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Applications and comparison of six methods for predicting parameters of the Weibull function in unthinned Picea glauca plantations

机译:六种预测薄皮云杉人工林威布尔函数参数的方法的应用与比较

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The objectives of this study were (1) to compare six methods for predicting parameters of the Weibull probability density function (PDF) for diameter at breast height (dbh) distribution in the unthinned white spruce plantations in eastern Canada with respect to their applicability, and (2) to evaluate their predictive abilities in terms of error index (EI) and Kolmogorov-Smirnov (K-S) statistic. The reasons for undertaking this study were (1) there are no available models for the dbh distributions of the studied species and (2) to determine the best method for projecting dbh distributions of white spruce plantations. A total of 113 sample plots which consisted of the commonly measured stand-level variables [stand age (A), site index at 25-year base age (SI), average height of dominant and co-dominant trees (Hd), and stand density (SD)] and associated diameter frequency distributions were used in this study. Of all the six prediction methods, the moment-based and percentile-based parameter recovery approach (PRM and PCT), maximum likelihood estimation regression (MLER), cumulative distribution function regression (CDFR) and parameter prediction method (PPM) were able to be applied for adequately modeling the diameter frequency distributions for the data sets used in this study. The moment-percentile estimation hybrid method (HYBM) performed the poorest. PCT was most highly recommended as it had the consistently lowest EI and K-S statistic values for both fit and validation data sets. Therefore, the dbh distributions for white spruce plantations could be predicted at a point over time using the established methods here, especially the PCT method, from the stand variables (A, SI, Hd, SD).
机译:这项研究的目的是(1)比较六种方法来预测加拿大东部未经稀释的白云杉种植园的威布尔概率密度函数(PDF)的胸高直径(dbh)直径的参数,以及适用性,以及(2)根据错误指数(EI)和Kolmogorov-Smirnov(KS)统计量评估其预测能力。进行这项研究的原因是:(1)没有可用的模型来研究物种的dbh分布;(2)确定预测白云杉人工林dbh分布的最佳方法。总共113个样地,包括常用的林分水平变量[林分年龄(A),25年基龄的站点指数(SI),优势树和共性树的平均高度(Hd)和林分密度(SD)]和相关的直径频率分布用于本研究。在这六种预测方法中,基于矩和基于百分位数的参数恢复方法(PRM和PCT),最大似然估计回归(MLER),累积分布函数回归(CDFR)和参数预测方法(PPM)能够应用于对本研究中使用的数据集的直径频率分布进行充分建模。矩百分比估计混合方法(HYBM)表现最差。高度推荐PCT,因为它在拟合和验证数据集方面始终具有最低的EI和K-S统计值。因此,可以使用标准变量(A,SI,Hd,SD)使用此处建立的方法(尤其是PCT方法)在某个时间点预测白云杉人工林的dbh分布。

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