Abstract
Abstract. We explore the potential of spaceborne radar (SR) observations
from the Ku-band precipitation radars onboard the Tropical Rainfall Measuring
Mission (TRMM) and Global Precipitation Measurement (GPM)
satellites as a reference to quantify the ground radar (GR) reflectivity
bias. To this end, the 3-D volume-matching algorithm proposed by
Schwaller and Morris (2011) is implemented and applied to 5 years
(2012–2016) of observations. We further extend the procedure by a framework
to take into account the data quality of each ground radar bin. Through these
methods, we are able to assign a quality index to each matching SR–GR
volume, and thus compute the GR calibration bias as a quality-weighted
average of reflectivity differences in any sample of matching GR–SR volumes.
We exemplify the idea of quality-weighted averaging by using the beam
blockage fraction as the basis of a quality index. As a result, we can
increase the consistency of SR and GR observations, and thus the precision of
calibration bias estimates. The remaining scatter between GR and SR
reflectivity as well as the variability of bias estimates between overpass
events indicate, however, that other error sources are not yet fully
addressed. Still, our study provides a framework to introduce any other
quality variables that are considered relevant in a specific context. The
code that implements our analysis is based on the wradlib open-source
software library, and is, together with the data, publicly available to
monitor radar calibration or to scrutinize long series of archived radar data
back to December 1997, when TRMM became operational.
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