Constructing single-entry stem volume models for four economically important tree species of Greece

Pub Date : 2021-07-01 DOI:10.2478/foecol-2021-0014
Panagiotis P. Koulelis, K. Ioannidis
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引用次数: 3

Abstract

Abstract Three different nonlinear regression models were tested for their ability to predict stem volume for economically important native tree species in Greece. Τhe models were evaluated using adjusted R square (Adj Rsqr) root mean square error (RMSE) and Akaike information criterion (AICc), where necessary. In general, the quadratic polynomial and cubic polynomial models and the two-parameter power models fit the data well. Although the two-parameter power function fit best for fir, oak, and beech trees, the cubic polynomial model produced the best fit statistics for black pine. Making forest inventory estimates often involves predicting tree volumes from only the diameter at breast height (DBH) and merchantable height. This study covers important gaps in fast and cost-effective methods for calculating the volume of tree species at national level. However, the increasing need for reliable estimates of inventory components and volume changes requires more accurate volume estimation techniques. Especially when those estimates concern the national inventory, those models must be validated using an entire range of age/diameter and site classes of each species before their extended use across the country to promote the sustainable use of forest resources.
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构建希腊四种重要经济树种的单入口树干体积模型
摘要对三种不同的非线性回归模型对希腊重要经济原生树种茎体积的预测能力进行了测试。必要时,使用调整后的R方(Adj Rsqr)均方根误差(RMSE)和赤池信息准则(Akaike information criterion, AICc)对Τhe模型进行评价。一般来说,二次多项式和三次多项式模型以及双参数幂模型都能很好地拟合数据。虽然双参数幂函数最适合杉木、橡树和山毛榉,但三次多项式模型对黑松产生了最好的拟合统计。估算森林资源清查通常只涉及根据胸径和可销售高度来预测树木的体积。这项研究弥补了在国家一级计算树种体积的快速和成本效益方法方面的重要空白。但是,由于越来越需要对存货组成部分和数量变化进行可靠的估计,因此需要更精确的数量估计技术。特别是当这些估计涉及到国家目录时,这些模型必须在全国推广使用之前,使用每个物种的整个年龄/直径范围和场地类别进行验证,以促进森林资源的可持续利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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