, 2019, 10 (04) : 1042 - 1059
  • [27] Source apportionment of ambient particles: Comparison of positive matrix factorization analysis applied to particle size distribution and chemical composition data
    Gu, Jianwei
    Pitz, Mike
    Schnelle-Kreis, Juergen
    Diemer, Juergen
    Reller, Armin
    Zimmermann, Ralf
    Soentgen, Jens
    Stoelzel, Matthias
    Wichmann, H. -Erich
    Peters, Annette
    Cyrys, Josef
    ATMOSPHERIC ENVIRONMENT, 2011, 45 (10) : 1849 - 1857
  • [28] Source apportionment of methane and nitrous oxide in California's San Joaquin Valley at CalNex 2010 via positive matrix factorization
    Guha, A.
    Gentner, D. R.
    Weber, R. J.
    Provencal, R.
    Goldstein, A. H.
    ATMOSPHERIC CHEMISTRY AND PHYSICS, 2015, 15 (20) : 12043 - 12063
  • [29] Source apportionment of NMVOCs in the Kathmandu Valley during the SusKat-ABC international field campaign using positive matrix factorization
    Sarkar, Chinmoy
    Sinha, Vinayak
    Sinha, Baerbel
    Panday, Arnico K.
    Rupakheti, Maheswar
    Lawrence, Mark G.
    ATMOSPHERIC CHEMISTRY AND PHYSICS, 2017, 17 (13) : 8129 - 8156
  • [30] Source apportionment of particle-bound polycyclic aromatic hydrocarbons in Lumbini, Nepal by using the positive matrix factorization receptor model
    Chen, Pengfei
    Li, Chaoliu
    Kang, Shichang
    Yan, Fangping
    Zhang, Qianggong
    Ji, Zhengming
    Tripathee, Lekhendra
    Rupakheti, Dipesh
    Rupakheti, Maheswar
    Qu, Bin
    Sillanpaa, Mika
    ATMOSPHERIC RESEARCH, 2016, 182 : 46 - 53