Assimilating remotely sensed cloud optical thickness into a mesoscale model

The Advanced Regional Prediction System, a mesoscale atmospheric model, is applied to simulate the month of June 2006 with a focus on the near surface air temperatures around Paris. To improve the simulated temperatures which show errors up to 10 K during a day on which a cold front passed Paris, a...

Full description

Bibliographic Details
Main Authors: D. Lauwaet, K. De Ridder, P. Pandey
Format: Article
Language:English
Published: Copernicus Publications 2011-10-01
Series:Atmospheric Chemistry and Physics
Online Access:http://www.atmos-chem-phys.net/11/10269/2011/acp-11-10269-2011.pdf
id doaj-dc81f31a2d444cdfa4d45af7b8ff2643
record_format Article
spelling doaj-dc81f31a2d444cdfa4d45af7b8ff26432020-11-24T23:44:00ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242011-10-011119102691028110.5194/acp-11-10269-2011Assimilating remotely sensed cloud optical thickness into a mesoscale modelD. LauwaetK. De RidderP. PandeyThe Advanced Regional Prediction System, a mesoscale atmospheric model, is applied to simulate the month of June 2006 with a focus on the near surface air temperatures around Paris. To improve the simulated temperatures which show errors up to 10 K during a day on which a cold front passed Paris, a data assimilation procedure to calculate 3-D analysis fields of specific cloud liquid and ice water content is presented. The method is based on the assimilation of observed cloud optical thickness fields into the Advanced Regional Prediction System model and operates on 1-D vertical columns, assuming that the horizontal background error covariance is infinite, i.e. an independent pixel approximation. The rationale behind it is to find vertical profiles of cloud liquid and ice water content that yield the observed cloud optical thickness values and are consistent with the simulated profile. Afterwards, a latent heat adjustment is applied to the temperature in the vertical column. Data from several meteorological stations in the study area are used to verify the model simulations. The results show that the presented assimilation procedure is able to improve the simulated 2 m air temperatures and incoming shortwave radiation significantly during cloudy days. The scheme is able to alter the position of the cloud fields significantly and brings the simulated cloud pattern closer to the observations. As the scheme is rather simple and computationally inexpensive, it is a promising new technique to improve the surface fields of retrospective model simulations for variables that are affected by the position of the clouds.http://www.atmos-chem-phys.net/11/10269/2011/acp-11-10269-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author D. Lauwaet
K. De Ridder
P. Pandey
spellingShingle D. Lauwaet
K. De Ridder
P. Pandey
Assimilating remotely sensed cloud optical thickness into a mesoscale model
Atmospheric Chemistry and Physics
author_facet D. Lauwaet
K. De Ridder
P. Pandey
author_sort D. Lauwaet
title Assimilating remotely sensed cloud optical thickness into a mesoscale model
title_short Assimilating remotely sensed cloud optical thickness into a mesoscale model
title_full Assimilating remotely sensed cloud optical thickness into a mesoscale model
title_fullStr Assimilating remotely sensed cloud optical thickness into a mesoscale model
title_full_unstemmed Assimilating remotely sensed cloud optical thickness into a mesoscale model
title_sort assimilating remotely sensed cloud optical thickness into a mesoscale model
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2011-10-01
description The Advanced Regional Prediction System, a mesoscale atmospheric model, is applied to simulate the month of June 2006 with a focus on the near surface air temperatures around Paris. To improve the simulated temperatures which show errors up to 10 K during a day on which a cold front passed Paris, a data assimilation procedure to calculate 3-D analysis fields of specific cloud liquid and ice water content is presented. The method is based on the assimilation of observed cloud optical thickness fields into the Advanced Regional Prediction System model and operates on 1-D vertical columns, assuming that the horizontal background error covariance is infinite, i.e. an independent pixel approximation. The rationale behind it is to find vertical profiles of cloud liquid and ice water content that yield the observed cloud optical thickness values and are consistent with the simulated profile. Afterwards, a latent heat adjustment is applied to the temperature in the vertical column. Data from several meteorological stations in the study area are used to verify the model simulations. The results show that the presented assimilation procedure is able to improve the simulated 2 m air temperatures and incoming shortwave radiation significantly during cloudy days. The scheme is able to alter the position of the cloud fields significantly and brings the simulated cloud pattern closer to the observations. As the scheme is rather simple and computationally inexpensive, it is a promising new technique to improve the surface fields of retrospective model simulations for variables that are affected by the position of the clouds.
url http://www.atmos-chem-phys.net/11/10269/2011/acp-11-10269-2011.pdf
work_keys_str_mv AT dlauwaet assimilatingremotelysensedcloudopticalthicknessintoamesoscalemodel
AT kderidder assimilatingremotelysensedcloudopticalthicknessintoamesoscalemodel
AT ppandey assimilatingremotelysensedcloudopticalthicknessintoamesoscalemodel
_version_ 1725500512274481152