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Characterization of pasture biophysical properties and the impact of grazing intensity using remotely sensed data
Authors:Izaya Numata  Dar A Roberts  Josh Schimel  Francisco C Leonidas
Affiliation:a Department of Geography, University of California, Santa Barbara, CA 93106, USA
b Department of Ecology, Evolution, and Marine Biology, University of California Santa Barbara, CA 93106, USA
c Departamento de Agronomia, ULBRA-Centro Universitário Luterano de Ji-Paraná, Ji-Praná, RO, Brazil
d EMBRAPA/CEPAFRO, Porto Velho, RO, Brazil
e Instituto Nacional de Pesquisas Espaciais, São José dos Campos, SP, Brazil
Abstract:Remote sensing has the potential of improving our ability to map and monitor pasture degradation. Pasture degradation is one of the most important problems in the Amazon, yet the manner in which grazing intensity, edaphic conditions and land‐use age impact pasture biophysical properties, and our ability to monitor them using remote sensing is poorly known. We evaluate the connection between field grass biophysical measures and remote sensing, and investigate the impact of grazing intensity on pasture biophysical measures in Rondônia, in the Brazilian Amazon. Above ground biomass, canopy water content and height were measured in different pasture sites during the dry season. Using Landsat Thematic Mapper (TM) data, four spectral vegetation indices and fractions derived from spectral mixture analysis, i.e., Non‐Photosynthetic Vegetation (NPV), Green Vegetation (GV), Soil, Shade, and NPV + Soil, were calculated and compared to field grass measures. For grazed pastures under dry conditions, the Normalized Difference Infrared Index (NDII5 and NDII7), had higher correlations with the biophysical measures than the Normalized Difference Vegetation Index (NDVI) and the Soil‐Adjusted Vegetation Index (SAVI). NPV had the highest correlations with all field measures, suggesting this fraction is a good indicator of pasture characteristics in Rondônia. Pasture height was correlated to the Shade fraction. A conceptual model was built for pasture biophysical change using three fractions, i.e., NPV, Shade and GV to characterize possible pasture degradation processes in Rondônia. Based upon field measures, grazing intensity had the most significant impact on pasture biophysical properties compared to soil order and land‐use age. The impact of grazing on pastures in the dry season could be potentially measured by using remotely sensed measures such as NPV.
Keywords:Pasture degradation  Grass biomass  Spectral mixture analysis  Grazing intensity  
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