The new Radiosounding HARMonization (RHARM) dataset of homogenized
radiosounding temperature, humidity and wind profiles with
uncertainties. Part I: dataset description and characterisation.
Abstract
Observational records are more often than not influenced by residual
non‐climatic factors which must be detected and adjusted for prior to
their usage. Moreover, measurement uncertainties should be properly
quantified and validated. In this work we present a novel approach,
named RHARM (Radiosounding HARMonization), to provide a homogenized
dataset of temperature, humidity and wind profiles along with an
estimation of the measurement uncertainties for 700 radiosounding
stations globally. The RHARM method has been used to adjust twice daily
(0000 and 1200 UTC) radiosonde data holdings at 16 pressure levels from
1000 to 10 hPa from 1978 to the present from the Integrated Global
Radiosonde Archive (IGRA). Relative humidity (RH) data are limited to
250 hPa. The applied adjustments are interpolated to all reported
significant levels. RHARM is the first dataset to provide homogenized
time series of temperature, relative humidity and wind profiles
alongside an estimation of the observational uncertainty for each
observation at each pressure level.
The comparison of RHARM and unadjusted profiles highlights a median
temperature warmer by 0.6 K in the boreal hemisphere, while in the
tropics RHARM is cooler by 0.1 K. For RH, the difference is -2.1%,
while in the tropics it is reduced to 0.3%. For wind speed, adjustments
largely improve the data homogeneity locally. Analysis of decadal trends
for temperature, RH and winds highlights increased the geographical
coherency of trends.
In a companion paper, the performances of the RHARM dataset are assessed
through comparison with the reanalysis, satellite and other homogenized
radiosonde datasets.