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Using linear mixed model and dummy variable model approaches to construct compatible single-tree biomass equations at different scales - A case study for Masson pine in Southern China

机译:线性混合模型和虚拟变量模型方法构建不同尺度下兼容的单树生物量方程-以中国南方马尾松为例

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摘要

The estimation of forest biomass is important for practical issues and scientific purposes in forestry. The estimation of forest biomass on a large-scale level would be merely possible with the application of generalized single-tree biomass models. The aboveground biomass data on Masson pine (Pinus massoniana) from nine provinces in southern China were used to develop generalized single-tree biomass models using both linear mixed model and dummy variable model methods. An allometric function requiring only diameter at breast height was used as a base model for this purpose. The results showed that the aboveground biomass estimates of individual trees with identical diameters were different among the forest origins (natural and planted) and geographic regions (provinces). The linear mixed model with random effect parameters and dummy model with site-specific (local) parameters showed better fit and prediction performance than the population average model. The linear mixed model appears more flexiblethan the dummy variable model for the construction of generalized single-tree biomass models or compatible biomass models at different scales. The linear mixed model method can also be applied to develop other types of generalized single-tree models such as basal area growth and volume models.
机译:森林生物量的估计对于林业中的实际问题和科学目的很重要。大规模的森林生物量估计只有通过应用广义的单树生物量模型才有可能。利用线性混合模型和虚拟变量模型方法,从中国南部九个省的马尾松(Pinus massoniana)的地上生物量数据建立了广义的单树生物量模型。为此,仅需要在乳房高度处具有直径的异速测量功能被用作基本模型。结果表明,在森林起源(天然和人工种植)和地理区域(省)之间,具有相同直径的单个树的地上生物量估计值是不同的。具有随机效应参数的线性混合模型和具有特定地点(局部)参数的虚拟模型显示出比总体平均模型更好的拟合和预测性能。对于不同规模的广义单树生物量模型或兼容生物量模型的构建,线性混合模型显得比虚拟变量模型更灵活。线性混合模型方法也可以用于开发其他类型的广义单树模型,例如基础面积增长和体积模型。

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