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Biomass Modeling of Larch ( Larix spp.) Plantations in China Based on the Mixed Model, Dummy Variable Model, and Bayesian Hierarchical Model

机译:基于混合模型,虚拟变量模型和贝叶斯层次模型的中国落叶松人工林生物量模型

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With the development of national-scale forest biomass monitoring work, accurate estimation of forest biomass on a large scale is becoming an important research topic in forestry. In this study, the stem wood, branches, stem bark, needles, roots and total biomass models for larch were developed at the regional level, using a general allometric equation, a dummy variable model, a mixed effects model, and a Bayesian hierarchical model, to select the most effective method for predicting large-scale forest biomass. Results showed total biomass of trees with the same diameter gradually decreased from southern to northern regions in China, except in the Hebei province. We found that the stem wood, branch, stem bark, needle, root, and total biomass model relationships were statistically significant ( p -values < 0.01) for the general allometric equation, linear mixed model, dummy variable model, and Bayesian hierarchical model, but the linear mixed, dummy variable, and Bayesian hierarchical models showed better performance than the general allometric equation. An F -test also showed significant differences between the models. The R 2 average values of the linear mixed model, dummy variable model, and Bayesian hierarchical model were higher than those of the general allometric equation by 0.007, 0.018, 0.015, 0.004, 0.09, and 0.117 for the total tree, root, stem wood, stem bark, branch, and needle models respectively. However, there were no significant differences between the linear mixed model, dummy variable model, and Bayesian hierarchical model. When the number of categories was increased, the linear mixed model and Bayesian hierarchical model were more flexible and applicable than the dummy variable model for the construction of regional biomass models.
机译:随着国家森林生物量监测工作的发展,对森林生物量的准确估算已成为林业研究的重要课题。在这项研究中,使用一般异速方程,虚拟变量模型,混合效应模型和贝叶斯层次模型,在区域一级开发了落叶松的茎木,树枝,茎皮,针,根和总生物量模型。 ,以选择最有效的方法来预测大规模森林生物量。结果表明,相同直径树木的总生物量从中国南部到北部地区(河北省除外)逐渐减少。我们发现,对于一般异速方程,线性混合模型,虚拟变量模型和贝叶斯层次模型,茎木,树枝,茎皮,针,根和总生物量模型之间的关系具有统计学意义(p值<0.01),但是线性混合模型,虚拟变量模型和贝叶斯分层模型显示出比一般的异形方程更好的性能。 F检验还显示了模型之间的显着差异。线性混合模型,虚拟变量模型和贝叶斯层次模型的R 2平均值对于总树,根,茎木而言,比一般异速方程的R 2平均值高0.007、0.018、0.015、0.004、0.09和0.117。 ,茎皮,分支和针形模型。但是,线性混合模型,虚拟变量模型和贝叶斯层次模型之间没有显着差异。当类别数量增加时,线性混合模型和贝叶斯层次模型比虚拟变量模型更灵活,更适用于构建区域生物量模型。

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