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Model for predicting the nitrogen content of rice at panicle initiation stage using data from airborne hyperspectral remote sensing

机译:利用机载高光谱遥感数据预测水稻穗期氮素含量的模型

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摘要

Airborne hyperspectral remote sensing was used to provide data for a general-purpose model for predicting the nitrogen content of rice at panicle initiation stage using three years of data. There were significant differences between the vegetation data which were affected by the uptake of nitrogen from the soil depending on weather conditions. Therefore, the reflectance values obtained for one year may exhibit a different trend, due to the lack of vegetation. When the partial least squares regression (PLSR) models were estimated using all combinations of the three-year data, except for the model incorporating the data from 2005, correlation coefficients (r) were greater than 0.758, and the root mean squared error (RMSE) of prediction of the full-cross validation was less than 0.876 g m2. The accuracy of the 200320042005 model was determined using five latent variables (PCs), with r = 0.938 and RMSEP = 0.774 g m2. There were two different patterns for the regression coefficients associated with the NIR or red-edge regions. When the 20032004 model was validated using the data from 2005, the prediction error of the PLSR model was 1.050 g m2. This became 2.378 g m2 for the 20032005 model using the data from 2004 and 5.061 g m2 for the 20042005 model with the data from 2003. There were similarities and differences for each latent variable between the 20032004 model and the 200320042005 model. The 200320042005 model might be more suitable for use as a general-purpose model, because it is possible to consider and validate all of the three years data.
机译:机载高光谱遥感用于提供通用模型的数据,该模型使用三年数据来预测穗开始阶段水稻的氮含量。植被数据之间存在显着差异,受天气条件影响,这些数据受土壤中氮吸收的影响。因此,由于缺乏植被,一年获得的反射率值可能呈现出不同的趋势。当使用三年数据的所有组合来估计偏最小二乘回归(PLSR)模型时,除了包含2005年数据的模型之外,相关系数(r)均大于0.758,并且均方根误差(RMSE)全交叉验证的预测)小于0.876 g m2。使用五个潜变量(PC)确定200320042005模型的准确性,其中r = 0.938,RMSEP = 0.774 g m2。与NIR或红边区域相关的回归系数有两种不同的模式。当使用2005年的数据验证20032004模型时,PLSR模型的预测误差为1.050 g m2。使用2004年的数据,20032005模型的数据为2.378 g m2,使用20042005模型的数据与2003年的数据,数据为5.061 g m2。20032004模型和200320042005模型之间的每个潜在变量都存在异同。 200320042005模型可能更适合用作通用模型,因为可以考虑并验证所有三年数据。

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