K. Holmlund, The utilization of statistical properties of satellite-derived atmosphericmotion vectors to derive quality indicators, WEATHER FOR, 13(4), 1998, pp. 1093-1104
The extraction of atmospheric motion vectors (AMVs) from cloud and moisture
features from successive geostationary satellite images is an established
and important data source for numerical weather prediction (NWP). So far th
e extraction of AMVs has been confined to the main synoptic times only, whi
ch grossly underutilizes the potential of these satellite-derived data. The
advent of four-dimensional variational assimilation techniques provides th
e opportunity to utilize data derived at asynoptic times. This will enhance
the capabilities of geostationary satellite systems that can provide conti
nuous and near-real time observations. The new assimilation schemes are abl
e to digest data representing various scales and with variable quality, whi
ch further enhances the usefulness of the satellite data. In order to fully
exploit the AMVs derived with satellite data, it is imperative to accurate
ly assess the quality and representativeness of individual wind vectors and
to provide this information to the NWP centers as an integral part of the
observations in near real time. The required high production and disseminat
ion frequency cannot be met if manual intervention is required; hence, the
emphasis has to be on fully automated schemes. This paper will describe the
automatic quality control scheme implemented at EUMETSAT. It is based on t
he statistical properties of the derived AMVs and it provides a quality ind
icator (QI), describing the expected quality of every individual vector The
derived QIs are currently disseminated together with the derived vectors.
The paper will also provide validation results based on collocated radioson
de statistics and report on first experiences by ECMWF in utilizing the QIs
.