RTTOV-gb – adapting the fast radiative transfer model RTTOV for the assimilation of ground-based microwave radiometer observations
Ground-based microwave radiometers (MWRs) offer a new capability to provide continuous observations of the atmospheric thermodynamic state in the planetary boundary layer. Thus, they are potential candidates to supplement radiosonde network and satellite data to improve numerical weather prediction...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2016-08-01
|
Series: | Geoscientific Model Development |
Online Access: | http://www.geosci-model-dev.net/9/2721/2016/gmd-9-2721-2016.pdf |
id |
doaj-08d1d71e09b74d50856d6f6563768d19 |
---|---|
record_format |
Article |
spelling |
doaj-08d1d71e09b74d50856d6f6563768d192020-11-24T22:36:34ZengCopernicus PublicationsGeoscientific Model Development1991-959X1991-96032016-08-01982721273910.5194/gmd-9-2721-2016RTTOV-gb – adapting the fast radiative transfer model RTTOV for the assimilation of ground-based microwave radiometer observationsF. De Angelis0D. Cimini1J. Hocking2P. Martinet3S. Kneifel4CETEMPS, University of L'Aquila, L'Aquila, ItalyIMAA-CNR, Potenza, ItalyMet Office, Exeter, UKMétéo France – CNRM/GAME, Toulouse, FranceInstitute for Geophysics and Meteorology, University of Cologne, Cologne, GermanyGround-based microwave radiometers (MWRs) offer a new capability to provide continuous observations of the atmospheric thermodynamic state in the planetary boundary layer. Thus, they are potential candidates to supplement radiosonde network and satellite data to improve numerical weather prediction (NWP) models through a variational assimilation of their data. However in order to assimilate MWR observations, a fast radiative transfer model is required and such a model is not currently available. This is necessary for going from the model state vector space to the observation space at every observation point. The fast radiative transfer model RTTOV is well accepted in the NWP community, though it was developed to simulate satellite observations only. In this work, the RTTOV code has been modified to allow for simulations of ground-based upward-looking microwave sensors. In addition, the tangent linear, adjoint, and K-modules of RTTOV have been adapted to provide Jacobians (i.e., the sensitivity of observations to the atmospheric thermodynamical state) for ground-based geometry. These modules are necessary for the fast minimization of the cost function in a variational assimilation scheme. The proposed ground-based version of RTTOV, called RTTOV-gb, has been validated against accurate and less time-efficient line-by-line radiative transfer models. In the frequency range commonly used for temperature and humidity profiling (22–60 GHz), root-mean-square brightness temperature differences are smaller than typical MWR uncertainties (∼ 0.5 K) at all channels used in this analysis. Brightness temperatures (TBs) computed with RTTOV-gb from radiosonde profiles have been compared with nearly simultaneous and co-located ground-based MWR observations. Differences between simulated and measured TBs are below 0.5 K for all channels except for the water vapor band, where most of the uncertainty comes from instrumental errors. The Jacobians calculated with the K-module of RTTOV-gb have been compared with those calculated with the brute force technique and those from the line-by-line model ARTS. Jacobians are found to be almost identical, except for liquid water content Jacobians for which a 10 % difference between ARTS and RTTOV-gb at transparent channels around 450 hPa is attributed to differences in liquid water absorption models. Finally, RTTOV-gb has been applied as the forward model operator within a one-dimensional variational (1D-Var) software tool in an Observing System Simulation Experiment (OSSE). For both temperature and humidity profiles, the 1D-Var with RTTOV-gb improves the retrievals with respect to the NWP model in the first few kilometers from the ground.http://www.geosci-model-dev.net/9/2721/2016/gmd-9-2721-2016.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
F. De Angelis D. Cimini J. Hocking P. Martinet S. Kneifel |
spellingShingle |
F. De Angelis D. Cimini J. Hocking P. Martinet S. Kneifel RTTOV-gb – adapting the fast radiative transfer model RTTOV for the assimilation of ground-based microwave radiometer observations Geoscientific Model Development |
author_facet |
F. De Angelis D. Cimini J. Hocking P. Martinet S. Kneifel |
author_sort |
