The Passive Microwave Neural Network Precipitation Retrieval (PNPR) for the Cross-track Scanning ATMS Radiometer
Abstract
Data di Pubblicazione:
2015
Abstract:
The passive microwave (PMW) cross-track scanning
radiometers, originally developed for temperature and
humidity soundings, have shown great capabilities to
provide a significant contribution in the precipitation
monitoring (in terms of measurement quality and
spatial/temporal coverage). The Passive microwave
Neural network Precipitation Retrieval (PNPR)
algorithm for cross-track scanning radiometers,
originally developed for the Advanced Microwave
Sounding Unit/Microwave Humidity Sounder (AMSUA/
MHS) radiometers (on board the European MetOp
and U.S. NOAA satellites), was recently newly designed
to exploit the Advanced Technology Microwave
Sounder (ATMS) on board the Suomi-NPP satellite and
the future JPSS satellites.
The PNPR-ATMS algorithm, based on the Artificial
Neural Network (ANN) approach, is intended to be also
easily tailored to the future Microwave Sounder (MWS)
onboard the MetOp-Second Generation (MetOp-SG)
satellites. The main PNPR-ATMS algorithm
improvements are the design and implementation of a
new ANN able to manage the information derived from
the additional ATMS channels (respect to the AMSUA/
MHS radiometer) and a new screening procedure for
not-precipitating pixels.
One of the main goals of the research is to achieve
maximum consistency of the retrieved surface
precipitation from the different cross-track
radiometers orbiting around the globe. To this
purpose, both the PNPR algorithms are based on the
same physical foundation. The PNPR is optimized for
the European and the African area. The neural network
was trained using a cloud-radiation database built
upon 94 cloud-resolving simulations over Europe and
the Mediterranean and over the African area. A
Radiative Transfer Modeling System has been used to
compute simulated satellite TB vectors consistent with
the ATMS channel frequencies, viewing angles, and
view-angle dependent IFOV sizes along the scan
projections.
As opposed to other ANN precipitation retrieval
algorithms, PNPR uses a unique ANN that retrieves the
surface precipitation rate for all types of surface
backgrounds represented in the training database, i.e.,
land (vegetated or arid), ocean, snow/ice or coast. This
approach prevents different precipitation estimates
from being inconsistent with one another when an
observed precipitation system extends over two or
more types of surfaces. As input data, the PNPR
algorithm incorporates the TBs from selected ATMS
channels, and various additional TBs-derived variables.
Ancillary geographical/geophysical inputs (i.e., latitude,
terrain height, surface type, season) are also
considered during the training phase. The PNPR
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algorithm outputs consist of both the surface
precipitation rate (along with the information on
precipitation phase: liquid, mixed, solid) and a pixelbased
quality index.
We will illustrate the main features of the PNPR
algorithm and will show some results of a verification
study over Europe and Africa. The verification is based
on the available ground-based radar and/or rain gauge
network observations (over the European area), and on
the Tropical Rainfall Measuring Mission Precipitation
Radar (TRMM-PR) (over the African area). The
NASA/JAXA Global Precipitation Measurement (GPM)
Dual frequency Precipitation Radar (DPR) products are
used as further reference. Moreover, the precipitation
retrievals obtained from different PMW cross-track
radiometers will be shown to evaluate the consistency
among the different products. The PNPR algorithm
aims at contributing towards the full exploitation of all
cross-track and conically scanning PMW radiometers
available in the NASA/JAXA Global Precipitation
Measurement (GPM) mission era for global monitoring
of precipitation.
Tipologia CRIS:
04.02 Abstract in Atti di convegno
Keywords:
Neural Network PNPR ATMS Passive microwave GPM Precipitation
Elenco autori:
Marra, ANNA CINZIA; Petracca, Marco; Dietrich, Stefano; Panegrossi, Giulia; Sano', Paolo; Casella, Daniele
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