Abstract

Attaining reliable and timely agricultural estimates is very important everywhere, and in Brazil, due to its characteristics, this is especially true. In this study, estimations of crop production were made based on the temporal profiles of the Enhanced Vegetation Index (EVI) obtained from Moderate Resolution Imaging Spectroradiometer (MODIS) images. The objective was to evaluate the coupled model (CM) performance of crop area and crop yield estimates based solely on MODIS/EVI as input data in Rio Grande do Sul State, which is characterized by high variability in seasonal soybean yields, due to different crop development conditions. The resulting production estimates from CM were compared to official agricultural statistics of Brazilian Institute of Geography and Statistics (IBGE) and the National Company of Food Supply (CONAB) at different levels from 2000/2001 to 2010/2011 crop years. Results obtained with CM indicate that its application is able to generate timely production estimates for soybean both at municipality and local levels. Validation estimates with CM at State level obtained R2 = 0.95. Combining all cropping years at municipality level, estimates were highly correlated to official statistics from IBGE, with R2 = 0.91 and RMSD = 10,840 tons. Spatially interpolated comparisons of yield maps obtained from the CM estimates and IBGE data also showed visual similarity in their spatial distribution. Local level comparisons were performed and presented R2 = 0.95. Implications of this work point out that time-series analysis of production estimates are able to provide anticipated spatial information prior to the soybean harvest.

Highlights

  • Agricultural monitoring and forecast is a major issue for agricultural market, in order to expand the management capacity in several levels of social and government organization [1]

  • Brazil is currently considered as a world’s granary, and it plays an important role in global markets as a main producer of agricultural commodeties, official agricultural statistics released by two Brazilian agencies, namely CONAB (Companhia Nacional de Abastecimento—National Company of Food Supply) and IBGE (Instituto Brasileiro de Geografia e Estatística —Brazilian Institute of Geography and Statistics), suffer from two main issues: 1) municipality statistics are not timely available, but nearly eighteen months after the end of the soybean season; and 2) there is a confidence issue, because the methodology used is partly subjective and do not present an associated error measurement to estimates

  • The aim of this study is to evaluate the Coupled Model (CM) performance, which is entirely based on Enhanced Vegetation Index (EVI)/ Moderate Resolution Imaging Spectroradiometer (MODIS) images, to estimate soybean production in Rio Grande do Sul (RS hereafter) at State and municipal level, prior to the crop harvest

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Summary

Introduction

Agricultural monitoring and forecast is a major issue for agricultural market, in order to expand the management capacity in several levels of social and government organization [1]. Efforts to harmonize remote sensing-based crop monitoring systems are being carried out in the GEO-GLAM (Global Agriculture Monitoring) project in order to continue providing agricultural statistics at dif-. Brazil is currently considered as a world’s granary, and it plays an important role in global markets as a main producer of agricultural commodeties, official agricultural statistics released by two Brazilian agencies, namely CONAB (Companhia Nacional de Abastecimento—National Company of Food Supply) and IBGE (Instituto Brasileiro de Geografia e Estatística —Brazilian Institute of Geography and Statistics), suffer from two main issues: 1) municipality statistics are not timely available, but nearly eighteen months after the end of the soybean season; and 2) there is a confidence issue, because the methodology used is partly subjective and do not present an associated error measurement to estimates Open Access IJG A.

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