Abstract

Abstract. A RPG-HATPRO ground-based microwave radiometer (MWR) was operated in a deep Alpine valley during the Passy-2015 field campaign. This experiment aims to investigate how stable boundary layers during wintertime conditions drive the accumulation of pollutants. In order to understand the atmospheric processes in the valley, MWRs continuously provide vertical profiles of temperature and humidity at a high time frequency, providing valuable information to follow the evolution of the boundary layer. A one-dimensional variational (1DVAR) retrieval technique has been implemented during the field campaign to optimally combine an MWR and 1 h forecasts from the French convective scale model AROME. Retrievals were compared to radiosonde data launched at least every 3 h during two intensive observation periods (IOPs). An analysis of the AROME forecast errors during the IOPs has shown a large underestimation of the surface cooling during the strongest stable episode. MWR brightness temperatures were monitored against simulations from the radiative transfer model ARTS2 (Atmospheric Radiative Transfer Simulator) and radiosonde launched during the field campaign. Large errors were observed for most transparent channels (i.e., 51–52 GHz) affected by absorption model and calibration uncertainties while a good agreement was found for opaque channels (i.e., 54–58 GHz). Based on this monitoring, a bias correction of raw brightness temperature measurements was applied before the 1DVAR retrievals. 1DVAR retrievals were found to significantly improve the AROME forecasts up to 3 km but mainly below 1 km and to outperform usual statistical regressions above 1 km. With the present implementation, a root-mean-square error (RMSE) of 1 K through all the atmospheric profile was obtained with values within 0.5 K below 500 m in clear-sky conditions. The use of lower elevation angles (up to 5°) in the MWR scanning and the bias correction were found to improve the retrievals below 1000 m. MWR retrievals were found to catch deep near-surface temperature inversions very well. Larger errors were observed in cloudy conditions due to the difficulty of ground-based MWRs to resolve high level inversions that are still challenging. Finally, 1DVAR retrievals were optimized for the analysis of the IOPs by using radiosondes as backgrounds in the 1DVAR algorithm instead of the AROME forecasts. A significant improvement of the retrievals in cloudy conditions and below 1000 m in clear-sky conditions was observed. From this study, we can conclude that MWRs are expected to bring valuable information into numerical weather prediction models up to 3 km in altitude both in clear-sky and cloudy-sky conditions with the maximum improvement found around 500 m. With an accuracy between 0.5 and 1 K in RMSE, our study has also proven that MWRs are capable of resolving deep near-surface temperature inversions observed in complex terrain during highly stable boundary layer conditions.

Highlights

  • Atmospheric boundary layer (ABL) observations of temperature and humidity profiles at a high temporal resolution are necessary for the improvement of numerical weather prediction (NWP) and for a better understanding of small-scale phenomena

  • In real time during the Passy-2015 field campaign, temperature profiles were retrieved from the microwave radiometer (MWR) measurements using linear regressions implemented within the HATPRO proprietary software

  • In order to evaluate the performance of the AROME model during the Passy-2015 experiment, Fig. 2 shows the time series of temperature profiles observed by radiosondes, retrieved from the HATPRO MWR by the Payerne linear regression coefficients and extracted from the AROME analyses during the first intensive observation periods (IOPs)

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Summary

Introduction

Atmospheric boundary layer (ABL) observations of temperature and humidity profiles at a high temporal resolution are necessary for the improvement of numerical weather prediction (NWP) and for a better understanding of small-scale phenomena. One-dimensional variational (1DVAR) retrievals have been used to retrieve in an optimal way temperature and humidity profiles by combining observations and an a priori estimate of the atmospheric state This a priori profile can be represented by a climatological profile based on radiosounding at an instrumented site (Löhnert et al, 2004, 2008) or a short-term forecast from a NWP model. A MWR has been deployed in a narrow Alpine valley (less than 5 km between the closest mountain slope and the instrument) with measurements going down to 5◦ elevation angle This is the first time 1DVAR retrievals are performed from a convective scale model in complex terrain during which large forecast errors are observed.

The Passy-2015 field campaign
HATPRO MWR
Ancillary data
Retrieval algorithm
NWP model
Settings
Evaluation of the AROME model during the Passy-2015 field campaign
Data screening
O–B analysis from AROME forecasts
O–B analysis from radiosondes
Background errors
Sensitivity of retrievals to elevation angles and bias correction
Sensitivity of retrievals to the a priori
Examples of temperature profiles
Conclusions
Full Text
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