Articles | Volume 16, issue 11
https://doi.org/10.5194/amt-16-2781-2023
https://doi.org/10.5194/amt-16-2781-2023
Research article
 | 
05 Jun 2023
Research article |  | 05 Jun 2023

SMEARcore – modular data infrastructure for atmospheric measurement stations

Anton Rusanen, Kristo Hõrrak, Lauri R. Ahonen, Tuomo Nieminen, Pasi P. Aalto, Pasi Kolari, Markku Kulmala, Tuukka Petäjä, and Heikki Junninen

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Cited articles

Aalto, P., Hämeri, K., Becker, E., Weber, R., Salm, J., Mäkelä, J. M., Hoell, C., O'dowd, C. D., Hansson, H.-C., Väkevä, M., Koponen, I. K., Buzorius, G., and Kulmala, M.: Physical characterization of aerosol particles during nucleation events, Tellus B, 53, 344–358, https://doi.org/10.3402/tellusb.v53i4.17127, 2001. 
Aalto, P., Keronen, P., Leskinen, M., Siivola, E., and Järvi, L.: SMEAR III Kumpula meteorology, greenhouse gases and air quality (Version 2), University of Helsinki, Institute for Atmospheric and Earth System Research [data set], https://doi.org/10.23729/6e74091b-1036-4668-a5a8-9132e344a850, 2022. 
Airflow: https://airflow.apache.org (last access: 12 January 2022), 2022. 
Alfred-Wegener-Institut Helmholtz-Zentrum für Polar- und Meeresforschung: Polar Research and Supply Vessel POLARSTERN Operated by the Alfred-Wegener-Institute, Journal of large-scale research facilities, 3, A119, https://doi.org/10.17815/jlsrf-3-163, 2017. 
Bauer, P., Stevens B., and Hazeleger. W.: A digital twin of Earth for the green transition, Nat. Clim. Change, 11, 80–83, 2021. 
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Short summary
We present a framework for setting up SMEAR (Station for Measuring Ecosystem–Atmosphere Relations) type measurement station data flows. This framework, called SMEARcore, consists of modular open-source software components that can be chosen to suit various station configurations. The benefits of using this framework are automation of routine operations and real-time monitoring of measurement results.