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Remotely detecting canopy nitrogen concentration and uptake of paddy rice in the Northeast China Plain

机译:东北平原水稻冠层氮素含量和吸收量的遥感监测

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摘要

The influence of morphophysiological variation at different growth stages on the performance of vegetation indices for estimating plant N status has been confirmed. However, the underlying mechanisms explaining how this variation impacts hyperspectral measures and canopy N status are poorly understood. In this study, four field experiments involving different N rates were conducted to optimize the selection of sensitive bands and evaluate their performance for modeling canopy N status of rice at various growth stages in 2007 and 2008. The results indicate that growth stages negatively affect hyperspectral indices in different ways in modeling leaf N concentration (LNC), plant N concentration (PNC) and plant N uptake (PNU). Published hyperspectral indices showed serious limitations in estimating LNC, PNC and PNU. The newly proposed best 2-band indices significantly improved the accuracy for modeling PNU (R~2 = 0.75-0.85) by using the lambda by lambda band-optimized algorithm. However, the newly proposed 2-band indices still have limitations in modeling LNC and PNC because the use of only 2-band indices is not fully adequate to provide the maximum N-related information. The optimum multiple narrow band reflectance (OMNBR) models significantly increase the accuracy for estimating the LNC (R~2 = 0.67-0.71) and PNC (R~2 = 0.57-0.78) with six bands. Results suggest the combinations of center of red-edge (735 nm) with longer red-edge bands (730-760 nm) are very efficient for estimating PNC after heading, whereas the combinations of blue with green bands are more efficient for modeling PNC across all stages. The center of red-edge (730-735 nm) paired with early NIR bands (775-808 nm) are predominant in estimating PNU before heading, whereas the longer red-edge (750 nm) paired with the center of "NIR shoulder" (840-850 nm) are dominant in estimating PNU after heading and across all stages. The OMNBR models have the advantage of modeling canopy N status for the entire growth period. However, the best 2-band indices are much easier to use. Alternatively, it is also possible to use the best 2-band indices to monitor PNU before heading and PNC after heading. This study systematically explains the influences of N dilution effect on hyperspectral band combinations in relating to the different N variables and further recommends the best band combinations which may provide an insight for developing new hyperspectral vegetation indices.
机译:已经证实了不同生长阶段的形态生理变化对植被指数性能的影响,以估计植物的氮含量。然而,对于解释这种变化如何影响高光谱测量和冠层氮状况的潜在机制了解甚少。在这项研究中,进行了四个涉及不同N速率的田间试验,以优化敏感带的选择并评估其在模拟2007年和2008年不同生育阶段的水稻冠层N状况方面的性能。结果表明,生育阶段对高光谱指数有负面影响以不同的方式模拟叶片氮素浓度(LNC),植物氮素浓度(PNC)和植物氮素吸收(PNU)。已发布的高光谱指数在估计LNC,PNC和PNU方面显示出严重的局限性。通过使用lambda by lambda频带优化算法,新提出的最佳2频带索引显着提高了PNU建模的精度(R〜2 = 0.75-0.85)。但是,由于仅使用2频段索引不足以提供最大的N相关信息,因此,新提出的2频段索引在LNC和PNC建模方面仍然存在局限性。最佳的多窄带反射率模型(OMNBR)显着提高了六频带LNC(R〜2 = 0.67-0.71)和PNC(R〜2 = 0.57-0.78)的估计精度。结果表明,红边中心(735 nm)与更长的红边带(730-760 nm)的组合对于航向后的PNC估算非常有效,而蓝色和绿色带的组合对于跨PNC建模更有效所有阶段。红边中心(730-735 nm)与早期NIR波段(775-808 nm)配对,主要是在航向之前估计PNU,而较长的红边(750 nm)与“ NIR肩部”中心配对(840-850 nm)在航向和所有阶段估算PNU时占主导地位。 OMNBR模型的优势在于可以在整个生长期间对冠层N状态进行建模。但是,最好的2波段索引更容易使用。或者,也可以使用最佳2波段索引在航向之前监视PNU,并在航向之后监视PNC。这项研究系统地解释了N稀释效应对与不同N变量有关的高光谱波段组合的影响,并进一步推荐了最佳波段组合,这可能为开发新的高光谱植被指数提供参考。

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  • 作者单位

    Key Laboratory of Plant-Soil Interactions, Ministry of Education, and Center for Resources, Environment and Food Security, China Agricultural University, Beijing 100193, China,Institute of Geography, University of Cologne, 50923 Koeln, Germany,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

    College of Ecology and Environmental Science, Inner Mongolia Agricultural University, Hohhot 010019, China,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

    Institute of Geography, University of Cologne, 50923 Koeln, Germany,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

    Key Laboratory of Plant-Soil Interactions, Ministry of Education, and Center for Resources, Environment and Food Security, China Agricultural University, Beijing 100193, China,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

    Institute of Geography, University of Cologne, 50923 Koeln, Germany,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

    Key Laboratory of Plant-Soil Interactions, Ministry of Education, and Center for Resources, Environment and Food Security, China Agricultural University, Beijing 100193, China,International Center for Agroinformatics and Sustainable Development (ICASD), Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    hyperspectral index; nitrogen status; rice; heading stage; n dilution effect; stepwise multiple linear regression; lambda by lambda band-optimized; algorithm;

    机译:高光谱指数氮状况白饭;前进阶段n稀释作用;逐步多元线性回归lambda通过lambda带优化;算法;

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