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Model errors in tree biomass estimates computed with an approximation to a missing covariance matrix

机译:树木生物量估算中的模型误差,其近似于缺失的协方差矩阵

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Background Biomass and carbon estimation has become a priority in national and regional forest inventories. Biomass of individual trees is estimated using biomass equations. A covariance matrix for the parameters in a biomass equation is needed for the computation of an estimate of the model error in a tree level estimate of biomass. Unfortunately, many biomass equations do not provide key statistics for a direct estimation of model errors. This study proposes three new procedures for recovering missing statistics from available estimates of a coefficient of determination and sample size. They are complementary to a recently published study using a computationally intensive Monte Carlo approach. Results Our recovery approach use survey data from the population targeted for an estimation of tree biomass. Examples from Germany and Mexico illustrate and validate the methods. Applications with biomass estimation and robust recovered fit statistics gave reasonable estimates of model errors in tree level estimates of biomass. Conclusions It is good practice to provide estimates of uncertainty to any model-dependent estimate of above ground biomass. When a direct approach to estimate uncertainty is impossible due to missing model statistics, the proposed robust procedure is a first step to good practice. Our recommended approach offers protection against inflated estimates of precision.
机译:背景技术生物量和碳估算已成为国家和区域森林清单中的优先事项。使用生物量方程式估算单个树木的生物量。对于生物量的树级估计中的模型误差的估计的计算,需要生物量方程中的参数的协方差矩阵。不幸的是,许多生物量方程式没有提供直接统计模型误差的关键统计数据。这项研究提出了三种新的程序,用于从确定系数和样本量的可用估计中恢复缺失的统计数据。它们是对最近发表的使用计算密集型蒙特卡洛方法的研究的补充。结果我们的恢复方法使用了来自目标种群的调查数据来估计树木生物量。来自德国和墨西哥的示例说明并验证了该方法。具有生物量估计和强大的恢复拟合统计量的应用程序在生物量的树级估计中给出了模型误差的合理估计。结论优良作法是为地面生物量的任何模型相关估计提供不确定性估计。当由于缺少模型统计信息而无法直接估计不确定性时,建议的健壮过程是良好实践的第一步。我们推荐的方法可以防止精度过高的估计。

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