Artigo Revisado por pares

Combined source apportionment, using positive matrix factorization–chemical mass balance and principal component analysis/multiple linear regression–chemical mass balance models

2009; Elsevier BV; Volume: 43; Issue: 18 Linguagem: Inglês

10.1016/j.atmosenv.2009.02.054

ISSN

1873-2844

Autores

Guoliang Shi, Xiang Li, Yinchang Feng, Yuqiu Wang, Jianhui Wu, Jun Li, Tan Zhu,

Tópico(s)

Air Quality Monitoring and Forecasting

Resumo

The methods of positive matrix factorization–chemical mass balance and principal component analysis/multiple linear regression–chemical mass balance were studied in this paper, for combined source apportionment. Due to the high similarity among the source profiles, several problems would raised when only one receptor model was applied. For example, the collinearity problem would result in the negative contributions when applying CMB model; certain sources would not to be separated out when applying PCA or PMF model. In this study, PCA/MLR–CMB model and PMF–CMB were attempted to resolve the problem, where the combined models were applied to study the synthetic and ambient datasets. In synthetic dataset, there were seven sources (six actual sources from real world, and one unknown source). The results obtained by the combined models show that the combined source apportionment technique is feasible. In addition, an ambient dataset from a northern city in China was analyzed by PCA/MLR–CMB model and PMF–CMB model, and these two models got the similar results. The results show that coal combustion contributed the largest fraction to the total mass.

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