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91̽»¨
Juno Jupiter image

Dr Adam Povey FRMetSoc FHEA

Visitor

Research theme

  • Climate physics

Sub department

  • Atmospheric, Oceanic and Planetary Physics

Research groups

  • Earth Observation Data Group
Adam.Povey@physics.ox.ac.uk
  • About
  • Teaching
  • Publications

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.

Uncertainty information in climate data records from Earth observation

Earth System Science Data 9:2 (2017) 511-527

Authors:

CJ Merchant, F Paul, T Popp, M Ablain, S Bontemps, P Defourny, R Hollmann, T Lavergne, A Laeng, G de Leeuw, J Mittaz, C Poulsen, AC Povey, M Reuter, S Sathyendranath, S Sandven, VF Sofieva, W Wagner

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

Atmospheric Chemistry and Physics Discussions (2017)

Authors:

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

Development, Production and Evaluation of Aerosol Climate Data Records from European Satellite Observations (Aerosol_cci)

Remote Sensing MDPI 8:5 (2016) 421-421

Authors:

T Popp, G de Leeuw, C Bingen, C Brühl, V Capelle, A Chedin, L Clarisse, O Dubovik, Roy Grainger, J Griesfeller, A Heckel, S Kinne, L Klüser, M Kosmale, P Kolmonen, L Lelli, P Litvinov, L Mei, P North, S Pinnock, Adam Povey, C Robert, M Schulz, L Sogacheva, K Stebel, D Stein Zweers, G Thomas, L Tilstra, S Vandenbussche, P Veefkind, M Vountas, Y Xue

Abstract:

Producing a global and comprehensive description of atmospheric aerosols requires integration of ground-based, airborne, satellite and model datasets. Due to its complexity, aerosol monitoring requires the use of several data records with complementary information content. This paper describes the lessons learned while developing and qualifying algorithms to generate aerosol Climate Data Records (CDR) within the European Space Agency (ESA) Aerosol_cci project. An iterative algorithm development and evaluation cycle involving core users is applied. It begins with the application-specific refinement of user requirements, leading to algorithm development, dataset processing and independent validation followed by user evaluation. This cycle is demonstrated for a CDR of total Aerosol Optical Depth (AOD) from two subsequent dual-view radiometers. Specific aspects of its applicability to other aerosol algorithms are illustrated with four complementary aerosol datasets. An important element in the development of aerosol CDRs is the inclusion of several algorithms evaluating the same data to benefit from various solutions to the ill-determined retrieval problem. The iterative approach has produced a 17-year AOD CDR, a 10-year stratospheric extinction profile CDR and a 35-year Absorbing Aerosol Index record. Further evolution cycles have been initiated for complementary datasets to provide insight into aerosol properties (i.e., dust aerosol, aerosol absorption).

Known and unknown unknowns: Uncertainty estimation in satellite remote sensing

Atmospheric Measurement Techniques European Geosciences Union 8:11 (2015) 4699-4718

Authors:

Adam Povey, Roy G Grainger

Abstract:

This paper discusses a best-practice representation of uncertainty in satellite remote sensing data. An estimate of uncertainty is necessary to make appropriate use of the information conveyed by a measurement. Traditional error propagation quantifies the uncertainty in a measurement due to well-understood perturbations in a measurement and in auxiliary data - known, quantified "unknowns". The under-constrained nature of most satellite remote sensing observations requires the use of various approximations and assumptions that produce non-linear systematic errors that are not readily assessed - known, unquantifiable "unknowns". Additional errors result from the inability to resolve all scales of variation in the measured quantity - unknown "unknowns". The latter two categories of error are dominant in under-constrained remote sensing retrievals, and the difficulty of their quantification limits the utility of existing uncertainty estimates, degrading confidence in such data. This paper proposes the use of ensemble techniques to present multiple self-consistent realisations of a data set as a means of depicting unquantified uncertainties. These are generated using various systems (different algorithms or forward models) believed to be appropriate to the conditions observed. Benefiting from the experience of the climate modelling community, an ensemble provides a user with a more complete representation of the uncertainty as understood by the data producer and greater freedom to consider different realisations of the data.

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