al
RAINFALL ESTIMATION USING SATELLITE DATA FOR PARAÍBA DO SUL BASIN
(BRAZIL)
Palmeira, F. L. B.*, C. A. Morales ^, G. B. Franca ©, L. Landau ?
“ Department of Civil Engineering, COPPE, Universidade Federal do Rio de Janeiro , Rio de Janeiro, Brazil
felipepalmeira@acd.ufrj.br, landau@lamce.ufrj.br
? Department of Meteorology, IAG, Universidade de Sáo Paulo, Sáo Paulo, Brazil
morales@model.iag.usp.br
* Department of Meteorology, IGEO, Universidade Federal do Rio de Janeiro, Rio de Janeiro, Brazil
gutem@acd.ufrj.br
KEY WORDS: Meteorology, Hydrology, Precipitation, Estimation, Satellite, Algorithms, Infrared, and Temperature.
ABSTRACT:
This work presents a self-consistent algorithm for near real-time rainfall estimation via infrared Geostationary Operational
Environmental Satellite (GOES) (each 4 hour) data based on a validation simultaneous dataset from Precipitation Radar (PR)
onboard the Tropical Rainfall Measuring Mission (TRMM) satellite, GOES and lightning data, for the basin of Paraíba do Sul river.
The dataset corresponds the period from September of 1998 to March of 2000. The rainfall estimation methodology was developed
by Morales and Anagnostou (2003) and has been adapted for the proposed of this work and it is based on following assumptions: (1)
lightning is correlated with the presence of precipitation and ice particles that are associated with deep convective nucleus; (2) the
precipitation area and its convective portion are related to the cloud and lightning areas of a precipitating system; and (3) lightning
and no-lightning clouds exhibit different precipitation characteristics. The aforementioned database was used to analyse and
understand the main physical characteristics of the different types of raining systems which act in the study area. Results are
presented and discussed.
1. INTRODUCTION
Information on the spatial and temporal variability of global
precipitation is of fundaméntal importance to applications
ranging from hydrologic engineering to climate change
research. This paper presents an algorithm developed for near
real-time retrieval of instantaneous surface rainfall over a
region of Brazil using information from an geo-stationary
satellite infrared observations, and adjacent rainfall
measurements from the first space-borne precipitation radar
(PR) onboard the Tropical Rainfall ' Measuring Mission
(TRMM ) satellite (Theon, 1994), and lightning data. This study
is formulated under the hypotheses that: (1) lightning is
correlated with the presence of precipitation sized ice particles
that are associated with deep convective cores: this observation
can improve the identification of convective rain area; (2) the
precipitation area and its convective portion are related to the
cloud and lightning areas of a precipitating system; and (3)
lightning and lightning free clouds exhibit different
precipitation characteristics.
The relation of lightning to precipitation has been the subject of
various precipitation remote sensing and climatology studies.
Workman and Reynold (1949) related flash rates to convective
rain fluxes, and suggested that she frequency of lightning may
be a measure of convective activity. Goodman (1990)
developed a relationship between lightning frequency and
rainfall intensity for systems in Florida. Similarly, Buechler et
al. (1994) demonstrated a linear relationship between rainfall
and lightning activity for Florida thunderstorms and Tappia et
al. (1998) estimated convective rainfall rate from rainfall-
lightning ratios using the Melbourne, Florida, WSR-88D radar.
Satellite infrared (IR) images have been used to retrieve rainfall
at large spatial and temporal scales, and for delineation of rain
areas in cloud systems (Arkin and Meisner, 1987). Adler and
Negri (1988) developed a technique to distinguish convective
and stratiform precipitating systems based on the temperature
gradients evaluated around the minimum temperature in the
cloud clusters. Recently, Vicente et al. (1998) presented an
auto-estimator IR technique that uses additional information of
precipitable water and relative humidity from a numerical
weather prediction model. These IR rainfall estimation methods
have deficiencies associated with the presence of thin non-
precipitating cirrus clouds and non-raining cold Mesoscale
Convective System (MCS) cloud shields. Anagnostou et al.
(1999) in an effort to minimize this uncertainty used a
statistically adjusted IR technique with microwave sensors and
showed that the area within a cloud cluster whose temperature
is at or below the most frequent temperature in that cluster is
well-correlated with rain area. They were also able to improve
the convective and stratiform rain area delineation in those
precipitating systems. Despite those efforts on improving IR
algorithms, there is considerable uncertainty in the estimates
since the relation between cloud-top longwave IR brightness
temperature and the underlying surface rainfall is complex and
is based on indirect physical relationships. Morales et al.
(1997), and Morales and Angnostou, (2003) have shown that
lightning measurements associated with active convection in the
clouds can provide reliable delineation of the convective cores,
which would lead to improvements in the convective rain
estimation.
This paper presents a lightning-IR-rainfall algorithm that
consists of procedures for estimating rain area and its
convective/stratiform portions for clouds with lightning (LTG)
and lightning free (NLTG). Convective and stratiform rainfall
rates are related to lightning rates and IR brightness
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