Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/138996
Title: Atmospheric new particle formation identifier using longitudinal global particle number size distribution data
Authors: Kecorius, Simonas
Madueño, Leizel
Lovric, Mario
Racic, Nikolina
Schwarz, Maximilian
Cyrys, Josef
Casquero-Vera, Juan Andrés
Alados-Arboledas, Lucas
Conil, Sébastien
Sciare, Jean
Ondracek, Jakub
Gannet Hallar, Anna
Gómez-Moreno, Francisco J.
Ellul, Raymond
Kristensson, Adam
Sorribas, Mar
Kalivitis, Nikolaos
Mihalopoulos, Nikolaos
Peters, Annette
Gini, Maria
Konstantinos, Konstantinos
Vratolis, Stergios
Jeongeun, Kim
Birmili, Wolfram
Bergmans, Benjamin
Nikolova, Nina
Dinoi, Adelaide
Contini, Daniele
Marinoni, Angela
Alastuey, Andres
Petäjä, Tuukka
Rodriguez, Sergio
Picard, David
Brem, Benjamin
Priestman, Max
Green, David C.
Beddows, David C. S.
Harrison, Roy M.
O’Dowd, Colin
Ceburnis, Darius
Hyvärinen, Antti
Henzing, Bas
Crumeyrolle, Suzanne
Putaud, Jean-Philippe
Laj, Paolo
Weinhold, Kay
Plauškaitė, Kristina
Byčenkienė, Steigvilė
Keywords: Particles -- Environmental aspects
Air -- Pollution
Elementary particles (Physics)
Particles (Nuclear physics)
Issue Date: 2024
Publisher: Springer Nature
Citation: Kecorius, S., Madueño, L., Lovric, M., Racic, N., Schwarz, M., Cyrys, J., ... & Byčenkienė, S. (2024). Atmospheric new particle formation identifier using longitudinal global particle number size distribution data. Scientific Data, 11(1), 1239.
Abstract: Atmospheric new particle formation (NPF) is a naturally occurring phenomenon, during which high concentrations of sub-10 nm particles are created through gas to particle conversion. The NPF is observed in multiple environments around the world. Although it has observable influence onto annual total and ultrafine particle number concentrations (PNC and UFP, respectively), only limited epidemiological studies have investigated whether these particles are associated with adverse health effects. One plausible reason for this limitation may be related to the absence of NPF identifiers available in UFP and PNC data sets. Until recently, the regional NPF events were usually identified manually from particle number size distribution contour plots. Identification of NPF across multi-annual and multiple station data sets remained a tedious task. In this work, we introduce a regional NPF identifier, created using an automated, machine learning based algorithm. The regional NPF event tag was created for 65 measurement sites globally, covering the period from 1996 to 2023. The discussed data set can be used in future studies related to regional NPF.
URI: https://www.um.edu.mt/library/oar/handle/123456789/138996
Appears in Collections:Scholarly Works - FacSciPhy



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