The Complex Refractive Index of Volcanic Ash Aerosol Retrieved From Spectral Mass Extinction

JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES 123:2 (2018) 1339-1350

Authors:

BE Reed, DM Peters, R McPheat, RG Grainger

Cloud property datasets retrieved from AVHRR, MODIS, AATSR and MERIS in the framework of the Cloud_cci project

Earth System Science Data Copernicus Publications 9:2 (2017) 881-904

Authors:

Martin Stengel, Stefan Stapelberg, Oliver Sus, C Schlundt, C Poulsen, G Thomas, M Christensen, CC Henken, R Preusker, J Fischer, A Devasthale, U Willen, K-G Karlsson, Gregory McGarragh, Simon Proud, Adam Povey, Roy Grainger, JF Meirink, A Feofilov, R Bennartz, JS Bojanowski, R Hollmann

Abstract:

New cloud property datasets based on measurements from the passive imaging satellite sensors AVHRR, MODIS, ATSR2, AATSR and MERIS are presented. Two retrieval systems were developed that include components for cloud detection and cloud typing followed by cloud property retrievals based on the optimal estimation (OE) technique. The OE-based retrievals are applied to simultaneously retrieve cloud-top pressure, cloud particle effective radius and cloud optical thickness using measurements at visible, near-infrared and thermal infrared wavelengths, which ensures spectral consistency. The retrieved cloud properties are further processed to derive cloud-top height, cloud-top temperature, cloud liquid water path, cloud ice water path and spectral cloud albedo. The Cloud_cci products are pixel-based retrievals, daily composites of those on a global equal-angle latitude–longitude grid, and monthly cloud properties such as averages, standard deviations and histograms, also on a global grid. All products include rigorous propagation of the retrieval and sampling uncertainties. Grouping the orbital properties of the sensor families, six datasets have been defined, which are named AVHRR-AM, AVHRR-PM, MODIS-Terra, MODIS-Aqua, ATSR2-AATSR and MERIS+AATSR, each comprising a specific subset of all available sensors. The individual characteristics of the datasets are presented together with a summary of the retrieval systems and measurement records on which the dataset generation were based. Example validation results are given, based on comparisons to well-established reference observations, which demonstrate the good quality of the data. In particular the ensured spectral consistency and the rigorous uncertainty propagation through all processing levels can be considered as new features of the Cloud_cci datasets compared to existing datasets. In addition, the consistency among the individual datasets allows for a potential combination of them as well as facilitates studies on the impact of temporal sampling and spatial resolution on cloud climatologies.

Cloud property datasets retrieved from AVHRR, MODIS, AATSR and MERIS in the framework of the Cloud_cci project

EARTH SYSTEM SCIENCE DATA 9:2 (2017) 881-904

Authors:

M Stengel, S Stapelberg, O Sus, C Schlundt, C Poulsen, G Thomas, M Christensen, CC Henken, R Preusker, J Fischer, A Devasthale, U Willen, K-G Karlsson, GR McGarragh, S Proud, AC Povey, RG Grainger, JF Meirink, A Feofilov, R Bennartz, JS Bojanowski, R Hollmann

Unveiling aerosol-cloud interactions Part 1: Cloud contamination in satellite products enhances the aerosol indirect forcing estimate

Atmospheric Chemistry and Physics Discussions (2017) 1-21

Authors:

MW Christensen, D Neubauer, C Poulsen, G Thomas, G McGarragh, AC Povey, S Proud, RG Grainger

Unveiling aerosol–cloud interactions – Part 1: Cloud contamination in satellite products enhances the aerosol indirect forcing estimate

Atmospheric Chemistry and Physics European Geosciences Union 17:21 (2017) 13151-13164

Authors:

Matthew Christensen, D Neubauer, CA Poulsen, GE Thomas, Gregory R McGarragh, AC Povey, Simon R Proud, Roy G Grainger

Abstract:

Increased concentrations of aerosol can enhance the albedo of warm low-level cloud. Accurately quantifying this relationship from space is challenging due in part to contamination of aerosol statistics near clouds. Aerosol retrievals near clouds can be influenced by stray cloud particles in areas assumed to be cloud-free, particle swelling by humidification, shadows and enhanced scattering into the aerosol field from (3-D radiative transfer) clouds. To screen for this contamination we have developed a new cloud–aerosol pairing algorithm (CAPA) to link cloud observations to the nearest aerosol retrieval within the satellite image. The distance between each aerosol retrieval and nearest cloud is also computed in CAPA.

Results from two independent satellite imagers, the Advanced Along-Track Scanning Radiometer (AATSR) and Moderate Resolution Imaging Spectroradiometer (MODIS), show a marked reduction in the strength of the intrinsic aerosol indirect radiative forcing when selecting aerosol pairs that are located farther away from the clouds (−0.28±0.26 W m−2) compared to those including pairs that are within 15 km of the nearest cloud (−0.49±0.18 W m−2). The larger aerosol optical depths in closer proximity to cloud artificially enhance the relationship between aerosol-loading, cloud albedo, and cloud fraction. These results suggest that previous satellite-based radiative forcing estimates represented in key climate reports may be exaggerated due to the inclusion of retrieval artefacts in the aerosol located near clouds.