Marloes Penning de Vries
Max Planck Society
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Featured researches published by Marloes Penning de Vries.
Atmospheric Measurement Techniques | 2016
Holger Sihler; Peter Lübcke; R. Lang; Steffen Beirle; Martin de Graaf; Christoph Hörmann; Johannes Lampel; Marloes Penning de Vries; Julia Remmers; Ed Trollope; Yang Wang; Thomas Wagner
Knowledge of the field of view (FOV) of a remote sensing instrument is particularly important when interpreting their data and merging them with other spatially referenced data. Especially for instruments in space, information on the actual FOV, which may change during operation, may be difficult to obtain. Also, the FOV of ground-based devices may change during transportation to the field site, where appropriate equipment for the FOV determination may be unavailable. This paper presents an independent, simple and robust method to retrieve the FOV of an instrument during operation, i.e. the two-dimensional sensitivity distribution, sampled on a discrete grid. The method relies on correlated measurements featuring a significantly higher spatial resolution, e.g. by an imaging instrument accompanying a spectrometer. The method was applied to two satellite instruments, GOME-2 and OMI, and a ground-based differential optical absorption spectroscopy (DOAS) instrument integrated in an SO2 camera. For GOME-2, quadrangular FOVs could be retrieved, which almost perfectly match the provided FOV edges after applying a correction for spatial aliasing inherent to GOME-type instruments. More complex sensitivity distributions were found at certain scanner angles, which are probably caused by degradation of the moving parts within the instrument. For OMI, which does not feature any moving parts, retrieved sensitivity distributions were much smoother compared to GOME-2. A 2-D super-Gaussian with six parameters was found to be an appropriate model to describe the retrieved OMI FOV. The comparison with operationally provided FOV dimensions revealed small differences, which could be mostly explained by the limitations of our IFR implementation. For the ground-based DOAS instrument, the FOV retrieved using SO2-camera data was slightly smaller than the flat-disc distribution, which is assumed by the stateof-the-art correlation technique. Differences between both methods may be attributed to spatial inhomogeneities. In general, our results confirm the already deduced FOV distributions of OMI, GOME-2, and the ground-based DOAS. It is certainly applicable for degradation monitoring and verification exercises. For satellite instruments, the gained information is expected to increase the accuracy of combined products, where measurements of different instruments are integrated, e.g. mapping of high-resolution cloud information, incorporation of surface climatologies. For the SO2-camera community, the method presents a new and efficient tool to monitor the DOAS FOV in the field. Published by Copernicus Publications on behalf of the European Geosciences Union. 882 H. Sihler et al.: In-operation field-of-view retrieval (IFR)
Light, Energy and the Environment 2015 (2015), paper EM4A.3 | 2015
Thomas Wagner; Steffen Beirle; Johannes Lampel; Marloes Penning de Vries
We retrieve aerosol information from of satellite Ring effect observations from the OMI instrument. Aerosols influence the Ring effect because aerosols shield possible Raman scattering events on air molecules.
Atmospheric Chemistry and Physics | 2016
Jan Zörner; Marloes Penning de Vries; Steffen Beirle; Holger Sihler; P. R. Veres; J. Williams; Thomas Wagner
Atmospheric Chemistry and Physics | 2017
Jorge Saturno; Florian Ditas; Marloes Penning de Vries; Bruna A. Holanda; Mira L. Pöhlker; Samara Carbone; David Walter; Nicole Bobrowski; Joel Brito; Xuguang Chi; Alexandra Gutmann; Isabella Hrabe de Angelis; Luiz A. T. Machado; Daniel Moran-Zuloaga; Julian Rüdiger; Johannes Schneider; Christiane Schulz; Qiaoqiao Wang; Manfred Wendisch; Paulo Artaxo; Thomas Wagner; Ulrich Pöschl; Meinrat O. Andreae; Christopher Pöhlker
Atmospheric Measurement Techniques | 2016
Steffen Beirle; Christoph Hörmann; Patrick Jöckel; Song Liu; Marloes Penning de Vries; Andrea Pozzer; Holger Sihler; Pieter Valks; Thomas Wagner
Atmospheric Chemistry and Physics | 2016
Christoph Hörmann; Holger Sihler; Steffen Beirle; Marloes Penning de Vries; U. Platt; Thomas Wagner
Archive | 2014
Thomas Wagner; Marloes Penning de Vries; Jan Zörner; Steffen Beirle; Max Planck
Archive | 2011
Heinrich Bovensmann; Adrian Doicu; P. Stammes; Michel Van Roozendael; Christian von Savigny; Marloes Penning de Vries; Steffen Beirle; Thomas Wagner; Kelly Chance; Michael Buchwitz; Alexander A. Kokhanovsky; Andreas Richter; A. Rozanov; Vladimir V. Rozanov
Archive | 2010
Marloes Penning de Vries; Michael Grzegorski; Thomas Wagner
Archive | 2010
Thomas Wagner; Marloes Penning de Vries; Tim Deutschmann