Adam C. Povey
University of Oxford
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Publication
Featured researches published by Adam C. Povey.
Remote Sensing | 2016
Thomas Popp; Gerrit de Leeuw; Christine Bingen; C. Brühl; Virginie Capelle; A. Chédin; Lieven Clarisse; Oleg Dubovik; R. G. Grainger; Jan Griesfeller; A. Heckel; Stefan Kinne; Lars Klüser; Miriam Kosmale; Pekka Kolmonen; Luca Lelli; Pavel Litvinov; Linlu Mei; Peter R. J. North; Simon Pinnock; Adam C. Povey; Charles Robert; Michael Schulz; Larisa Sogacheva; Kerstin Stebel; Deborah Stein Zweers; G. E. Thomas; L. G. Tilstra; Sophie Vandenbussche; Pepijn Veefkind
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).
Applied Optics | 2012
Adam C. Povey; R. G. Grainger; Daniel M. Peters; Judith L. Agnew; David Rees
The overlap function of a Raman channel for a lidar system is retrieved by nonlinear regression using an analytic description of the optical system and a simple model for the extinction profile, constrained by aerosol optical thickness. Considering simulated data, the scheme is successful even where the aerosol profile deviates significantly from the simple model assumed. Application to real data is found to reduce by a factor of 1.4-2.0 the root-mean-square difference between the attenuated backscatter coefficient as measured by the calibrated instrument and a commercial instrument.
Atmospheric Measurement Techniques Discussions | 2017
Oliver Sus; Martin Stengel; Stefan Stapelberg; Gregory R. McGarragh; Caroline Poulsen; Adam C. Povey; Cornelia Schlundt; Gareth E. Thomas; Matthew W. Christensen; Simon Richard Proud; Matthias Jerg; R. G. Grainger; Rainer Hollmann
We present here the key features of the Community Cloud retrieval for CLimate (CC4CL) processing algorithm. We focus on the novel features of the framework: the optimal estimation approach in general, explicit uncertainty quantification through rigorous propagation of all known error sources into the final product, and the consistency of our long-term, multi-platform time series provided at various resolutions, from 0.5 to 0.02. By describing all key input data and processing steps, we aim to inform the user about important features of this new retrieval framework and its potential applicability to climate studies. We provide an overview of the retrieved and derived output variables. These are analysed for four, partly very challenging, scenes collocated with CALIOP (CloudAerosol lidar with Orthogonal Polarization) observations in the high latitudes and over the Gulf of Guinea–West Africa. The results show that CC4CL provides very realistic estimates of cloud top height and cover for optically thick clouds but, where optically thin clouds overlap, returns a height between the two layers. CC4CL is a unique, coherent, multiinstrument cloud property retrieval framework applicable to passive sensor data of several EO missions. Through its flexibility, CC4CL offers the opportunity for combining a variety of historic and current EO missions into one dataset, which, compared to single sensor retrievals, is improved in terms of accuracy and temporal sampling.
Journal of Climate | 2018
Sarah Sparrow; Richard J. Millar; K. Yamazaki; Neil Massey; Adam C. Povey; Andy Bowery; R. G. Grainger; David Wallom; Myles R. Allen
AbstractA very large ensemble is used to identify subgrid-scale parameter settings for the HadCM3 model that are capable of best simulating the ocean state over the recent past (1980–2010). A simpl...
ORA review team | 2012
Adam C. Povey; R. G. Grainger; Daniel M. Peters; Judith L. Agnew; David Rees
Lidars are ideally placed to investigate the effects of aerosol and cloud on the climate system due to their unprecedented vertical and temporal resolution. Dozens of techniques have been developed in recent decades to retrieve the extinction and backscatter of atmospheric particulates in a variety of conditions. These methods, though often very successful, are fairly ad hoc in their construction, utilising a wide variety of approximations and assumptions that makes comparing the resulting data products with independent measurements difficult and their implementation in climate modelling virtually impossible. As with its application to satellite retrievals, the methods of non-linear regression can improve this situation by providing a mathematical framework in which the various approximations, estimates of experimental error, and any additional knowledge of the atmosphere can be clearly defined and included in a mathematically ‘optimal’ retrieval method, providing rigorously derived error estimates. In addition to making it easier for scientists outside of the lidar field to understand and utilise lidar data, it also simplifies the process of moving beyond extinction and backscatter coefficients and retrieving microphysical properties of aerosols and cloud particles. Such methods have been applied to a prototype Raman lidar system. A technique to estimate the lidar’s overlap function using an analytic model of the optical system and a simple extinction profile has been developed. This is used to calibrate the system such that a retrieval of the profile extinction and backscatter coefficients can be performed using the elastic and nitrogen Raman backscatter signals.
Earth System Science Data | 2017
Martin Stengel; Stefan Stapelberg; Oliver Sus; Cornelia Schlundt; Caroline Poulsen; Gareth E. Thomas; Matthew W. Christensen; Cintia Carbajal Henken; Rene Preusker; Juergen Fischer; Abhay Devasthale; Ulrika Willén; Karl-Göran Karlsson; Gregory R. McGarragh; Simon Richard Proud; Adam C. Povey; R. G. Grainger; Jan Fokke Meirink; Artem Feofilov; Ralf Bennartz; Jedrzej S. Bojanowski; Rainer Hollmann
Atmospheric Measurement Techniques | 2015
Adam C. Povey; R. G. Grainger
Atmospheric Chemistry and Physics | 2017
Matthew W. Christensen; David Neubauer; Caroline Poulsen; Gareth E. Thomas; Gregory R. McGarragh; Adam C. Povey; Simon Richard Proud; R. G. Grainger
Earth System Science Data | 2017
Christopher J. Merchant; Frank Paul; Thomas Popp; Michael Ablain; Sophie Bontemps; Pierre Defourny; Rainer Hollmann; Thomas Lavergne; A. Laeng; Gerrit de Leeuw; Jonathan Mittaz; Caroline Poulsen; Adam C. Povey; Max Reuter; Shubha Sathyendranath; Stein Sandven; V. F. Sofieva; W. Wagner
Atmospheric Measurement Techniques | 2013
Adam C. Povey; R. G. Grainger; Daniel M. Peters; Judith L. Agnew