TY - JOUR
T1 - A novel probabilistic source apportionment approach
T2 - Bayesian auto-correlated matrix factorization
AU - Rusanen, Anton
AU - Björklund, Anton
AU - Manousakas, Manousos I.
AU - Jiang, Jianhui
AU - Kulmala, Markku T.
AU - Puolamäki, Kai
AU - Daellenbach, Kaspar R.
N1 - Publisher Copyright:
© Author(s) 2024. This work is distributed under the Creative Commons Attribution 4.0 License.
PY - 2024
Y1 - 2024
N2 - The concentrations of atmospheric particulate matter and many of its constituents are temporally autocorrelated. However, this information has not been utilized in source apportionment methods. Here, we present a Bayesian matrix factorization model (BAMF) that considers the temporal auto-correlation of the components (sources) and provides a direct error estimation. The performance of BAMF is compared with positive matrix factorization (PMF) using synthetic Time-of-Flight Aerosol Chemical Speciation Monitor data, representing different urban environments from typical European towns to megacities. We find that BAMF resolves sources with overall higher factorization performance (temporal behavior and bias) than PMF on all datasets with temporally auto-correlated components. Highly correlated components continue to be challenging and ancillary information is still required to reach good factorizations. However, we demonstrate that adding even partial prior information about the chemical composition of the components to BAMF improves the factorization. Overall, BAMF-type models are promising tools for source apportionment and merit further research.
AB - The concentrations of atmospheric particulate matter and many of its constituents are temporally autocorrelated. However, this information has not been utilized in source apportionment methods. Here, we present a Bayesian matrix factorization model (BAMF) that considers the temporal auto-correlation of the components (sources) and provides a direct error estimation. The performance of BAMF is compared with positive matrix factorization (PMF) using synthetic Time-of-Flight Aerosol Chemical Speciation Monitor data, representing different urban environments from typical European towns to megacities. We find that BAMF resolves sources with overall higher factorization performance (temporal behavior and bias) than PMF on all datasets with temporally auto-correlated components. Highly correlated components continue to be challenging and ancillary information is still required to reach good factorizations. However, we demonstrate that adding even partial prior information about the chemical composition of the components to BAMF improves the factorization. Overall, BAMF-type models are promising tools for source apportionment and merit further research.
UR - https://www.scopus.com/pages/publications/85191558253
U2 - 10.5194/amt-17-1251-2024
DO - 10.5194/amt-17-1251-2024
M3 - 文章
AN - SCOPUS:85191558253
SN - 1867-1381
VL - 17
SP - 1251
EP - 1277
JO - Atmospheric Measurement Techniques
JF - Atmospheric Measurement Techniques
IS - 4
ER -