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Dive into the research topics where Roman Fröhlich is active.

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Featured researches published by Roman Fröhlich.


Scientific Data | 2018

Collocated observations of cloud condensation nuclei, particle size distributions, and chemical composition

Julia Schmale; S. Henning; Bas Henzing; Helmi Keskinen; K. Sellegri; Jurgita Ovadnevaite; A. Bougiatioti; N. Kalivitis; Iasonas Stavroulas; Anne Jefferson; Minsu Park; P. Schlag; Adam Kristensson; Yoko Iwamoto; K. J. Pringle; C. L. Reddington; Pasi Aalto; Mikko Äijälä; Urs Baltensperger; Jakub Bialek; Wolfram Birmili; Nicolas Bukowiecki; Mikael Ehn; A. M. Fjaeraa; Markus Fiebig; Göran Frank; Roman Fröhlich; Arnoud Frumau; Masaki Furuya; E. Hammer

Cloud condensation nuclei (CCN) number concentrations alongside with submicrometer particle number size distributions and particle chemical composition have been measured at atmospheric observatories of the Aerosols, Clouds, and Trace gases Research InfraStructure (ACTRIS) as well as other international sites over multiple years. Here, harmonized data records from 11 observatories are summarized, spanning 98,677 instrument hours for CCN data, 157,880 for particle number size distributions, and 70,817 for chemical composition data. The observatories represent nine different environments, e.g., Arctic, Atlantic, Pacific and Mediterranean maritime, boreal forest, or high alpine atmospheric conditions. This is a unique collection of aerosol particle properties most relevant for studying aerosol-cloud interactions which constitute the largest uncertainty in anthropogenic radiative forcing of the climate. The dataset is appropriate for comprehensive aerosol characterization (e.g., closure studies of CCN), model-measurement intercomparison and satellite retrieval method evaluation, among others. Data have been acquired and processed following international recommendations for quality assurance and have undergone multiple stages of quality assessment.


Atmospheric Chemistry and Physics | 2017

Resolving anthropogenic aerosol pollution types – deconvolution and exploratory classification of pollution events

Mikko Äijälä; Liine Heikkinen; Roman Fröhlich; F. Canonaco; André S. H. Prévôt; Heikki Junninen; Tuukka Petäjä; Markku Kulmala; Douglas R. Worsnop; Mikael Ehn

Abstract. Mass spectrometric measurements commonly yield data on hundreds of variables over thousands of points in time. Refining and synthesizing this raw data into chemical information necessitates the use of advanced, statistics-based data analytical techniques. In the field of analytical aerosol chemistry, statistical, dimensionality reductive methods have become widespread in the last decade, yet comparable advanced chemometric techniques for data classification and identification remain marginal. Here we present an example of combining data dimensionality reduction (factorization) with exploratory classification (clustering), and show that the results cannot only reproduce and corroborate earlier findings, but also complement and broaden our current perspectives on aerosol chemical classification. We find that applying positive matrix factorization to extract spectral characteristics of the organic component of air pollution plumes, together with an unsupervised clustering algorithm, k-means+ + , for classification, reproduces classical organic aerosol speciation schemes. Applying appropriately chosen metrics for spectral dissimilarity along with optimized data weighting, the source-specific pollution characteristics can be statistically resolved even for spectrally very similar aerosol types, such as different combustion-related anthropogenic aerosol species and atmospheric aerosols with similar degree of oxidation. In addition to the typical oxidation level and source-driven aerosol classification, we were also able to classify and characterize outlier groups that would likely be disregarded in a more conventional analysis. Evaluating solution quality for the classification also provides means to assess the performance of mass spectral similarity metrics and optimize weighting for mass spectral variables. This facilitates algorithm-based evaluation of aerosol spectra, which may prove invaluable for future development of automatic methods for spectra identification and classification. Robust, statistics-based results and data visualizations also provide important clues to a human analyst on the existence and chemical interpretation of data structures. Applying these methods to a test set of data, aerosol mass spectrometric data of organic aerosol from a boreal forest site, yielded five to seven different recurring pollution types from various sources, including traffic, cooking, biomass burning and nearby sawmills. Additionally, three distinct, minor pollution types were discovered and identified as amine-dominated aerosols.


Acta Geophysica | 2016

Spatial Distribution of Carbonaceous Aerosol in the Southeastern Baltic Sea Region (Event of Grass Fires)

Vadimas Dudoitis; Steigvilė Byčenkienė; Kristina Plauškaitė; Carlo Bozzetti; Roman Fröhlich; Genrik Mordas; Vidmantas Ulevicius

The aerosol chemical composition in air masses affected by large vegetation fires transported from the Kaliningrad region (Russia) and southeast regions (Belarus and Ukraine) during early spring (March 2014) was characterized at the remote background site of Preila, Lithuania. In this study, the chemical composition of the particulate matter was studied by high temporal resolution instruments, including an Aerosol Chemical Speciation Monitor (ACSM) and a seven-wavelength aethalo-meter. Air masses were transported from twenty to several hundred kilometres, arriving at the measurement station after approximately half a day of transport. The concentration-weighted trajectory analysis suggests that organic aerosol particles are mainly transported over the Baltic Sea and the continent (southeast of Belarus). Results show that a significant fraction of the vegetation burning organic aerosol is transformed into oxidised forms in less than a half-day. Biomass burning aerosol (BBOA) was quantified from the ACSM data using a positive matrix factorization (PMF) analysis, while its spatial distribution was evaluated using air mass clustering approach.


