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Using NDVI Time Series Curve Change Rate to Estimate Winter Wheat Yield

机译:使用NDVI时间序列曲线变化率来估计冬小麦产量

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An algorithm uses the Normalized Difference Vegetation Index (NDVI) time series curve to compute NDVI change rate (CR) for every 8-day over a period (2008-2018) from Moderate-resolution Imaging Spectroradiometer (MODIS) data. The indices of CR variables within the winter wheat growing season were correlated with the end of the season winter wheat yield. A strong correlation (Pearson correlation coefficient = -0.48) was found in day of year 153-161 (filling) and the CR_153-161 was used to build a univariate regression model. Stepwise multiple linear regression was then used and then 16 CR variables were selected to construct the multiple regression model. The two models are good at predicting yield. The prediction results of two models were compared with official agricultural statistics showing that the RMSE = 578.21 kg ha-1/457.38 kg ha-1 and MRE=18.54%/14.56% Remote sensing of NDVI-CR, therefore, is a valuable tool for estimating winter wheat yield well in advance of harvest.
机译:算法使用归一化差异植被指数(NDVI)时间曲线(NDVI)时间序列曲线从中间隙分辨率成像光谱辐射计(MODIS)数据的时间(2008-2018)计算NDVI变化率(CR)每8天。冬小麦生长季节中Cr变量的指数与冬季小麦产量的末端相关。在一年的第153-161(填充)中发现了强烈的相关性(Pearson相关系数= -0.48),并使用CR_153-161来构建单变量回归模型。然后使用逐步多元线性回归,然后选择16个CR变量来构建多元回归模型。这两种型号擅长预测产量。将两种模型的预测结果与官方农业统计数据进行比较,显示RMSE = 578.21公顷 -1 /457.38 kg ha. -1 因此,MRE = 18.54%/ 14.56%NDVI-CR的遥感,因此是一种有价值的工具,用于在收获之前估算冬小麦产量。

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