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Forecasting corn yield at the farm level in Brazil based on the FAO-66 approach and soil-adjusted vegetation index (SAVI)

机译:基于FAO-66方法和土壤调整后植被指数的巴西农业水平预测玉米产量(Savi)

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Crop yield forecasting at the field level is essential for decision-making and the prediction of agricultural economic returns for farmers. Thus, this study evaluated the performance of a methodology for corn yield prediction in irrigated fields in the western region of the state of Bahia, Brazil. This methodology integrates a time series of the basal crop coefficient (Kcb) estimated from the soil-adjusted vegetation index (SAVI) into a simple model based on the water productivity as presented in the FAO-66 manual. In this context, an extensive field-level dataset of 52 center pivot fields of cultivated with corn was used for four consecutive growing seasons (2013 to 2016). Surface reflectance images from the Landsat series were used to calculate the SAVI. The methodology performance was assessed through RMSE, RRMSE, MBE, MAE, and r(2). The results revealed that the difference between the predicted and actual yield values ranged between -12.2% and 18.8% but that the majority of the estimates remained between -10% and 10%, considering that a single harvest index (HI) was used for the hybrids cultivated in the growing seasons of 2014, 2015 and 2016. After a new reanalysis (by grouping the similar hybrids and using specific HIs), the performance of the predictions increased, especially for the Pioneer hybrids; the majority of the differences between the predicted yield values and the measured yield values remained between -5% and 5%. The results of this research showed that it is essential to work with different HIs when considering different hybrids and years under different weather conditions.
机译:现场水平的作物产量预测对于农民的决策和农业经济回报的预测至关重要。因此,该研究评估了巴西巴伊亚国家西部地区灌溉领域玉米产量预测方法的性能。该方法基于FAO-66手册中提出的水生产率,将从土壤调整后植被指数(SAVI)估计的基底作物系数(KCB)的时间序列集成到简单的模型中。在这种情况下,用玉米栽培的52个中心枢轴场的广泛的场级数据集用于四个连续的生长季节(2013年至2016年)。来自Landsat系列的表面反射率图像用于计算Savi。通过RMSE,RRMSE,MBE,MAE和R(2)评估方法表现。结果表明,预测和实际产量值之间的差异在-12.2%和18.8%之间,但大多数估计值在-10%和10%之间仍然在-10%和10%之间,考虑到单一收获指数(HI)用于在2014年的生长季节培养的杂交种植2014年,2015年和2016年。在新的再分析(通过对类似的杂种和使用他的特定)进行分析后,预测的表现增加,特别是对于先驱杂种;预测产量值与测定产量值之间的大部分差异均为-5%和5%。该研究的结果表明,在考虑在不同天气条件下的不同杂种和年份时,在不同的情况下与他不同。

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