Spatial Rice Yield Estimation Based on MODIS and Sentinel-1 SAR Data and ORYZA Crop Growth Model
Articolo
Data di Pubblicazione:
2018
Abstract:
Crop insurance is a viable solution to reduce the vulnerability of smallholder farmers to
risks from pest and disease outbreaks, extreme weather events, and market shocks that threaten their
household food and income security. In developing and emerging countries, the implementation of
area yield-based insurance, the form of crop insurance preferred by clients and industry, is constrained
by the limited availability of detailed historical yield records. Remote-sensing technology can help
to fill this gap by providing an unbiased and replicable source of the needed data. This study is
dedicated to demonstrating and validating the methodology of remote sensing and crop growth
model-based rice yield estimation with the intention of historical yield data generation for application
in crop insurance. The developed system combines MODIS and SAR-based remote-sensing data
to generate spatially explicit inputs for rice using a crop growth model. MODIS reflectance data
were used to generate multitemporal LAI maps using the inverted Radiative Transfer Model (RTM).
SAR data were used to generate rice area maps using MAPScape-RICE to mask LAI map products
for further processing, including smoothing with logistic function and running yield simulation
using the ORYZA crop growth model facilitated by the Rice Yield Estimation System (Rice-YES).
Results from this study indicate that the approach of assimilating MODIS and SAR data into a crop
growth model can generate well-adjusted yield estimates that adequately describe spatial yield
distribution in the study area while reliably replicating official yield data with root mean square error,
RMSE, of 0.30 and 0.46 t ha?1 (normalized root mean square error, NRMSE of 5% and 8%) for the 2016
spring and summer seasons, respectively, in the Red River Delta of Vietnam, as evaluated at district
level aggregation. The information from remote-sensing technology was also useful for identifying
geographic locations with peculiarity in the timing of rice establishment, leaf growth, and yield level,
and thus contributing to the spatial targeting of further investigation and interventions needed to
reduce yield gaps.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
rice yield; leaf area index; LAI; remote sensing; MODIS; synthetic aperture radar; SAR; Sentinel-1; ORYZA crop growth model
Elenco autori:
Boschetti, Mirco; Busetto, Lorenzo
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