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Estimating crop yields by integrating the FAO crop specific water balance model with real-time satellite data and ground-based ancillary data

机译:通过将粮农组织特定作物的水平衡模型与实时卫星数据和地面辅助数据相结合来估算作物产量

摘要

The broad objective of this research was to develop a spatial model which provides both timely and quantitative regional maize yield estimates for real-time Early Warning Systems (EWS) by integrating satellite data with groundbased ancillary data. The Food and Agriculture Organization (FAO) Crop Specific Water Balance (CSWB) model was modified by using the real-time spatial data that include: dekad (ten-day) estimated rainfall (RFE) and Normalized Difference Vegetation Index (NDVI) composites derived from the METEOSAT and NOAA-AVHRR satellites, respectively; ground-based dekad potential evapo-transpiration (PET) data and seasonal estimated area-planted data provided by the Government of Kenya (GoK). A Geographical Information System (GIS) software was utilized to: drive the crop yield model; manage the spatial and temporal variability of the satellite images; interpolate between ground-based potential evapotranspiration and rainfall measurements; and import ancillary data such as soil maps, administrative boundaries, etc.. In addition, agro-ecological zones, length of growing season, and crop production functions, as defined by the FAO, were utilized to estimate quantitative maize yields. The GIS-based CSWB model was developed for three different resolutions: agro-ecological zone (AEZ) polygons; 7.6-kilometer pixels; and 1.1-kilometer pixels. The model was validated by comparing model production estimates from archived satellite and agro-meteorological data to historical district maize production reports from two Kenya government agencies, the Ministry of Agriculture (MoA) and the Department of Resource Surveys and Remote Sensing (DRSRS). For the AEZ analysis, comparison of model district maize production results and district maize production estimates from the MoA (1989-1997) and the DRSRS (1989-1993) revealed correlation coefficients of 0.94 and 0.93, respectively. The comparison for the 7.6-kilometer analysis showed correlation coefficients of 0.95 and 0.94, respectively. Comparison of results from the 1.1-kilometer model with district maize production data from the MoA (1993-1997) gave a correlation coefficient of 0.94. These results indicate the 7.6-kilometer pixel-by-pixel analysis is the most favorable method. Recommendations to improve the model are finer resolution images for area planted, soil moisture storage, and RFE maps; and measuring the actual length of growing season from a satellite-derived Growing Degree Day product.
机译:这项研究的主要目标是开发一个空间模型,通过将卫星数据与地面辅助数据结合起来,为实时预警系统(EWS)提供及时和定量的区域玉米产量估算。粮食及农业组织(FAO)的作物特定水平衡(CSWB)模型通过使用实时空间数据进行了修改,这些数据包括:十天(十天)估计降雨量(RFE)和归一化植被指数(NDVI)复合物分别来自METEOSAT和NOAA-AVHRR卫星;肯尼亚政府(GoK)提供的地基十足潜在蒸发蒸腾量(PET)数据和按季节估算的按地区种植的数据。地理信息系统(GIS)软件用于:驱动农作物产量模型;管理卫星图像的时空变化;在地面潜在的蒸散量和降雨量之间进行插值;此外,还利用粮农组织定义的农业生态区,生长期长度和作物生产功能来估算定量的玉米单产。基于GIS的CSWB模型是针对三种不同的分辨率而开发的:农业生态区(AEZ)多边形; 7.6公里像素;和1.1公里像素。通过将来自存档的卫星和农业气象数据的模型产量估算值与肯尼亚两个政府机构,农业部(MoA)和资源调查与遥感部(DRSRS)的历史地区玉米产量报告进行比较,对模型进行了验证。对于AEZ分析,比较农业部(1989-1997年)和DRSRS(1989-1993年)的典型地区玉米产量结果和地区玉米产量估算值的相关系数分别为0.94和0.93。 7.6公里分析的比较显示相关系数分别为0.95和0.94。将1.1公里模型的结果与农业部(1993-1997)的地方玉米产量数据进行比较,得出的相关系数为0.94。这些结果表明7.6公里逐像素分析是最有利的方法。改善模型的建议是针对种植面积,土壤水分存储和RFE地图提供更高分辨率的图像;并通过卫星衍生的“生长度日”产品测量生长季节的实际长度。

著录项

  • 作者

    Reynolds Curt Andrew1960-;

  • 作者单位
  • 年度 1998
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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