An inter-comparison of PM10 source apportionment using PCA and PMF receptor models in three European sites

被引:0
|
作者
Daniela Cesari
F. Amato
M. Pandolfi
A. Alastuey
X. Querol
D. Contini
机构
[1] National Research Council (ISAC-CNR),Institute of Atmospheric Sciences and Climate
[2] Spanish Research Council (IDÆA-CSIC),Institute of Environmental Assessment and Water Research
关键词
Receptor models; Principal component analysis; Positive matrix factorization; Aerosol sources;
D O I
暂无
中图分类号
学科分类号
摘要
Source apportionment of aerosol is an important approach to investigate aerosol formation and transformation processes as well as to assess appropriate mitigation strategies and to investigate causes of non-compliance with air quality standards (Directive 2008/50/CE). Receptor models (RMs) based on chemical composition of aerosol measured at specific sites are a useful, and widely used, tool to perform source apportionment. However, an analysis of available studies in the scientific literature reveals heterogeneities in the approaches used, in terms of “working variables” such as the number of samples in the dataset and the number of chemical species used as well as in the modeling tools used. In this work, an inter-comparison of PM10 source apportionment results obtained at three European measurement sites is presented, using two receptor models: principal component analysis coupled with multi-linear regression analysis (PCA-MLRA) and positive matrix factorization (PMF). The inter-comparison focuses on source identification, quantification of source contribution to PM10, robustness of the results, and how these are influenced by the number of chemical species available in the datasets. Results show very similar component/factor profiles identified by PCA and PMF, with some discrepancies in the number of factors. The PMF model appears to be more suitable to separate secondary sulfate and secondary nitrate with respect to PCA at least in the datasets analyzed. Further, some difficulties have been observed with PCA in separating industrial and heavy oil combustion contributions. Commonly at all sites, the crustal contributions found with PCA were larger than those found with PMF, and the secondary inorganic aerosol contributions found by PCA were lower than those found by PMF. Site-dependent differences were also observed for traffic and marine contributions. The inter-comparison of source apportionment performed on complete datasets (using the full range of available chemical species) and incomplete datasets (with reduced number of chemical species) allowed to investigate the sensitivity of source apportionment (SA) results to the working variables used in the RMs. Results show that, at both sites, the profiles and the contributions of the different sources calculated with PMF are comparable within the estimated uncertainties indicating a good stability and robustness of PMF results. In contrast, PCA outputs are more sensitive to the chemical species present in the datasets. In PCA, the crustal contributions are higher in the incomplete datasets and the traffic contributions are significantly lower for incomplete datasets.
引用
收藏
页码:15133 / 15148
页数:15
相关论文
共 50 条
  • [1] An inter-comparison of PM10 source apportionment using PCA and PMF receptor models in three European sites
    Cesari, Daniela
    Amato, F.
    Pandolfi, M.
    Alastuey, A.
    Querol, X.
    Contini, D.
    [J]. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2016, 23 (15) : 15133 - 15148
  • [2] Inter-comparison of source apportionment of PM10 using PMF and CMB in three sites nearby an industrial area in central Italy
    Cesari, Daniela
    Donateo, Antonio
    Conte, Marianna
    Contini, Daniele
    [J]. ATMOSPHERIC RESEARCH, 2016, 182 : 282 - 293
  • [3] Source apportionment of PM10 in Delhi, India using PCA/APCS, UNMIX and PMF
    Jain, Srishti
    Sharma, S. K.
    Mandal, T. K.
    Saxena, Mohit
    [J]. PARTICUOLOGY, 2018, 37 : 107 - 118
  • [4] Comparison of receptor models for source apportionment of the PM10 in Zaragoza (Spain)
    Callen, M. S.
    de la Cruz, M. T.
    Lopez, J. M.
    Navarro, M. V.
    Mastral, A. M.
    [J]. CHEMOSPHERE, 2009, 76 (08) : 1120 - 1129
  • [5] Characterization and source apportionment of organic compounds in PM10 using PCA and PMF at a traffic hotspot of Delhi
    Gupta, Sarika
    Gadi, Ranu
    Sharma, S. K.
    Mandal, T. K.
    [J]. SUSTAINABLE CITIES AND SOCIETY, 2018, 39 : 52 - 67
  • [6] Inter-comparison of receptor models for PM source apportionment:: Case study in an industrial area
    Viana, M.
    Pandolfi, M.
    Minguillon, M. C.
    Querol, X.
    Alastuey, A.
    Monfort, E.
    Celades, I.
    [J]. ATMOSPHERIC ENVIRONMENT, 2008, 42 (16) : 3820 - 3832
  • [7] Evaluation of receptor and chemical transport models for PM10 source apportionment
    Belis, C. A.
    Pernigotti, D.
    Pirovano, G.
    Favez, O.
    Jaffrezo, J. L.
    Kuenen, J.
    van Der Gon, H. Denier
    Reizer, M.
    Riffault, V
    Alleman, L. Y.
    Almeida, M.
    Amato, F.
    Angyal, A.
    Argyropoulos, G.
    Bande, S.
    Beslic, I
    Besombes, J-L
    Bove, M. C.
    Brotto, P.
    Calori, G.
    Cesari, D.
    Colombi, C.
    Contini, D.
    De Gennaro, G.
    Di Gilio, A.
    Diapouli, E.
    El Haddad, I
    Elbern, H.
    Eleftheriadis, K.
    Ferreira, J.
    Vivanco, M. Garcia
    Gilardoni, S.
    Golly, B.
    Hellebust, S.
    Hopke, P. K.
    Izadmanesh, Y.
    Jorquera, H.
    Krajsek, K.
    Kranenburg, R.
    Lazzeri, P.
    Lenartz, F.
    Lucarelli, F.
    Maciejewska, K.
    Manders, A.
    Manousakas, M.
    Masiol, M.
    Mircea, M.
    Mooibroek, D.
    Nava, S.
    Oliveira, D.
    [J]. ATMOSPHERIC ENVIRONMENT-X, 2020, 5
  • [8] Source apportionment of PM10 and PM2.5 at multiple sites in the strait of Gibraltar by PMF: impact of shipping emissions
    Marco Pandolfi
    Yolanda Gonzalez-Castanedo
    Andrés Alastuey
    Jesus D. de la Rosa
    Enrique Mantilla
    A. Sanchez de la Campa
    Xavier Querol
    Jorge Pey
    Fulvio Amato
    Teresa Moreno
    [J]. Environmental Science and Pollution Research, 2011, 18 : 260 - 269
  • [9] Source apportionment of PM10 and PM2.5 at multiple sites in the strait of Gibraltar by PMF: impact of shipping emissions
    Pandolfi, Marco
    Gonzalez-Castanedo, Yolanda
    Alastuey, Andres
    de la Rosa, Jesus D.
    Mantilla, Enrique
    Sanchez de la Campa, A.
    Querol, Xavier
    Pey, Jorge
    Amato, Fulvio
    Moreno, Teresa
    [J]. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2011, 18 (02) : 260 - 269
  • [10] Source Apportionment of PM10 at Pyeongtaek Area Using Positive Matrix Factorization (PMF) Model
    Heo, Jongwon
    Kim, Chanhyuk
    Min, Yoonki
    Kim, Hyeonja
    Sung, Yeongook
    Kim, Jongsoo
    Lee, Kyoungbin
    Heo, Jongbae
    [J]. JOURNAL OF KOREAN SOCIETY FOR ATMOSPHERIC ENVIRONMENT, 2018, 34 (06) : 849 - 864