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Comparison of linear and mixed-effect regression models and a k-nearest neighbour approach for estimation of single-tree biomass

机译:线性和混合效应回归模型与k近邻法估算单树生物量的比较

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摘要

Allometric biomass models for individual trees are typically specific to site conditions and species. They are often based on a low number of easily measured independent variables, such as diameter in breast height and tree height. A prevalence of small data sets and few study sites limit their application domain. One challenge in the context of the actual climate change discussion is to find more general approaches for reliable biomass estimation. Therefore, nonparametric approaches can be seen as an alternative to commonly used regression models. In this pilot study, we compare a nonparametric instance-based k-nearest neighbour (k-NN) approach to estimate single-tree biomass with predictions from linear mixed-effect regression models and subsidiary linear models using data sets of Norway spruce (Picea abies (L.) Karst.) and Scots pine (Pinus sylvestris L.) from the National Forest Inventory of Finland. For all trees, the predictor variables diameter at breast height and tree height are known. The data sets were split randomly into a modelling and a test subset for each species. The test subsets were not considered for the estimation of regression coefficients nor as training data for the k-NN imputation. The relative root mean square errors of linear mixed models and k-NN estimations are slightly lower than those of an ordinary least squares regression model. Relative prediction errors of the k-NN approach are 16.4% for spruce and 14.5% for pine. Errors of the linear mixed models are 17.4% for spruce and 15.0% for pine. Our results show that nonparametric methods are suitable in the context of single-tree biomass estimation.
机译:单个树木的异速生长生物量模型通常特定于场所条件和物种。它们通常基于少量易于测量的独立变量,例如乳房高度的直径和树的高度。小数据集的盛行和很少的研究站点限制了它们的应用范围。在实际的气候变化讨论中,一个挑战是找到更通用的方法来进行可靠的生物量估算。因此,非参数方法可以看作是常用回归模型的替代方法。在这项先导研究中,我们比较了基于非参数实例的k最近邻(k-NN)方法和挪威云杉(Picea abies)数据集的线性混合效应回归模型和辅助线性模型的预测来估计单树生物量(L.)喀斯特。)和来自芬兰国家森林清单的苏格兰松(Pinus sylvestris L.)。对于所有树木,都知道乳房高度和树木高度处的预测变量直径。将数据集随机分为每个物种的模型和测试子集。不考虑将测试子集用于回归系数的估计,也不将其视为k-NN归因的训练数据。线性混合模型和k-NN估计的相对均方根误差略低于普通最小二乘回归模型的相对均方根误差。 k-NN方法的相对预测误差对于云杉为16.4%,对于松树为14.5%。云杉的线性混合模型的误差为17.4%,松树的误差为15.0%。我们的结果表明,非参数方法适用于单树生物量估计的情况。

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