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A new crop yield forecasting model based on satellite measurements applied across the Indus Basin, Pakistan

机译:一种基于卫星测量的新作物产量预报模型,应用于巴基斯坦印度河盆地

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摘要

Three existing models are coupled to assess crop development and forecast yield in the largest contiguous irrigation network in the world: the Indus Basin in Pakistan. Monteith's model is used for the calculation of absorbed photosynthetically active radiation (APAR), the Carnegie Institution Stanford model is used for determining the light use efficiency, and the surface energy balance algorithm for land (SEBAL) is used to describe the spatio-temporal variability in land wetness conditions. The new model requires a crop identification map and some standard meteorological measurements as inputs. The conversion of above ground dry biomass into crop yield has been calibrated through harvest indices and the values obtained are compared with the international literature. The computations were executed in a GIS environment using 20 satellite measurements of the advanced very high resolution radiometer (AVHRR) to cover an annual crop rotation cycle. The validation with district data revealed a root mean square error of 525, 616, 551 and 13,484 kg ha(-1) for wheat, rice, cotton and sugarcane yield, respectively. The model performs satisfactorily for wheat, rice and sugarcane, and poorly for cotton. It is expected that the accuracy of the model applied to 1.1 km pixels decreases with the increasing number of crops occurring within a given pixel. Although AVHRR is basically too coarse a resolution for field scale crop yield estimations, the results provides yield predictions to policy makers in Pakistan with a spatial detail that is better than the traditional district level data. The gaps between the average and the maximum yield are 1075 and 1246 kg ha(-1) for wheat and rice, respectively. Future work should rely on the integration of high and low resolution images to estimate field scale crop yields.
机译:现有的三个模型结合起来,用于评估世界上最大的连续灌溉网络:巴基斯坦的印度河流域中的作物生长并预测产量。使用Monteith模型计算吸收的光合有效辐射(APAR),使用Carnegie Institution Stanford模型确定光利用效率,使用土地表面能平衡算法(SEBAL)描述时空变化在土地潮湿的条件下。新模型需要作物识别图和一些标准气象测量值作为输入。通过收获指数对地上干生物量向作物产量的转化进行了校准,并将获得的值与国际文献进行了比较。计算是在GIS环境中使用先进的超高分辨率辐射计(AVHRR)进行的20次卫星测量来执行的,以涵盖年度作物轮换周期。区域数据的验证显示,小麦,水稻,棉花和甘蔗的根均方差分别为525、616、551和13,484 kg ha(-1)。该模型对小麦,大米和甘蔗的表现令人满意,而对棉花的表现较差。可以预期,应用于给定像素的1.1 km像素的模型的精度会随着作物数量的增加而降低。尽管AVHRR基本上对于田间规模的农作物产量估算而言过于粗糙,但结果为巴基斯坦的决策者提供了比传统地区水平数据更好的空间细节的产量预测。小麦和水稻的平均产量与最大产量之间的差距分别为1075和1246 kg ha(-1)。未来的工作应依靠高分辨率和低分辨率图像的集成来估计田间规模的农作物产量。

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