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首页> 外文期刊>Forest Ecology and Management >A method for classifying commercial tree species of an uneven-aged mixed species tropical forest for growth and yield model construction.
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A method for classifying commercial tree species of an uneven-aged mixed species tropical forest for growth and yield model construction.

机译:一种用于分类不均年龄混合物种热带森林的商业树种以进行生长和产量模型构建的方法。

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摘要

The sparse distribution of timber species in the tropical rain forest has been a major obstacle in the construction of timber growth and yield models for forest management planning. Models for individual species usually have biased parameter estimates because of the sparse representation of those species. A technique is presented for pooling species with similar growth characteristics into groups to minimize the level of bias in the estimation of model parameters. The data set used consisted of mean annual increments of diameter growth generated from 3 successive 5-yr measurements of forty 1-ha plots from 4 management units within the moist semideciduous forests of Ghana. Principal component, canonical discriminant, and approximate covariance estimation for clustering procedures were used to transform and improve the sphericity and separation of multivariate diameter increment data. The k-th nearest neighbour clustering technique was used to evaluate the most likely number of species clusters within the population covered by the data. The average linkage, complete linkage, and Ward's minimum variance hierarchical clustering procedures were separately applied to the transformed data to identify the characteristics of inherent structures as the basis for classifying similar species into groups. An objective reclassification criterion was used to evaluate the performance of the 3 clustering methods. Optimal species groupings were attained, with 86.3% cluster recovery, by applying Ward's minimum variance method to data transformed by the canonical discriminant procedure. Consequently, 6 species growth classes were formed on the basis of the similarities of species growth increment patterns. This objective procedure is guaranteed to produce optimalspecies groups, with minimal internal variations, suitable for developing unbiased estimates of growth model parameters. The analytical procedure should be applicable to most tropical forest ecological types similar to the moist semideciduous forest.
机译:热带雨林中木材种类的稀疏分布一直是构建用于森林管理规划的木材生长和产量模型的主要障碍。由于这些物种的稀疏表示,单个物种的模型通常具有偏差的参数估计。提出了一种将具有相似生长特征的物种合并到组中以最小化模型参数估计中的偏差水平的技术。所使用的数据集由加纳潮湿的半落叶林内4个管理单位对40个1公顷土地的3个连续5年测量产生的直径增长的平均年增量组成。使用主成分,规范判别和聚类程序的近似协方差估计来变换和改善多元直径增量数据的球形度和分离度。第k个最近邻聚类技术用于评估数据覆盖的种群内物种簇的最可能数目。将平均链接,完全链接和Ward的最小方差分层聚类程序分别应用于转换后的数据,以识别固有结构的特征,以此作为将相似物种分类的基础。使用客观的重新分类标准来评估3种聚类方法的性能。通过将Ward的最小方差方法应用于通过规范判别程序转换的数据,可获得最佳的物种分组,群集恢复率为86.3%。因此,根据物种生长增量模式的相似性,形成了6个物种生长类别。该客观程序可确保产生具有最小内部变化的最优物种组,适合于对生长模型参数进行无偏估计。该分析程序应适用于大多数热带森林生态类型,类似于潮湿的半落叶林。

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