Research on Fast Detecting Tomato Seedlings Nitrogen Content Based on NIR Characteristic Spectrum Selection
文献类型: 外文期刊
第一作者: Wu Jing-zhu
作者: Wu Jing-zhu;Wang Feng-zhu;Wang Li-li;Zhang Xiao-chao;Mao Wen-hua
作者机构:
关键词: Near-infrared spectroscopy;Characteristic spectrum;Selecting method;Tomato seedling;Nitrogen content
期刊名称:SPECTROSCOPY AND SPECTRAL ANALYSIS ( 影响因子:0.589; 五年影响因子:0.504 )
ISSN: 1000-0593
年卷期: 2015 年 35 卷 1 期
页码:
收录情况: SCI
摘要: In order to improve the accuracy and robustness of detecting tomato seedlings nitrogen content based on near-infrared spectroscopy (NIR), 4 kinds of characteristic spectrum selecting methods were studied in the present paper, i. e. competitive adaptive reweighted sampling (CARS), Monte Carlo uninformative variables elimination (MCUVE), backward interval partial least squares (BiPLS) and synergy interval partial least squares (SiPLS). There were totally 60 tomato seedlings cultivated at 10 different nitrogen-treatment levels (urea concentration from 0 to 120 mg(-1) L-1), with 6 samples at each nitrogen-treatment level. They are in different degrees of over nitrogen, moderate nitrogen, lack of nitrogen and no nitrogen status. Each sample leaves were collected to scan near-infrared spectroscopy from 12 500 to 3 600 cm(-1). The quantitative models based on the above 4 methods were established. According to the experimental result, the calibration model based on CARS and MCUVE selecting methods show better performance than those based on BiPLS and SiPLS selecting methods, but their prediction ability is much lower than that of the latter. Among them, the model built by BiPLS has the best prediction performance. The correlation coefficient (r), root mean square error of prediction (RMSEP) and ratio of performance to standard derivate (RPD) is 0. 952 7, O. 118 3 and 3. 291, respectively. Therefore, NIR technology combined with characteristic spectrum selecting methods can improve the model performance. But the characteristic spectrum selecting methods are not universal. For the built model based on single wavelength variables selection is more sensitive, it is more suitable for the uniform object. While the anti-interference ability of the model built based on wavelength interval selection is much stronger, it is more suitable for the uneven and poor reproducibility object. Therefore, the characteristic spectrum selection will only play a better role in building model, combined with the consideration of sample state and the model indexes.
分类号:
- 相关文献
作者其他论文 更多>>
-
Visualisation of Starch Distribution in Corn Seeds Based on Terahertz Time-Domain Spectral Reflection Imaging Technology
作者:Li Yang;Li Xiao-qi;Yang Jia-ying;Chen Yuan-yuan;Yu Le;Wu Jing-zhu;Sun Li-juan
关键词:Corn seeds; Terahertz time-domain spectral reflection imaging; Correlation coefficient imaging method; Moving window; Starch
-
Study on Relationship Between Photosynthetic Rate and Hyperspectral Indexes of Wheat Under Stripe Rust Stress
作者:Zhang Xiao-yan;Hou Xue-hui;Wang Meng;Wang Li-li;Liu Feng
关键词:Wheat; Stripe rust; Photosynthetic rate; Imaging hyperspectral; Estimating model
-
Expression profiles of Cry1Ab protein and its insecticidal efficacy against the invasive fall armyworm for Chinese domestic GM maize DBN9936
作者:Liang Jin-gang;Li Dong-yang;Wang Chen-yao;Zhang Xiu-jie;Zhang Dan-dan;Zhao Sheng-yuan;Gao Yu;Wu Kong-ming;Xiao Yu-tao;Xu Dong;Yang Yi-zhong;Li Guo-ping;Wang Li-li;Yang Xue-qing;Yuan Hai-bin;Liu Jian
关键词:fall armyworm; genetically modified maize; DBN9936; Cry1Ab expression; control efficacy
-
Non-Destructive Identification of the Heat-Damaged Kernels of Waxy Corn Seeds Based on Near-Ultraviolet-Visible-Shortwave and Near-Infrared Multi-Spectral Imaging Data
作者:Wang Dong;Han Ping;Wang Dong;Han Ping;Wu Jing-zhu;Zhao Li-li;Xu Heng
关键词:Multi-spectral imaging; Data fusion; Near-infrared spectroscopy; Heat-damaged kernel; Waxy corn seed
-
Application of Spectral Key Variable Selection in Non-Destructive Detection of the Qualities of Agricultural Products and Food
作者:Wang Dong;Han Ping;Wu Jing-zhu;Wang Kun;Wang Dong;Han Ping
关键词:Spectroscopic analysis; Key variable selection; Non-destructive detection; Agricultural products quality; Food quality and safety
-
Progress in Research on Rapid and Non-Destructive Detection of Seed Quality Based on Spectroscopy and Imaging Technology
作者:Wang Hong;Han Ping;Wang Kun;Wu Jing-zhu;Wang Hong;Han Ping
关键词:Seed; Near-infrared spectroscopy; Hyperspectral imaging; Non-destructive detection
-
Study on Hyperspectral Identification Method of Rice Origin in Northeast/Non-Northeast China Based on Conjunctive Model
作者:Lin Long;Wu Jing-zhu;Liu Cui-ling;Yu Chong-chong;Liu Zhi;Yuan Yu-wei
关键词:Hyperspectral image; Conjunctive model; Northeast rice; Origin identification; HOG