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Ground-based validation of the Copernicus Sentinel-5P TROPOMI NO2 measurements with the NDACC ZSL-DOAS, MAX-DOAS and Pandonia global networks

Authors :
Ann Mari Fjæraa
Thomas Wagner
Kimberly Strong
Claus Zehner
Aleksandr N. Gruzdev
Richard Querel
Moritz Müller
Julia Remmers
Michel Van Roozendael
Manuel Gebetsberger
Karin Kreher
Nis Jepsen
Tijl Verhoelst
Michel Grutter de la Mora
Andreas Richter
Aleksandr Elokhov
J. Pepijn Veefkind
Dimitris Karagkiozidis
Jean-Christopher Lambert
Andrea Pazmino
Ariane Bazureau
Rigel Kivi
K. Folkert Boersma
Wolfgang Stremme
Kristof Bognar
Gaia Pinardi
Florence Goutail
Martin Tiefengraber
Georg Hansen
Lidia Saavedra de Miguel
Margarita Yela Gonzalez
Sebastian Donner
Henk Eskes
Angelika Dehn
Ankie Piters
Olga Puentedura
Valery P. Sinyakov
Steven Compernolle
Yugo Kanaya
Kai Uwe Eichmann
C. Prados-Roman
Claudia Rivera Cárdenas
Myrto Gratsea
Hitoshi Irie
Alexander Cede
Folkard Wittrock
Sander Niemeijer
Thierry Portafaix
José Granville
J. S. Rimmer
Cheng Liu
Alkiviadis F. Bais
François Hendrick
Monica Navarro Comas
Jean-Pierre Pommereau
Pieternel F. Levelt
Source :
Atmospheric Measurement Techniques. 14:481-510
Publication Year :
2021
Publisher :
Copernicus GmbH, 2021.

Abstract

This paper reports on consolidated ground-based validation results of the atmospheric NO2 data produced operationally since April 2018 by the TROPOspheric Monitoring Instrument (TROPOMI) on board of the ESA/EU Copernicus Sentinel-5 Precursor (S5P) satellite. Tropospheric, stratospheric, and total NO2 column data from S5P are compared to correlative measurements collected from, respectively, 19 Multi-Axis Differential Optical Absorption Spectroscopy (MAX-DOAS), 26 Network for the Detection of Atmospheric Composition Change (NDACC) Zenith-Scattered-Light DOAS (ZSL-DOAS), and 25 Pandonia Global Network (PGN)/Pandora instruments distributed globally. The validation methodology gives special care to minimizing mismatch errors due to imperfect spatio-temporal co-location of the satellite and correlative data, e.g. by using tailored observation operators to account for differences in smoothing and in sampling of atmospheric structures and variability and photochemical modelling to reduce diurnal cycle effects. Compared to the ground-based measurements, S5P data show, on average, (i) a negative bias for the tropospheric column data, of typically −23 % to −37 % in clean to slightly polluted conditions but reaching values as high as −51 % over highly polluted areas; (ii) a slight negative median difference for the stratospheric column data, of about −0.2 Pmolec cm−2, i.e. approx. −2 % in summer to −15 % in winter; and (iii) a bias ranging from zero to −50 % for the total column data, found to depend on the amplitude of the total NO2 column, with small to slightly positive bias values for columns below 6 Pmolec cm−2 and negative values above. The dispersion between S5P and correlative measurements contains mostly random components, which remain within mission requirements for the stratospheric column data (0.5 Pmolec cm−2) but exceed those for the tropospheric column data (0.7 Pmolec cm−2). While a part of the biases and dispersion may be due to representativeness differences such as different area averaging and measurement times, it is known that errors in the S5P tropospheric columns exist due to shortcomings in the (horizontally coarse) a priori profile representation in the TM5-MP chemical transport model used in the S5P retrieval and, to a lesser extent, to the treatment of cloud effects and aerosols. Although considerable differences (up to 2 Pmolec cm−2 and more) are observed at single ground-pixel level, the near-real-time (NRTI) and offline (OFFL) versions of the S5P NO2 operational data processor provide similar NO2 column values and validation results when globally averaged, with the NRTI values being on average 0.79 % larger than the OFFL values.

Details

ISSN :
18678548
Volume :
14
Database :
OpenAIRE
Journal :
Atmospheric Measurement Techniques
Accession number :
edsair.doi...........451f0c0e3d1d07928e0e77f05b9709ec
Full Text :
https://doi.org/10.5194/amt-14-481-2021