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Pollution Detection Algorithm (PDA)

Beck, Ivo Fabio  
•
Angot, Hélène  
•
Baccarini, Andrea  
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2021
Zenodo

The Pollution Detection Algorithm (PDA) is an algorithm to identify and flag periods of primary polluted data in remote atmospheric time series in five steps. The first and most important step identifies polluted periods based on the gradient (time-derivative) of a concentration over time. If this gradient exceeds a given threshold, data are flagged as polluted. Further pollution identification steps are a simple concentration threshold filter, a neighboring points filter (optional), a median and a sparse data filter (optional). The PDA is written in python and runs from the command line. No GUI installation is needed. The script only relies on the target dataset file itself and is independent of ancillary datasets such as meteorological variables. All parameters of each step are adjustable so that the PDA can be “tuned” to be more or less stringent (e.g., flag more or less data points as polluted). The PDA was developed and tested with a particle number concentration dataset collected during the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC) expedition in the Central Arctic (https://doi.org/10.5194/amt-15-4195-2022). {"references": ["Beck, I., Angot, H., Dada, L., Baccarini, A., Qu\u00e9l\u00e9ver, L. L. J., Jokinen, T., Laurila, T., Lampimaki, M., Bukowiecki, N., Boyer, M., Gong, X., Gysel-Beer, M., Pet\u00e4j\u00e4, T., and Schmale, J.: Automated identification of local contamination in remote atmospheric composition time series, Atmos. Meas. Tech., 2022"]}

  • Details
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Type
dataset
DOI
10.5281/zenodo.5761101
Author(s)
Beck, Ivo Fabio  
Angot, Hélène  
Baccarini, Andrea  
Lampimäki, Markus
Matthew, Boyer
Schmale, Julia  
Date Issued

2021

Version

1.0.0

Publisher

Zenodo

Subjects

Arctic

•

Pollution

•

Pollution detection

•

MOSAiC

•

Aerosol

Note

Software

EPFL units
EERL  
FunderGrant NO

Swiss federal funding

188478

US foundations

DE-SC0022046

Other foundations

DIRCR-2018-004

Available on Infoscience
February 17, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/194911
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