Allometric models for non-destructive leaf area estimation in Eugenia uniflora (L.)

M. F. Pommpelli, J. M. Figueiroa, Flavio Lozano-Isla
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引用次数: 1

Abstract

We aimed to propose a reliable and accurate model using non-destructive measurements of leaf length (L) and/or width (W) for estimating leaf area (LA) of Surinam cherry ( Eugenia uniflora L.). For model construction, 560 leaves were randomly sampled from different levels of the tree canopies and encompassed the full spectrum of measurable leaf sizes. Power models better fit E. uniflora leaf area than linear models; but, among of then, the best fit were made when product of the L and W (LW) were used. To validate these models, independent data set of 156 leaves were used. Thus, we developed a single power model (Yi = β0 xβ1) [LA = 0.685 (LW)0.989; standard errors: β0 = 0.014, β1 = 0.005; R2 a = 0.997] with high precision and accuracy, random dispersal pattern of residuals and unbiased. A simpler linear model [LA = 0.094 + (LW * 0.655); standard errors: β0 = 0.025, β 1 = 0.001; R2 a = 0.998] also described here to estimate leaf area of E. uniflora, which are as good as the first. The simplicity of the latter model may be relevant in field studies, as it does not demand high precision or expensive instruments.
单叶Eugenia uniflora (L.)非破坏性叶面积估算的异速生长模型
利用叶片长度(L)和宽度(W)的无损测量,建立了苏里南樱桃(Eugenia uniflora L.)叶片面积(LA)的可靠、准确的估算模型。为了构建模型,我们从不同的树冠层随机抽取了560片叶子,其中包含了所有可测量的叶子大小。幂次模型比线性模型更适合单花叶面积;其中,以L与W的乘积(LW)拟合效果最佳。为了验证这些模型,使用了156个叶片的独立数据集。因此,我们建立了一个单功率模型(Yi = β0 xβ1) [LA = 0.685 (LW)0.989;标准误差:β0 = 0.014, β1 = 0.005;R2 a = 0.997]具有较高的精密度和准确度,残差分布模式随机,无偏。更简单的线性模型[LA = 0.094 + (LW * 0.655)];标准误差:β0 = 0.025, β 1 = 0.001;R2 a = 0.998]对单叶叶面积的估算结果与第一种方法相同。后一种模型的简单性可能与实地研究有关,因为它不需要高精度或昂贵的仪器。
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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