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Non-destructively predicting leaf area, leaf mass and specific leaf area based on a linear mixed-effect model for broadleaf species

机译:基于线性混合效应模型的阔叶树种的叶面积,叶质量和比叶面积无损预测

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Based on a linear mixed-effect model, we propose here a non-destructive, rapid and reliable way for estimating leaf area, leaf mass and specific leaf area (SLA) at leaf scale for broadleaf species. For the construction of the model, the product of leaf length by width (LW) was the optimum variable to predict the leaf area of five deciduous broadleaf species in northeast China. In contrast, for species with leaf thickness (T) lower than 0.10 mm, the surface metric of a leaf (e.g., LW or width) was more suitable for predicting leaf mass; and for species with leaf thickness larger than 0.10 mm, the volume metric of a leaf (e.g., the product of length, width and thickness together, LWT) was a better predictor. The linear mixed effect model was reasonable and accurate in predicting the leaf area and leaf mass of leaves in different seasons and positions within the canopy. The mean MAE% (mean absolute error percent) values were 6.9% (with a scope of 4.1-13.0%) for leaf area and 13.8% (9.9-20.7%) for leaf mass for the five broadleaf species. Furthermore, these models can also be used to effectively estimate SLA at leaf scale, with a mean MAE% value of 11.9% (8.2-14.1%) for the five broadleaf species. We also propose that for the SLA estimation of the five broadleaf species examined, the optimum number of sample leaves necessary for good accuracy and reasonable error was 40-60. The use of the provided method would enable researchers or managers to rapidly and effectively detect the seasonal dynamic of leaf traits (e.g., leaf area, leaf mass or SLA) of the same sample leaves in the future. (C) 2017 Elsevier Ltd. All rights reserved.
机译:基于线性混合效应模型,我们在此提出一种无损,快速和可靠的方法,用于估计阔叶树种的叶面积,叶质量和比叶面积(SLA)。对于模型的构建,叶长与宽的乘积(LW)是预测中国东北五种落叶阔叶树种叶面积的最佳变量。相反,对于叶片厚度(T)小于0.10 mm的物种,叶片的表面度量(例如LW或宽度)更适合预测叶片质量;对于叶片厚度大于0.10毫米的物种,叶片的体积度量(例如长度,宽度和厚度的乘积LWT)是更好的预测指标。线性混合效应模型在预测不同季节和冠层内叶片的叶面积和叶片质量时是合理而准确的。这五个阔叶树种的平均MAE%(平均绝对误差百分比)值为叶面积的6.9%(范围为4.1-13.0%)和叶重量的13.8%(9.9-20.7%)。此外,这些模型还可以用于有效地估计叶尺度的SLA,五个阔叶树种的平均MAE%值为11.9%(8.2-14.1%)。我们还建议,对于所检查的五个阔叶树种的SLA估计,为获得良好的准确性和合理的误差所必需的最佳样本叶数为40-60。使用所提供的方法将使研究人员或管理人员能够在将来迅速有效地检测相同样本叶片的叶片性状(例如叶片面积,叶片质量或SLA)的季节动态。 (C)2017 Elsevier Ltd.保留所有权利。

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