Atmospheric Measurement Techniques | 2015

ACTRIS ACSM intercomparison – Part 2: Intercomparison of ME-2 organic source apportionment results from 15 individual, co-located aerosol mass spectrometers

Roman Fröhlich; Vincent Crenn; Ari Setyan; F. Canonaco; O. Favez; Véronique Riffault; Jay G. Slowik; Wenche Aas; Mikko Äijälä; Andrés Alastuey; B. Artíñano; Nicolas Bonnaire; Carlo Bozzetti; M. Bressi; C. Carbone; Esther Coz; Philip Croteau; Michael J. Cubison; J. K. Esser-Gietl; David Green; Valérie Gros; Liine Heikkinen; Hartmut Herrmann; John T. Jayne; C. Lunder; M.C. Minguillón; Griša Močnik; Colin D. O'Dowd; Jurgita Ovadnevaite; Ettore Petralia


Atmospheric Measurement Techniques | 2013

The ToF-ACSM: a portable aerosol chemical speciation monitor with TOFMS detection

Roman Fröhlich; Michael J. Cubison; Jay G. Slowik; Nicolas Bukowiecki; André S. H. Prévôt; Urs Baltensperger; Johannes Schneider; Joel R. Kimmel; M. Gonin; U. Rohner; D. R. Worsnop; John T. Jayne


Atmospheric Measurement Techniques | 2015

ACTRIS ACSM intercomparison - Part 1: Reproducibility of concentration and fragment results from 13 individual Quadrupole Aerosol Chemical Speciation Monitors (Q-ACSM) and consistency with co-located instruments

Vincent Crenn; Jean Sciare; Philip Croteau; Stéphanie Verlhac; Roman Fröhlich; Claudio A. Belis; Wenche Aas; Mikko Äijälä; Andrés Alastuey; B. Artíñano; Dominique Baisnée; Nicolas Bonnaire; M. Bressi; Manjula R. Canagaratna; F. Canonaco; C. Carbone; F. Cavalli; Esther Coz; Michael J. Cubison; Johanna K. Esser-Gietl; David Green; Valérie Gros; Liine Heikkinen; Hartmut Herrmann; C. Lunder; María Cruz Minguillón; Griša Močnik; Colin D. O'Dowd; Jurgita Ovadnevaite; Jean Eudes Petit


Environmental Science & Technology | 2016

Inorganic Salt Interference on CO2+ in Aerodyne AMS and ACSM Organic Aerosol Composition Studies

Simone M. Pieber; Imad El Haddad; Jay G. Slowik; Manjula R. Canagaratna; John T. Jayne; Stephen M. Platt; Carlo Bozzetti; Kaspar R. Daellenbach; Roman Fröhlich; Athanasia Vlachou; Felix Klein; Josef Dommen; Branka Miljevic; Jose L. Jimenez; Douglas R. Worsnop; Urs Baltensperger; André S. H. Prévôt


Atmospheric Chemistry and Physics | 2015

Fourteen months of on-line measurements of the non-refractory submicron aerosol at the Jungfraujoch (3580 m a.s.l.) – chemical composition, origins and organic aerosol sources

Roman Fröhlich; Michael J. Cubison; Jay G. Slowik; Nicolas Bukowiecki; F. Canonaco; Philip Croteau; M. Gysel; S. Henne; Erik Herrmann; John T. Jayne; M. Steinbacher; D. R. Worsnop; Urs Baltensperger; André S. H. Prévôt


Atmospheric Chemistry and Physics | 2016

Fossil and non-fossil source contributions to atmospheric carbonaceous aerosols during extreme spring grassland fires in Eastern Europe

Vidmantas Ulevicius; Steigvilė Byčenkienė; Carlo Bozzetti; Athanasia Vlachou; Kristina Plauškaitė; Genrik Mordas; Vadimas Dudoitis; Gülcin Abbaszade; Vidmantas Remeikis; Andrius Garbaras; Agne Masalaite; Jan Blees; Roman Fröhlich; Kaspar R. Dällenbach; F. Canonaco; Jay G. Slowik; Josef Dommen; Ralf Zimmermann; Jürgen Schnelle-Kreis; Gary Salazar; Konstantinos Agrios; Sönke Szidat; Imad El Haddad; André S. H. Prévôt


Atmospheric Chemistry and Physics | 2016

Variations in the chemical composition of the submicron aerosol and in the sources of the organic fraction at a regional background site of the Po Valley (Italy)

M. Bressi; F. Cavalli; J.-P. Putaud; Roman Fröhlich; S. Martins dos Santos; Ettore Petralia; André S. H. Prévôt; M. Berico; A. Malaguti; F. Canonaco

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F. Canonaco

Paul Scherrer Institute

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Jurgita Ovadnevaite

National University of Ireland

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John T. Jayne

Massachusetts Institute of Technology

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