Cluster analysis of WIBS single-particle bioaerosol data

Hierarchical agglomerative cluster analysis was performed on single-particle multi-spatial data sets comprising optical diameter, asymmetry and three different fluorescence measurements, gathered using two dual Wideband Integrated Bioaerosol Sensors (WIBSs). The technique is demonstrated on meas...

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Main Authors: N. H. Robinson, J. D. Allan, J. A. Huffman, P. H. Kaye, V. E. Foot, M. Gallagher
Format: Article
Language:English
Published: Copernicus Publications 2013-02-01
Series:Atmospheric Measurement Techniques
Online Access:http://www.atmos-meas-tech.net/6/337/2013/amt-6-337-2013.pdf
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spelling doaj-a1a42a65e1014647a8e49d03eeca96c72020-11-25T00:16:13ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482013-02-016233734710.5194/amt-6-337-2013Cluster analysis of WIBS single-particle bioaerosol dataN. H. RobinsonJ. D. AllanJ. A. HuffmanP. H. KayeV. E. FootM. GallagherHierarchical agglomerative cluster analysis was performed on single-particle multi-spatial data sets comprising optical diameter, asymmetry and three different fluorescence measurements, gathered using two dual Wideband Integrated Bioaerosol Sensors (WIBSs). The technique is demonstrated on measurements of various fluorescent and non-fluorescent polystyrene latex spheres (PSL) before being applied to two separate contemporaneous ambient WIBS data sets recorded in a forest site in Colorado, USA, as part of the BEACHON-RoMBAS project. Cluster analysis results between both data sets are consistent. Clusters are tentatively interpreted by comparison of concentration time series and cluster average measurement values to the published literature (of which there is a paucity) to represent the following: non-fluorescent accumulation mode aerosol; bacterial agglomerates; and fungal spores. To our knowledge, this is the first time cluster analysis has been applied to long-term online primary biological aerosol particle (PBAP) measurements. The novel application of this clustering technique provides a means for routinely reducing WIBS data to discrete concentration time series which are more easily interpretable, without the need for any a priori assumptions concerning the expected aerosol types. It can reduce the level of subjectivity compared to the more standard analysis approaches, which are typically performed by simple inspection of various ensemble data products. It also has the advantage of potentially resolving less populous or subtly different particle types. This technique is likely to become more robust in the future as fluorescence-based aerosol instrumentation measurement precision, dynamic range and the number of available metrics are improved.http://www.atmos-meas-tech.net/6/337/2013/amt-6-337-2013.pdf
collection DOAJ
language English
format Article
sources DOAJ
author N. H. Robinson
J. D. Allan
J. A. Huffman
P. H. Kaye
V. E. Foot
M. Gallagher
spellingShingle N. H. Robinson
J. D. Allan
J. A. Huffman
P. H. Kaye
V. E. Foot
M. Gallagher
Cluster analysis of WIBS single-particle bioaerosol data
Atmospheric Measurement Techniques
author_facet N. H. Robinson
J. D. Allan
J. A. Huffman
P. H. Kaye
V. E. Foot
M. Gallagher
author_sort N. H. Robinson
title Cluster analysis of WIBS single-particle bioaerosol data
title_short Cluster analysis of WIBS single-particle bioaerosol data
title_full Cluster analysis of WIBS single-particle bioaerosol data
title_fullStr Cluster analysis of WIBS single-particle bioaerosol data
title_full_unstemmed Cluster analysis of WIBS single-particle bioaerosol data
title_sort cluster analysis of wibs single-particle bioaerosol data
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2013-02-01
description Hierarchical agglomerative cluster analysis was performed on single-particle multi-spatial data sets comprising optical diameter, asymmetry and three different fluorescence measurements, gathered using two dual Wideband Integrated Bioaerosol Sensors (WIBSs). The technique is demonstrated on measurements of various fluorescent and non-fluorescent polystyrene latex spheres (PSL) before being applied to two separate contemporaneous ambient WIBS data sets recorded in a forest site in Colorado, USA, as part of the BEACHON-RoMBAS project. Cluster analysis results between both data sets are consistent. Clusters are tentatively interpreted by comparison of concentration time series and cluster average measurement values to the published literature (of which there is a paucity) to represent the following: non-fluorescent accumulation mode aerosol; bacterial agglomerates; and fungal spores. To our knowledge, this is the first time cluster analysis has been applied to long-term online primary biological aerosol particle (PBAP) measurements. The novel application of this clustering technique provides a means for routinely reducing WIBS data to discrete concentration time series which are more easily interpretable, without the need for any a priori assumptions concerning the expected aerosol types. It can reduce the level of subjectivity compared to the more standard analysis approaches, which are typically performed by simple inspection of various ensemble data products. It also has the advantage of potentially resolving less populous or subtly different particle types. This technique is likely to become more robust in the future as fluorescence-based aerosol instrumentation measurement precision, dynamic range and the number of available metrics are improved.
url http://www.atmos-meas-tech.net/6/337/2013/amt-6-337-2013.pdf
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