Estimating leaf nitrogen concentration considering unsynchronized maize growth stages with canopy hyperspectral technique
文献类型: 外文期刊
作者: Wen, Peng-Fei 1 ; He, Jia 2 ; Ning, Fang 1 ; Wang, Rui 1 ; Zhang, Yuan-Hong 1 ; Li, Jun 1 ;
作者机构: 1.Northwest A&F Univ, Coll Agron, Yangling 712100, Shaanxi, Peoples R China
2.Henan Acad Agr Sci, Inst Agr Econ & Informat, Zhengzhou 450002, Henan, Peoples R China
关键词: Maize; Two-band optimal combination algorithms; Partial least squares regression; Leaf nitrogen concentration; Spectral analysis
期刊名称:ECOLOGICAL INDICATORS ( 影响因子:4.958; 五年影响因子:5.846 )
ISSN: 1470-160X
年卷期: 2019 年 107 卷
页码:
收录情况: SCI
摘要: Accurate monitoring of the leaf nitrogen concentration (LNC) in maize can provide a fundamental basis for effective N management. In recent decades, many spectral indices and algorithms can accurately estimate the crop N status during different growth stages of maize. However, the effect of unsynchronized maize growth stages on these spectral models is rarely considered. The objectives of this study were to verify the predictive ability of the published vegetation indices (VIs), the partial least squares (PLS) regression and the two-band optimal combinations algorithms, and to determine the most accurate method for assessing the LNC of unsynchronized growth stages in maize. Canopy raw and first-derivative reflectance (FDR) spectra, and destructive measurements of the maize LNC were collected in 2016-2018 in different ecological areas, unsynchronized growth stages, cultivars, plant densities, and N rates. The published VIs and new 2-band VIs and their band combinations varied across different growth stages and were not affected by unsynchronized growth stages. The red-edge chlorophyll index (CIred edge), which was identified across growth stages, performed quite well for LNC estimation, but performed unsatisfactorily when compared to the new 2-band VIs that were developed in this study. The best spectral index of the green or red and red-edge or near-infrared band combination based on FDR spectra had a good diagnostic effect for LNC of maize across the four growth stages, in which the novel normalized difference spectral indices (NDSI) effect was optimal in the V9 (9-leaf stage), VT (tasseling stage) and R1 (silking stage) stage and the novel ratio spectral indices (RSI) was the best in the R3 (milk stage) stage. Compared to PLS regression based on raw full-range hyperspectral data, the PLS regression for estimating LNC across four growth stages based on FDR full-range hyperspectral data showed a higher accuracy, with an average coefficient of determination (r(val)(2)) of 0.87 and average root mean square error (RMSEval) of 0.18. In addition, the average r(val)(2) for the PLS regression based on selected FDR wavelengths increased by 2.40% and the average RMSEval decreased by 14.8%, compared with the best performing VIs during the four growth stages. It is concluded that the best 2-band VIs and the PLS regression based on selected FDR wavelengths provide a useful explorative tool for estimating LNC of maize across years, ecological areas, and unsynchronized growth stages.
- 相关文献
作者其他论文 更多>>
-
Comparison of the chemical composition of non-shattering and shattering sesame varieties grown in the Huang-Huai region of China
作者:Chang, Yun-Long;Qin, Zhi;Wang, Rui;Liu, Hua-Min;Chang, Yun-Long;Qin, Zhi;Wang, Rui;Liu, Hua-Min;Mei, Hong-Xian;Duan, Ying-Hui;Zhang, Shao-Ze
关键词:Sesame seed; Non -shattering sesame varieties; Nutritional value; Chemical composition
-
Improvement of Winter Wheat Aboveground Biomass Estimation Using Digital Surface Model Information Extracted from Unmanned-Aerial-Vehicle-Based Multispectral Images
作者:Guo, Yan;He, Jia;Zhang, Huifang;Wei, Panpan;Jing, Yuhang;Yang, Xiuzhong;Zhang, Yan;Wang, Laigang;Zheng, Guoqing;Guo, Yan;He, Jia;Zhang, Huifang;Wei, Panpan;Jing, Yuhang;Yang, Xiuzhong;Zhang, Yan;Zheng, Guoqing;Guo, Yan;Yang, Xiuzhong;Zhang, Yan;Zheng, Guoqing;Shi, Zhou;Wang, Laigang
关键词:aboveground biomass; UAV; height; transferability; BP neural network; machine learning
-
Characterization of aroma-active compounds in sesame hulls at different roasting temperatures by SAFE and GC-O-MS
作者:Wang, Rui;Wu, Lin-Xuan;Guo, Bing-Xin;Zhao, Peng-Hao;Yin, Wen -Ting;Liu, Hua -Min;Wang, Rui;Wu, Lin-Xuan;Guo, Bing-Xin;Zhao, Peng-Hao;Yin, Wen -Ting;Liu, Hua -Min;Mei, Hong-Xian;Duan, Ying-Hui
关键词:Sesame hull; Roast; Aroma-active compounds; Organoleptic evaluation; Flavor
-
Composition of sesame hull oil and its effects on flavour and quality of sesame oil
作者:Wang, Rui;Guo, Bing-Xin;Li, Xiao-Yu;Peng, Jin-Qiao;Liu, Yi-Tong;Chang, Yun-Long;Liu, Hua-Min;Wang, Rui;Guo, Bing-Xin;Li, Xiao-Yu;Peng, Jin-Qiao;Liu, Yi-Tong;Chang, Yun-Long;Liu, Hua-Min;Wei, Wen-Xing;Wen, Xin-Yu;Zhang, Hong-Yu;Liu, Hong-Wei
关键词:Components; lipid; quality; volatile compound
-
Comprehensive Transcriptome and Metabolome Characterization of Peony 'Coral Sunset' Petals Provides Insights into the Mechanism of Pigment Degradation
作者:Zhang, Hechen;Yuan, Xin;Wang, Rui;Wang, Limin;Gao, Jie;Wang, Huijuan;Li, Yanmin;Fu, Zhenzhu
关键词:anthocyanins; carotenoids; high-throughput sequencing; Paeonia lactiflora; pigment degradation
-
Infection phase-dependent dynamics of the viral and host N6-methyladenosine epitranscriptome in the lifecycle of an oncogenic virus in vivo
作者:Zhuang, Guoqing;Zhao, Xuyang;Jin, Jiaxin;Zhu, Xiaojing;Wang, Rui;Zhai, Yunyun;Lu, Wenlong;Sun, Aijun;Zhang, Gaiping;Zhuang, Guoqing;Zhao, Xuyang;Jin, Jiaxin;Zhu, Xiaojing;Wang, Rui;Zhai, Yunyun;Lu, Wenlong;Sun, Aijun;Zhang, Gaiping;Liao, Yifei;Teng, Man;Luo, Jun;Zhang, Gaiping;Teng, Man;Luo, Jun;Zhang, Gaiping;Teng, Man;Yao, Yongxiu;Nair, Venugopal;Yao, Yongxiu;Nair, Venugopal;Yao, Wen;Zhang, Gaiping
关键词:epitranscriptome; N6-methyladenosine (m(6)A); oncogenic viruses; tumorigenesis
-
Comparative transcriptome analysis of leaves of sour jujube seedlings under salt stress
作者:Lyu, Ruiheng;Wu, Cuiyun;Lyu, Ruiheng;Wu, Cuiyun;Wang, Rui;Bao, Yajing;Guo, Peng
关键词:Ziziphus jujuba Mill; Seedling leaf development; Transcription factors; Raffinose family oligosaccharides