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Phenologically-tuned MODIS NDVI-based production anomaly estimates for Zimbabwe

机译:基于物态调整的基于MODIS NDVI的津巴布韦生产异常估计

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For thirty years, simple crop water balance models have been used by the early warning community to monitor agricultural drought. These models estimate and accumulate actual crop evapotranspiration, evaluating environmental conditions based on crop water requirements. Unlike seasonal rainfall totals, these models take into account the phenology of the crop, emphasizing conditions during the peak grain filling phase of crop growth. In this paper we describe an analogous metric of crop performance based on time series of Moderate Resolution Imaging Spectroradiometer (MODIS) Normalized Difference Vegetation Index (NDVI) imagery. A special temporal filter is used to screen for cloud contamination. Regional NDVI time series are then composited for cultivated areas, and adjusted temporally according to the timing of the rainy season. This adjustment standardizes the NDVI response vis-A-vis the expected phenological response of maize. A national time series index is then created by taking the cropped-area weighted average of the regional series. This national time series provides an effective summary of vegetation response in agricultural areas, and allows for the identification of NDVI green-up during grain filling. Onset-adjusted NDVI values following the grain filling period are well correlated with U.S. Department of Agriculture production figures, possess desirable linear characteristics, and perform better than more common indices such as maximum seasonal NDVI or seasonally averaged NDVI. Thus, just as appropriately calibrated crop water balance models can provide more information than seasonal rainfall totals, the appropriate agro-phenological filtering of NDVI can improve the utility and accuracy of space-based agricultural monitoring.
机译:三十年来,预警界已使用简单的作物水分平衡模型来监测农业干旱。这些模型估计并累积实际的作物蒸散量,根据作物的需水量评估环境条件。与季节性降雨总量不同,这些模型考虑了作物的物候特性,强调了作物生长的峰值籽粒灌浆阶段的条件。在本文中,我们基于中等分辨率成像光谱仪(MODIS)归一化植被指数(NDVI)图像的时间序列描述了一种类似的农作物性能指标。一个特殊的时间过滤器用于筛选云污染。然后将耕地的区域NDVI时间序列合成,并根据雨季的时间在时间​​上进行调整。这种调整使NDVI响应相对于A相对于玉米的预期物候响应标准化。然后,通过获取区域序列的裁剪区域加权平均值来创建国家时间序列指数。这个国家时间序列提供了农业地区植被响应的有效摘要,并允许在灌浆过程中识别NDVI绿化。籽粒充实期后的发病前调整NDVI值与美国农业部的生产数据有很好的相关性,具有理想的线性特征,并且比其他常见指标(例如最大季节性NDVI或季节性平均NDVI)表现更好。因此,正如适当校准的作物水分平衡模型可以提供比季节性降雨总量更多的信息一样,对NDVI进行适当的农业物候学过滤可以提高基于空间的农业监测的实用性和准确性。

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