Raphael Augusto das Chagas Noqueli CasariMarina Bilich NeumannWalter Quadros RibeiroDiogo OlivettiCássio Jardim TavaresLucas Felisberto PereiraMaria Lucrécia Gerosa RamosAndré Ferreira PereiraS. P. da Silva NetoHenrique Llacer Roig
Abstract Evapotranspiration (ET) is one of the most important processes in the hydrologic cycle, constituting the main responsible for water losses at the surface. Several evapotranspiration models use information from surface temperature and vegetation indices captured by remote sensors such as MODIS and LANDSAT to estimate the ETc value. The objective of this study is to apply SSEBop model to estimate ETc of soybean in a field experiment under four water regimes, using high-resolution multispectral and thermal images collected from remotely piloted aircraft (RPA). Surface temperature and NDVI maps were generated as sources for evapotranspiration estimation. From a Python script, spatial variability maps of ETc were generated at different phenological stages of the crop. The quality of the model for ETc estimates was performed by comparing the modeling results with leaf transpiration data measured in the field using an infrared gas analyzer, whose results showed a good correlation (R2 = 0.76). These results demonstrated the possibility of transferring a model originally developed for processing low to medium-resolution satellite images to high-resolution spatial-temporal images acquired by RPA with small adaptations in the original algorithm, generating great potential for new studies on an experimental and field scale.
Suyoung ParkDongryeol RyuSigfredo FuentesHoam ChungM.G. O’ConnellJunchul Kim
Diane Gomes CamposRodrigo Nogueira Martins
Srinivasa Rao PeddintiFloyid NicolasIael Raij‐HoffmanIsaya Kisekka