首页> 外文期刊>European Journal of Agronomy >Estimation of litchi (Litchi chinensis Sonn.) leaf nitrogen content at different growth stages using canopy reflectance spectra
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Estimation of litchi (Litchi chinensis Sonn.) leaf nitrogen content at different growth stages using canopy reflectance spectra

机译:利用冠层反射光谱估算不同生长期荔枝叶氮含量

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The estimation of crop nitrogen status in fresh vegetation leaf using field spectroscopy is challenging due to the weak responses on leaf/canopy reflectance and the overlapping with the absorption features of other compounds. Although the spectral indices were proposed in the literature to predict leaf nitrogen content (LNC), the performance of selected spectral indices to estimate the LNC is often inconsistent. Moreover, the models for nitrogen content estimation changed with the growth stage. The goal of this study was to evaluate the performance of published indices, ratio of data difference index (RDDI) and ratio of data index (RDI) developed by band iterative-optimization algorithm in LNC estimation. The correlation analysis, linear regression and cross validation were used to analyze the relationship between spectral data and LNC and construct the best performed estimation model. The study was conducted by the data of five growing seasons of litchi from the orchards in Guangdong Province of China. Results showed that the relationship between chlorophyll (Chl) related spectral indices and LNC varied with the growth stage. Even in flower bud morphological differentiation stage and autumn shoot maturation stage, there were not significant correlations between the proposed spectral indices and LNC. Besides it is difficult to estimate the LNC by the general model across the growth stages due to the integrated effects of cultivar, biochemical, canopy structure, etc. The band iterative-optimization algorithm can improve the sensitivity of spectral data to LNC to some extent. The optimal RDDI performed better than other indices for the synthetic dataset and the dataset in each growth stage. And the sensitive bands selected in the optimal indices at each growth stage are not consistent, which are not only related to the Chl absorption but also other biochemical components, such as starch, lignin, cellulose, protein, etc. In general, the LNC can be estimated by the optimized CR-based RDDI indices in autumn shoot maturation stage, flower spike stage, fruit maturation stage, and flowering stage with the R-2 > 0.50 and RMSE 0.14. Although there were the significant relationship between RDIs and RDDIs in flower bud morphological differentiation stage, the highest Res of the model developed by RDDIs and RDIs were less than 0.50 in cross validation. This study indicated that the applicability of canopy reflectance to estimate litchi LNC was closely related to the growth stage of litchi. Growth stage-specific models will be preferred for estimating litchi LNC estimation. (C) 2016 Elsevier B.V. All rights reserved.
机译:由于对叶/冠层反射的响应较弱,并且与其他化合物的吸收特征重叠,因此使用田间光谱法估算新鲜植被叶片中的作物氮状况具有挑战性。尽管在文献中提出了光谱指数来预测叶片氮含量(LNC),但是选择光谱指数来估计LNC的性能通常是不一致的。此外,氮含量估算模型随生长期而变化。这项研究的目的是评估在LNC估计中通过波段迭代优化算法开发的已发布索引,数据差异索引之比(RDDI)和数据索引之比(RDI)的性能。利用相关分析,线性回归和交叉验证来分析光谱数据与LNC之间的关系,并建立性能最佳的估计模型。该研究是根据来自中国广东省果园的荔枝五个生长季节的数据进行的。结果表明,叶绿素(Chl)相关光谱指数与LNC之间的关系随生长期而变化。即使在花芽形态分化期和秋梢成熟期,所提出的光谱指数与LNC之间也没有显着相关性。此外,由于品种,生化,冠层结构等的综合作用,很难通过通用模型估计整个生长阶段的LNC。频带迭代优化算法可以在某种程度上提高光谱数据对LNC的敏感性。对于合成数据集和每个生长阶段的数据集,最佳RDDI的性能均优于其他指标。而且,在每个生长期的最佳指数中选择的敏感带并不一致,这不仅与Chl的吸收有关,而且与其他生化成分有关,例如淀粉,木质素,纤维素,蛋白质等。通常,LNC可以通过优化的基于CR的RDDI指数可以估算出R-2> 0.50和RMSE <0.14的秋梢成熟期,花穗期,果实成熟期和开花期。尽管在花芽形态分化阶段RDI和RDDI之间存在显着关系,但在交叉验证中,RDDI和RDI建立的模型的最高Res小于0.50。这项研究表明,冠层反射率估计荔枝LNC的适用性与荔枝的生长阶段密切相关。特定于生长期的模型将是估计荔枝LNC估计的首选方法。 (C)2016 Elsevier B.V.保留所有权利。

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