...
首页> 外文期刊>Field Crops Research >Multivariate analysis of nitrogen content for rice at the heading stage using reflectance of airborne hyperspectral remote sensing
【24h】

Multivariate analysis of nitrogen content for rice at the heading stage using reflectance of airborne hyperspectral remote sensing

机译:利用机载高光谱遥感反射率对抽穗期水稻氮素含量进行多变量分析

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Airborne hyperspectral remote sensing was adapted to establish a general-purpose model for quantifying nitrogen content of rice plants at the heading stage using three years of data. There was a difference in dry mass and nitrogen concentration due to the difference in the accumulated daily radiation (ADR) and effective cumulative temperature (ECT). Because of these environmental differences, there was also a significant difference in nitrogen content among the three years. In the multiple linear regression (MLR) analysis, the accuracy (coefficient of determination: R-2, root mean square of error: RMSE and relative error: RE) of two-year models was better than that of single-year models as shown by R-2 >= 0.693, RMSE <= 1.405 g m(-2) and RE <= 9.136%. The accuracy of the three-year model was R-2 = 0.893, RMSE = 1.092 g m(-2) and RE = 8.550% with eight variables. When each model was verified using the other data, the range of RE for two-year models was similar or increased compared with that for single-year models. In the partial least square regression (PLSR) model for the validation, the accuracy of two-year models was also better than that of single-year models as R-2 >= 0.699, RMSE <= 1.611 g m(-2) and RE <= 13.36%. The accuracy of the three-year model was R-2 = 0.837, RMSE = 1.401 g m(-2) and RE = 11.23% with four latent variables. When each model was verified, the range of RE for two-year models was similar or decreased compared with that for single-year models. The similarities and differences of loading weights for each latent variable depending on hyperspectral reflectance might have affected the regression coefficients and the accuracy of each prediction model. The accuracy of the single-year MLR models was better than that of the single-year PLSR models. However, accuracy of the multi-year PLSR models was better than that of the multi-year MLR models. Therefore, PLSR model might be more suitable than MLR model to predict the nitrogen contents at the heading stage using the hyperspectral reflectance because PLSR models have more sensitive than MLR models for the inhomogeneous results. Although there were differences in the environmental variables (ADR and ECT), it is possible to establish a general-purpose prediction model for nitrogen content at the heading stage using airborne hyperspectral remote sensing
机译:机载高光谱遥感用于建立一个通用模型,该模型使用三年数据对抽穗期水稻植株的氮含量进行定量。由于累积日辐射(ADR)和有效累积温度(ECT)的差异,干质量和氮浓度存在差异。由于这些环境差异,三年之间的氮含量也存在显着差异。如图所示,在多元线性回归(MLR)分析中,两年模型的准确性(确定系数:R-2,均方根误差:RMSE和相对误差:RE)要优于一年模型。通过R-2> = 0.693,RMSE <= 1.405gm(-2)和RE <= 9.136%。三年模型的准确性为R-2 = 0.893,RMSE = 1.092 g m(-2),RE = 8.550%,具有八个变量。当使用其他数据验证每个模型时,两年模型的RE范围与一年模型相比相似或有所增加。在用于验证的偏最小二乘回归(PLSR)模型中,两年模型的准确性也优于一年模型,因为R-2> = 0.699,RMSE <= 1.611 gm(-2)和RE <= 13.36%。三年模型的准确性为R-2 = 0.837,RMSE = 1.401 g m(-2),RE = 11.23%,具有四个潜在变量。验证每个模型后,两年模型的RE范围与一年模型相比相似或有所减小。取决于高光谱反射率的每个潜在变量的加载权重的相似性和差异性可能已经影响了每个预测模型的回归系数和准确性。单一年份MLR模型的准确性优于单一年份PLSR模型的准确性。但是,多年PLSR模型的准确性要优于多年MLR模型。因此,PLSR模型可能比MLR模型更适合使用高光谱反射率来预测抽穗期的氮含量,因为PLSR模型比MLR模型对不均匀结果的敏感性更高。尽管环境变量(ADR和ECT)存在差异,但可以使用机载高光谱遥感建立抽穗期氮含量的通用预测模型

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号