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Suitability of different multivariate analysis methods for monitoring leaf N accumulation in winter wheat using in situ hyperspectral data

文献类型: 外文期刊

作者: Guo, Bin-Bin 1 ; Feng, Ya-Lan 1 ; Ma, Chao 1 ; Zhang, Jun 1 ; Song, Xiao 3 ; Wang, Meng-Yuan 1 ; Sheng, De-Hui 1 ; Feng, Wei 2 ; Jiao, Nian-yuan 1 ;

作者机构: 1.Henan Univ Sci & Technol, Coll Agron, Luoyang 471023, Peoples R China

2.Henan Agr Univ, Key Lab Regulating & Controlling Crop Growth & Dev, Minist Educ, 15 Longzihu Coll Dist, Zhengzhou 450046, Henan, Peoples R China

3.Henan Acad Agr Sci, Inst Plant Nutrient & Environm Resources, Zhengzhou 450002, Peoples R China

关键词: Winter wheat; Hyperspectral reflectance; Leaf nitrogen accumulation; Spectral transformation techniques; Multivariate analysis

期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:6.757; 五年影响因子:6.817 )

ISSN: 0168-1699

年卷期: 2022 年 198 卷

页码:

收录情况: SCI

摘要: Leaf nitrogen accumulation (LNA) is an important indicator of crop growth, and the real-time and nondestructive estimation of LNA by hyperspectral remote sensing is crucial for crop N management. In this study, five field experiments were conducted over four successive years at three ecological sites (Xinyang, Zhengzhou and Zhoukou) in Henan, China, incorporating different N amounts and wheat varieties. The canopy spectral data were obtained by a ground-based spectrometer, and the original spectral reflectance (R) was transformed using continuum removal (CR), first-derivative reflectance (FDR) and inverse-log reflectance (log (1/R)) methods. The effective bands of the above four transformed reflectance data were selected by the variable importance in projection (VIP) scores of the partial least square regression method (PLSR). Then, four multivariate regression methods (PLSR, stepwise multiple linear regression (SMLR), extreme learning machine (ELM) and support vector machine (SVM)) were used to develop an optimal forecasting model for LNA in winter wheat. The results show that FDR spectral data had the best comprehensive performance and were a better method for spectral data preprocessing. In the comparison of different nonparametric algorithms, the SVM model performed the best using the full wavelengths, in which R(cal/val)( )(2)and RMSEcal/val were 0.927-0.963/0.899-0.925 and 0.725-1.066/ 1.161-1.331 g m(-2), respectively. The characteristic bands of FDR were mainly distributed in the visible light and red edge regions (445, 501, 546, 683, 747 and 771 nm, respectively), and these effective bands were consistent under different field conditions. The SVM regression method using the effective wavelengths of FDR exhibited excellent performance for LNA prediction with R-val(2) = 0.875 and RMSEval = 1.294. In addition, the FDR-PLSRSVM model produced satisfactory inversion results under different field conditions. The accuracy of the filling period was better than that of the reviving-anthesis growth period, which might be due to diminished N dilution and stable canopy structure during the reproductive stage. R2val and RMSEval of the FDR-PLSR-SVM model during the filling period were 0.914 and 1.156 g m(-2) in Xinyang, 0.825 and 1.542 g m(-2) in Zhengzhou and 0.796 and 1.902 g m(-2) in Zhoukou, respectively. Considering the advantages of simple and efficient computer calculations, the FDR-PLSR-SVM algorithm is strongly recommended to predict the LNA in winter wheat. This study provides a reference basis for the selection of effective wavelengths for N nutrition diagnosis by unmanned aerial vehicles and satellite remote sensing in the future.

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