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91̽»¨
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Anu Dudhia

University Research Lecturer

Sub department

  • Atmospheric, Oceanic and Planetary Physics
Anu.Dudhia@physics.ox.ac.uk
Robert Hooke Building, room S50
  • About
  • Publications

Satellites and Satellite Remote Sensing

Chapter in Encyclopedia of Atmospheric Sciences, (2025) V3-224

Authors:

R Saunders, A Dudhia

Abstract:

Atmospheric temperature can be derived from satellite measurements using a variety of viewing geometries and wavelengths, by exploiting emission, absorption or scattering processes that depend directly on temperature or indirectly via atmospheric density. Temperature sounders, flown since the 1970s, are mostly nadir-viewing instruments that sense thermally emitted radiation in the infrared or microwave regions and use the spectral variation of atmospheric absorption to sound different depths in the atmosphere. Limb-viewing also allows profile information to be obtained directly from the viewing geometry but also requires the simultaneous retrieval of pressure. Occultation instruments usually measure density profiles from which temperature can be inferred. Another commonly used technique of the occultation of signals from the Global Navigation Satellite System is covered in a separate article.

Satellites and Satellite Remote Sensing | Temperature Soundings

Chapter in Reference Module in Earth Systems and Environmental Sciences, Elsevier (2024)

Authors:

Roger Saunders, Anu Dudhia

Level 2 processor and auxiliary data for ESA Version 8 final full mission analysis of MIPAS measurements on ENVISAT

Atmospheric Measurement Techniques Copernicus Publications 15:6 (2022) 1871-1901

Authors:

Piera Raspollini, Enrico Arnone, Flavio Barbara, Massimo Bianchini, Bruno Carli, Simone Ceccherini, Martyn P Chipperfield, Angelika Dehn, Stefano Della Fera, Bianca Maria Dinelli, Anu Dudhia, Jean-Marie Flaud, Marco Gai, Michael Kiefer, Manuel López-Puertas, David P Moore, Alessandro Piro, John J Remedios, Marco Ridolfi, Harjinder Sembhi, Luca Sgheri, Nicola Zoppetti

The ESA MIPAS/Envisat level2-v8 dataset: 10 years of measurements retrieved with ORM v8.22

Atmospheric Measurement Techniques Copernicus Publications 14:12 (2021) 7975-7998

Authors:

Bianca Maria Dinelli, Piera Raspollini, Marco Gai, Luca Sgheri, Marco Ridolfi, Simone Ceccherini, Flavio Barbara, Nicola Zoppetti, Elisa Castelli, Enzo Papandrea, Paolo Pettinari, Angelika Dehn, Anu Dudhia, Michael Kiefer, Alessandro Piro, Jean-Marie Flaud, Manuel López-Puertas, David Moore, John Remedios, Massimo Bianchini

The SPARC water vapour assessment II: profile-to-profile comparisons of stratospheric and lower mesospheric water vapour data sets obtained from satellites

Atmospheric Measurement Techniques European Geosciences Union 12:5 (2019) 2693-2732

Authors:

S Lossow, F Khosrawi, M Kiefer, KA Walker, JL Bertaux, L Blanot, JM Russell, EE Remsberg, JC Gille, T Sugita, CE Sioris, BM Dinelli, E Papandrea, P Raspollini, M García-Comas, GP Stiller, T Von Clarmann, Anu Dudhia, WG Read, GE Nedoluha, RP Damadeo, JM Zawodny, K Weigel, A Rozanov, F Azam, K Bramstedt, S Noel, JP Burrows, H Sagawa, Y Kasai, J Urban, P Eriksson, DP Murtagh, ME Hervig, C Högberg, DF Hurst, KH Rosenlof

Abstract:

Within the framework of the second SPARC (Stratosphere-troposphere Processes And their Role in Climate) water vapour assessment (WAVAS-II), profile-to-profile comparisons of stratospheric and lower mesospheric water vapour were performed by considering 33 data sets derived from satellite observations of 15 different instruments. These comparisons aimed to provide a picture of the typical biases and drifts in the observational database and to identify data-set-specific problems. The observational database typically exhibits the largest biases below 70 hPa, both in absolute and relative terms. The smallest biases are often found between 50 and 5 hPa. Typically, they range from 0.25 to 0.5 ppmv (5 % to 10 %) in this altitude region, based on the 50 % percentile over the different comparison results. Higher up, the biases increase with altitude overall but this general behaviour is accompanied by considerable variations. Characteristic values vary between 0.3 and 1 ppmv (4 % to 20 %). Obvious data-set-specific bias issues are found for a number of data sets. In our work we performed a drift analysis for data sets overlapping for a period of at least 36 months. This assessment shows a wide range of drifts among the different data sets that are statistically significant at the 2σ uncertainty level. In general, the smallest drifts are found in the altitude range between about 30 and 10 hPa. Histograms considering results from all altitudes indicate the largest occurrence for drifts between 0.05 and 0.3 ppmv decade−1. Comparisons of our drift estimates to those derived from comparisons of zonal mean time series only exhibit statistically significant differences in slightly more than 3 % of the comparisons. Hence, drift estimates from profile-to-profile and zonal mean time series comparisons are largely interchangeable. As for the biases, a number of data sets exhibit prominent drift issues. In our analyses we found that the large number of MIPAS data sets included in the assessment affects our general results as well as the bias summaries we provide for the individual data sets. This is because these data sets exhibit a relative similarity with respect to the remaining data sets, despite the fact that they are based on different measurement modes and different processors implementing different retrieval choices. Because of that, we have by default considered an aggregation of the comparison results obtained from MIPAS data sets. Results without this aggregation are provided on multiple occasions to characterise the effects due to the numerous MIPAS data sets. Among other effects, they cause a reduction of the typical biases in the observational database.

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