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    天山云杉天然林优势高估计方法研究

    Estimation methods for dominant height in natural pure stands of Picea schrenkiana var. tianschanica

    • 摘要:
      目的 为筛选天山云杉天然林最优的优势高估计方法,本研究比较分析了7种方法的优劣,为区域森林立地质量评价提供科学依据。
      方法 基于新疆天山林区3块1 hm2样地,以传统方法、调整最大树法、小样地估计和U估计法为基础,采用胸径最大树与树高最高树两种优势木选择策略,构建7种林分优势高估计方法。通过相关性与差异性检验,分析各方法间的关系;设置不同子样地面积和密度梯度,确定优势高估计趋于稳定的阈值范围;采用偏差和分层标准差量化不确定性,并与林分蓄积、平均胸径、生物量等因子进行相关性分析,综合筛选最优估计方法。
      结果 (1)各优势高估计方法的相关系数在0.76 ~ 0.99之间,且表现出显著差异;(2)优势高趋于稳定的样地面积阈值为0.06 ~ 0.13 hm2,林分密度阈值为500 ~ 1000 株/hm2;(3)以最高树为选择策略的调整最大树法(5.99)和U估计方法(6.02)产生的不确定性最小;(4)各优势高估计方法与林分因子间有强相关性,以最高树为选择策略的调整最大树法为天山云杉天然林优势高估计的最优方法。
      结论 本研究确定的调整最大树法(最高树策略)适用于天山云杉天然林优势高估计,可为该区域天然林立地质量评价提供技术支撑。

       

      Abstract:
      Objective To select the optimal dominant height estimation method for natural Picea schrenkiana forests in the Tianshan Mountains, this study compared seven methods to provide a scientific basis for regional forest site quality evaluation.
      Method Based on three 1 hm2 sample plots in the Tianshan region of Xinjiang, seven stand dominant height estimation methods were constructed using the traditional method, modified largest tree method, small plot estimation, and U-estimation method as foundations, combined with two dominant tree selection strategies (largest DBH trees and tallest trees). The relationships among methods were analyzed through correlation and difference tests. Different sub-plot sizes and density gradients were established to determine the threshold ranges where dominant height estimation stabilized. Uncertainty was quantified using bias and stratified standard deviation, and correlation analysis with stand volume, mean DBH, biomass, and other factors was conducted to comprehensively select the optimal method.
      Result  (1) Correlation coefficients among the different dominant height estimation methods ranged from 0.76 to 0.99, with significant differences detected among them. (2) The threshold plot area for stable dominant height estimation was 0.06–0.13 hm2, and the stand density threshold was 500–1,000 trees/hm2. (3) The modified largest tree method (5.99) and U-estimation method (6.02) using the tallest tree selection strategy produced the smallest uncertainty. (4) All dominant height estimation methods showed strong correlations with stand factors, and the modified largest tree method (tallest tree strategy) was identified as the optimal method for natural Picea schrenkiana forests.
      Conclusion  The modified largest tree method (tallest tree strategy) identified in this study is suitable for dominant height estimation in natural Picea schrenkiana forests and can provide technical support for site quality evaluation of natural forests in this region.

       

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