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首页> 外文期刊>The Forestry Chronicle >A parameter recovery model for estimating black spruce diameter distributions within the context of a stand density management diagram
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A parameter recovery model for estimating black spruce diameter distributions within the context of a stand density management diagram

机译:用于在林分密度管理图的背景下估算黑云杉直径分布的参数恢复模型

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摘要

The objectives of this study were to develop and subsequently demonstrate a parameter prediction approach for estimating black spruce (Picea mariana (Mill.) BSP) diameter frequency distributions within the context of a stand density management diagram (SDMD). The approach consisted of three sequential steps: (1) obtaining maximum likelihood estimates for the location, scale and shape parameters of the Weibull probability density function for 153 empirical diameter frequency distributions; (2) developing and evaluating parameter prediction equations in which the Weibull parameter estimates were expressed as functions of stand-level variables based on stepwise regression and seemingly unrelated regression techniques; and (3) explicitly incorporating the parameter prediction equations into the SDMD modelling framework. The results indicated that the Weibull function was successful in characterizing the diameter distributions within the sample stands: the fitted distributions exhibited no significant (p less than or equal to 0.05) differences in relation to their corresponding observed distributions, based on the Kolmogorov-Smirnov test. The parameter prediction equations described 94, 94 and 89% of the variation in the location, scale and shape parameter estimates, respectively. Furthermore, evaluation of the recovered distributions in terms of prediction error indicated minimal biases and acceptable accuracy. As demonstrated, incorporating the parameter prediction equations into an algorithmic version of the SDMD enabled the prediction of the temporal dynamics of the diameter frequency distribution by initial density regime and site quality. Additionally, an executable version of the resultant algorithm with instructions on acquiring it via the Internet is provided.
机译:这项研究的目的是开发并随后证明一种在林分密度管理图(SDMD)范围内估算黑云杉(Picea mariana(Mill。)BSP)直径频率分布的参数预测方法。该方法包括三个连续步骤:(1)获得153个经验直径频率分布的Weibull概率密度函数的位置,比例和形状参数的最大似然估计; (2)建立和评估参数预测方程,其中基于逐步回归和看似无关的回归技术,将威布尔参数估计值表示为标准水平变量的函数; (3)将参数预测方程式明确纳入SDMD建模框架。结果表明,Weibull函数成功地表征了样品台内的直径分布:基于Kolmogorov-Smirnov检验,拟合分布相对于其对应的观察分布没有显着差异(p小于或等于0.05)。 。参数预测方程式分别描述了位置,比例和形状参数估计值变化的94%,94%和89%。此外,就预测误差而言,对恢复分布的评估显示出最小的偏差和可接受的准确性。如图所示,将参数预测方程式合并到SDMD的算法版本中,可以通过初始密度机制和站点质量来预测直径频率分布的时间动态。另外,提供了所得算法的可执行版本,其中包含有关通过Internet进行获取的指令。

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