In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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NDVI (MODIS SENSOR) RESPONSE TO INTERANNUAL VARIABILITY OF
RAINFALL AND EVAPOTRANSPIRATION IN A SOYBEAN PRODUCING REGION,
SOUTHERN BRAZIL
A. Giarolla a , W. E. Baethgen; b , P. Ceccato b
Institute) Nacional de Pesquisas Espaciais, Centro de Ciências do Sistema Terrestre (CCST/INPE), Av. dos
Astronautas, 1758, Sào José dos Campos-SP, 12227-010, email: angelica.giarolla@cptec.inpe.br.
b International Research Institute for Climate and Society (IRI), The Earth Institute, Columbia University, Lamont
Campus, Palisades, New York, USA, email: baethgen@iri.columbia.edu; pceccato@iri.columbia.edu
KEY WORDS: soybean (Glycine Max, L. Merr), NDVI, remote sensing, water balance, GIS.
ABSTRACT:
This study aimed at evaluating the response of the Normalized Difference Vegetation Index - NDVI (MODIS sensor, TERRA
satellite) of soybean to interannual variability of rainfall and évapotranspiration in Campos Gerais, a region of the state of Parana in
southern Brazil. Landsat TM 5 and 7 images were selected for analyzing the spatial soybean field distribution for the region from
2000/01 to 2006/07 and to identify soybean fields. We then identified 175 pixels (250 x 250m) that contained only soybean fields
(“pure-pixels”) based on the soybean maps obtained with the Landsat TM images. The next step was to extract the NDVI values for
these soybean pure-pixels and to analyze the NDVI spectral curves considering the soybean phenology. Data from nearby
meteorological stations were obtained and used to calculate the soil water balance for soybean fields in 5 locations distributed in the
Campos Gerais region. To obtain actual évapotranspiration values, the water balance was calculated for each year, and for the same
period covering the entire soybean growing season. Anomaly values were calculated for each year to verify the interannual rainfall
variability. Linear regression models were adjusted between NDVI and i) rainfall and ii) actual évapotranspiration for all time series.
Analysis of the evolution of NDVI values allowed identifying the soybean growing season (November to March) and also the dry
season for this region according to rainfall anomaly values. Statistical analyses showed that actual évapotranspiration presented best
agreement with soybean NDVI in relation to rainfall, probably due to the fact that this variable integrates information of rainfall,
temperature and soil water holding capacity for the entire study period.
1 INTRODUCTION
Crops can suffer damage from excess or lack rainfall and
investigate this variability in its frequency of occurrence over
a crop season becomes essential for agricultural planning
systems. Several studies have been made about early warning
systems, based on seasonal and interannual climate forecasts
(Guillevic, et al, 2002; Nobre et al., 2006; Meinke and
Stone, 2005; Ogallo et al., 2008). An objective evaluation
system of weather variability as well as the improvement of
crop monitoring capabilities for yield prediction can provide
knowledge to mitigate weather impacts. Climatic variability
plays a major role in promoting meteorological conditions
that deviate substantially from mean conditions, including
weather extreme events (Seiler et al, 2007). Crop growth,
development and yield are affected by climatic variability via
linear and nonlinear responses to weather variables (Semenov
and Porter, 1995). According to Baethgen (1997) agricultural
systems which are currently subject to extreme climatic
interannual variability (drought, flood, storms, etc.) are likely
to become even more vulnerable under the most commonly
expected scenarios of climate change (i.e. increased
temperatures, increased rainfall variability).
Evapotranspiration (ET) is an essential component of the
energy and water budgets in grassland and agricultural
ecosystems (Allen et al., 1998) and understanding the
processes that affect ET at different temporal scales and
under a variety of environmental conditions is important in
crop modeling production. In general, remote sensing
techniques can not measure evaporation or évapotranspiration
directly. However, Engman (1995) mentions that remote
sensing does have two potentially very important roles in
estimating evapotranspiration: i) to try establish a empirical
relationships between remote sensing data and ET to larger
areas, including those areas where measured meteorological
data may be sparse; and ii) remotely sensed measurements
may be used to measure variables in the energy and moisture
balance models of ET (Bastiaanssen, 2000). Tucker et al.,
(2001) report that the use of decadal NDVI time series has
improved the study of interannual variation in vegetation.
Currently, Suzuki et al. (2007) examined interannual NDVI
data and its relation to ET in northern Asia and significant
positive correlations were found between NDVI and ET
anomaly interannual variation over vegetated areas. The
objective of this study was to evaluate NDVI response to
interannual variability of rainfall and evapotranspiration
during the entire soybean season for the period 2000-2007 in
Campos Gerais region, Southern Brazil.
2. STUDY AREA AND DATA
2.1 Study area
Campos Gerais is a region located in southern Brazil, limited
geographically by the coordinates 23°45'00";
25°50'00"South and 49°10'00"; 51°25'00"West.
Agriculture is the principal land use in the region and the
three main crops are soybean, maize and dry bean. The
highest yields for a short duration soybean cultivar are
obtained when planted in October and November and in the
southern part of this region, many farmers usually start
planting in mid-October (Heinemann et al. 2002). Soybean
cycle lasts 110 days in average and the harvest occurs
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