F. De Angelis |
title |
RTTOV-gb – adapting the fast radiative transfer model RTTOV for the
assimilation of ground-based microwave radiometer observations |
title_short |
RTTOV-gb – adapting the fast radiative transfer model RTTOV for the
assimilation of ground-based microwave radiometer observations |
title_full |
RTTOV-gb – adapting the fast radiative transfer model RTTOV for the
assimilation of ground-based microwave radiometer observations |
title_fullStr |
RTTOV-gb – adapting the fast radiative transfer model RTTOV for the
assimilation of ground-based microwave radiometer observations |
title_full_unstemmed |
RTTOV-gb – adapting the fast radiative transfer model RTTOV for the
assimilation of ground-based microwave radiometer observations |
title_sort |
rttov-gb – adapting the fast radiative transfer model rttov for the
assimilation of ground-based microwave radiometer observations |
publisher |
Copernicus Publications |
series |
Geoscientific Model Development |
issn |
1991-959X 1991-9603 |
publishDate |
2016-08-01 |
description |
Ground-based microwave radiometers (MWRs) offer a new capability to provide
continuous observations of the atmospheric thermodynamic state in the
planetary boundary layer. Thus, they are potential candidates to supplement
radiosonde network and satellite data to improve numerical weather prediction
(NWP) models through a variational assimilation of their data. However in
order to assimilate MWR observations, a fast radiative transfer model is
required and such a model is not currently available. This is necessary for
going from the model state vector space to the observation space at every
observation point. The fast radiative transfer model RTTOV is well accepted
in the NWP community, though it was developed to simulate satellite
observations only. In this work, the RTTOV code has been modified to allow
for simulations of ground-based upward-looking microwave sensors. In
addition, the tangent linear, adjoint, and K-modules of RTTOV have been
adapted to provide Jacobians (i.e., the sensitivity of observations to the
atmospheric thermodynamical state) for ground-based geometry. These modules
are necessary for the fast minimization of the cost function in a variational
assimilation scheme. The proposed ground-based version of RTTOV, called
RTTOV-gb, has been validated against accurate and less time-efficient
line-by-line radiative transfer models. In the frequency range commonly used
for temperature and humidity profiling (22–60 GHz), root-mean-square
brightness temperature differences are smaller than typical MWR uncertainties
(∼ 0.5 K) at all channels used in this analysis. Brightness
temperatures (TBs) computed with RTTOV-gb from radiosonde profiles have been
compared with nearly simultaneous and co-located ground-based MWR
observations. Differences between simulated and measured TBs are below 0.5 K
for all channels except for the water vapor band, where most of the
uncertainty comes from instrumental errors. The Jacobians calculated with the
K-module of RTTOV-gb have been compared with those calculated with the brute
force technique and those from the line-by-line model ARTS. Jacobians are
found to be almost identical, except for liquid water content Jacobians for
which a 10 % difference between ARTS and RTTOV-gb at transparent channels
around 450 hPa is attributed to differences in liquid water absorption
models. Finally, RTTOV-gb has been applied as the forward model operator
within a one-dimensional variational (1D-Var) software tool in an
Observing System Simulation Experiment (OSSE). For both temperature and
humidity profiles, the 1D-Var with RTTOV-gb improves the retrievals with
respect to the NWP model in the first few kilometers from the ground. |
url |
http://www.geosci-model-dev.net/9/2721/2016/gmd-9-2721-2016.pdf |
work_keys_str_mv |
AT fdeangelis rttovgbadaptingthefastradiativetransfermodelrttovfortheassimilationofgroundbasedmicrowaveradiometerobservations AT dcimini rttovgbadaptingthefastradiativetransfermodelrttovfortheassimilationofgroundbasedmicrowaveradiometerobservations AT jhocking rttovgbadaptingthefastradiativetransfermodelrttovfortheassimilationofgroundbasedmicrowaveradiometerobservations AT pmartinet rttovgbadaptingthefastradiativetransfermodelrttovfortheassimilationofgroundbasedmicrowaveradiometerobservations AT skneifel rttovgbadaptingthefastradiativetransfermodelrttovfortheassimilationofgroundbasedmicrowaveradiometerobservations |
_version_ |
1725719532898615296 |