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Effect of chlorophyll concentration under different water situation and estimation model for Pinuse lliottii Engelm with hyperspectral data

机译:高光谱数据对不同水分条件下叶锦松叶绿素浓度的影响及估算模型

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Three treatments (normal soil water condition, CK; continual submergence condition, T1; and submergence and drought alternation condition, T2) are adopted. The reflectance spectra of Pinuse lliottii Engelm leaves, the red edge parameters and the corresponding chlorophyll content are measured, and the relationship between the red edge parameters and total chlorophyll concentration are analyzed. The results show that: (1) There are "blue shift" phenomena before 24d and "red shift" after 24d for the position of λ_(red) (Red edge position). The opposite phenomenon occurs for Dλ_(red) (Red edge amplitude). The S_red (Red edge area) appear "blue shift" for the case T1 and T2. (2)There is extremely significant correlation between chlorophyll content and red edge position, and there is significant correlation between chlorophyll content and red edge area, but the correlation between chlorophyll content and red edge amplitude is poor. The correlation coefficient between chlorophyll content and red edge position is 0.762. (3)The red edge position, kurtosis and skewness, which are computed by spectral curve at range 680-760nm of Pinuse lliottii Engelmare considered the input variables for artificial neural networks. The correlation coefficient is 0.928, and it obviously improves the accuracy of the estimation of the total chlorophyll concentration.
机译:采用三种处理方法(正常土壤水分条件CK;连续浸水条件T1;浸水干旱交替条件T2)。测定了樟子松叶片的反射光谱,测定了红边参数和相应的叶绿素含量,分析了红边参数与总叶绿素浓度之间的关系。结果表明:(1)对于λ_(red)的位置(红色边缘位置),在24d之前存在“蓝移”现象,在24d之后存在“红移”现象。对于Dλ_(red)(红色边缘幅度)会发生相反的现象。对于情况T1和T2,S_red(红色边缘区域)显示为“蓝移”。 (2)叶绿素含量与红边位置之间存在极显着的相关性,叶绿素含量与红边面积之间存在显着的相关性,但叶绿素含量与红边幅度之间的相关性较差。叶绿素含量与红边位置之间的相关系数为0.762。 (3)红松的位置,峰度和偏度,是由Pinuse lliottii Engelm的光谱曲线在680-760nm范围内计算得出的,被认为是人工神经网络的输入变量。相关系数为0.928,明显提高了总叶绿素浓度估算的准确性。

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