Rapid Prediction of Leaf Water Content in Eucalypt Leaves Using a Handheld NIRS Instrument

Joel B. Johnson
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Abstract

Leaf water content (LWC) is a crucial physiological parameter that plays a limiting role in the efficiency of photosynthesis and biomass production in many plants. This study investigated the use of diffuse reflectance near-infrared spectroscopy (NIRS) for the rapid prediction of the gravimetric LWC in eucalypt leaves from Eucalyptus and Corymbia genera. The best-performing model for LWC gave a R2pred of 0.85 and RMSEP of 2.32% for an independent test set, indicating that the handheld NIR instrument could predict the LWC with a high level of accuracy. The use of support vector regression gave slightly more accurate results compared with partial least squares regression. Prediction models were also developed for leaf thickness, although these were somewhat less accurate (R2pred of 0.58; RMSEP of 2.7 µm). Nevertheless, the results suggest that handheld NIR instruments may be useful for in-field screening of LWC and leaf thickness in Australian eucalypt species. As an example of its use, the NIR method was applied for rapid analysis of the LWC and leaf thickness of every leaf found on an E. populnea sapling.
手持式近红外光谱仪快速预测桉树叶片水分含量
叶片含水量(LWC)是影响植物光合作用效率和生物量生产的重要生理参数。本文研究了利用漫反射近红外光谱(NIRS)快速预测桉树(Eucalyptus)和山茱萸(Corymbia)属桉树叶片重量LWC的方法。独立测试集的R2pred为0.85,RMSEP为2.32%,表明手持式近红外仪器对LWC的预测精度较高。与偏最小二乘回归相比,使用支持向量回归给出了稍微准确的结果。此外,还建立了叶片厚度的预测模型,但其准确性较低(R2pred为0.58;RMSEP为2.7µm)。然而,结果表明,手持近红外仪器可能对澳大利亚桉树物种的LWC和叶片厚度的现场筛选有用。以白杨树苗为例,应用近红外光谱法快速分析了白杨树苗每片叶片的叶片厚度和LWC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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