Wavelet analysis of MODIS time series to detect expansion and intensification of row-crop agriculture in Brazil

نویسندگان

  • Gillian L. Galford
  • John F. Mustard
  • Jerry Melillo
  • Aline Gendrin
  • Carlos C. Cerri
  • Carlos E.P. Cerri
چکیده

Since 2000, the southwestern Brazilian Amazon has undergone a rapid transformation from natural vegetation and pastures to row-crop agricultural with the potential to affect regional biogeochemistry. The goals of this research are to assess wavelet algorithms applied to MODIS time series to determine expansion of row-crops and intensification of the number of crops grown. MODIS provides data from February 2000 to present, a period of agricultural expansion and intensification in the southwestern Brazilian Amazon. We have selected a study area near Comodoro, Mato Grosso because of the rapid growth of row-crop agriculture and availability of ground truth data of agricultural land-use history. We used a 90% power wavelet transform to create a wavelet-smoothed time series for five years of MODIS EVI data. From this wavelet-smoothed time series we determine characteristic phenology of single and double crops. We estimate that over 3200 km were converted from native vegetation and pasture to row-crop agriculture from 2000 to 2005 in our study area encompassing 40,000 km. We observe an increase of 2000 km of agricultural intensification, where areas of single crops were converted to double crops during the study period. © 2007 Elsevier Inc. All rights reserved.

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تاریخ انتشار 2008