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Nondestructive Quantification of Foliar Chlorophyll in an Apple Orchard by Visible=Near-Infrared Reflectance Spectroscopy and Partial Least Squares

机译:可见=近红外反射光谱法和偏最小二乘法对苹果园叶绿素的无损定量分析

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摘要

Chlorophylls respond rapidly to the current physiological status of a tree and reflect nutrient availability. Visible=near-infrared spectroscopy was attempted to determine foliar chlorophyll content in an apple orchard. Backward interval partial least squares and genetic algorithms were sequentially applied to select an optimized spectral interval and an optimized combination of spectral regions selected from informative regions in model calibration. Backward interval partial least squares was used to remove the noninformative regions, which significantly reduced the number of variables. The subsequent application of genetic algorithms-partial least squares to this reduced domain could lead to an efficient and refinedmodel. The performance of the final model was back-evaluated according to root mean square error of calibration (RMSEC) and the correlation coefficient (R_c) in the calibration set, and was then tested by root mean square error of prediction (RMSEP) and the correlation coefficient (R_p) in the prediction set. The optimal backward interval partial least squares-genetic algorithms model was obtained with 5 partial least squares factors with 3 spectral regions and 71 variables selected. The measurement results of the final model were achieved as follows: RMSEC=0.26, R_c=0.91 in the calibration set; and RMSEP=0.22, R_p=0.91 in the prediction set. This experiment showed that visible=near-infrared spectroscopy and backward interval partial least squares-genetic algorithms are useful tools for nondestructively assessing foliar chlorophyll content and may have potential application for field assessments in decision-making and operational fertilizer management programs for apple orchards.
机译:叶绿素对树的当前生理状态快速响应并反映养分的可利用性。尝试使用可见=近红外光谱法确定苹果园中的叶绿素含量。依次应用后向间隔偏最小二乘和遗传算法来选择优化的光谱间隔和从模型校准中从信息区域中选择的光谱区域的优化组合。向后间隔偏最小二乘用于删除非信息区域,从而显着减少了变量数量。遗传算法的后续应用-偏最小二乘对此缩小的域可能会导致有效和完善的模型。根据校准的均方根误差(RMSEC)和校准集中的相关系数(R_c)对最终模型的性能进行反评估,然后通过预测的均方根误差(RMSEP)和相关性进行检验预测集中的系数(R_p)。利用5个偏最小二乘因子,3个光谱区域和71个变量,得到最优的后向区间偏最小二乘遗传算法模型。最终模型的测量结果如下:RMSEC = 0.26,R_c = 0.91。和RMSEP = 0.22,R_p = 0.91。该实验表明,可见=近红外光谱法和向后区间偏最小二乘遗传算法是无损评估叶绿素含量的有用工具,并且可能在苹果园的决策和肥料管理计划中用于田间评估。

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