Journal of Plant Ecology ›› 2025, Vol. 18 ›› Issue (2): 1-21.DOI: 10.1093/jpe/rtaf014

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基于两步逼近法量化地理位置、环境和林分对树木异速生长的影响

  

  • 收稿日期:2024-11-14 接受日期:2025-01-26 出版日期:2025-04-01 发布日期:2025-05-31

A two-step approximation for quantifying the effects of geographical location, environment and stand on tree allometry

Yao Huang1,*, and Fei Lu2   

  1. 1State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy of Sciences, Beijing 100093, China
    2State Key Laboratory of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China

    *Corresponding author. E-mail: huangyao@ibcas.ac.cn
  • Received:2024-11-14 Accepted:2025-01-26 Online:2025-04-01 Published:2025-05-31
  • Supported by:
    This work was supported by the National Natural Science Foundation of China (grant numbers 42071063, 32371872).

摘要: 基于树高(H)和胸径(D)的异速生长模型被广泛用于估算森林生物量。尽管环境和林分特征会影响树木异速生长,但鲜有研究将这些影响纳入异速生长模型。为此,本研究以幂函数方程Y = aGb为基本模型(其中Y表示树高或生物量,G为胸径或D2H),提出了一种两步逼近法,以量化环境和林分特征对中国杉木(Cunninghamia lanceolata)和松树(Pinus)异速生长系数ab的影响。结果表明,杉木的异速生长系数主要与林分特征有关,而松树的异速生长系数则受年平均温度、林龄和纬度的影响。两步逼近的异速生长模型Y = f(α + αjxj) Gf (β+βixi(其中xjxi为与环境和林分特征有关的因子,α,αj,β,βi 为回归系数)显著提高了树高和生物量的估算精度。与基本模型相比,两步逼近模型显著降低了观测值与计算值间的平均绝对偏差,杉木降低了25%–34%,松树降低了21%–26%。上述结果强调了在异速生长模型中考虑环境条件和林分特征的必要性,并提供了一种通用的,能在大范围基于树高-胸径关系准确估算树木生物量的方法。

关键词: 异速生长系数, 两步逼近, 环境, 林分特征, 逐步回归, 非线性回归, 森林

Abstract: Tree allometric models based on height (H) and diameter (D) are the most commonly used method to estimate forest biomass. Environments and stand characteristics are recognized to affect tree allometries. However, few studies have considered to incorporate these effects into allometric models, which restricts the use of these models in a wide domain. Adopting the power-law function Y = aGb as a basic model where Y is either tree height or biomass and the corresponding G is tree diameter D at breast height or D2H, we developed a two-step approximation procedure to quantify the effects of environments and stand characteristics on allometric coeffcients a and b for Cunninghamia lanceolata and Pinus forest in China. Results show that most of the allometric coeffcients are dependent on stand characteristics for C. lanceolata forest, and on mean annual temperature, stand age and latitude for Pinus forest. The allometric models via the two-step approximation Y = f(α + αjxj) Gf (β+βixi) (xj or xi are key drivers associated with environments and stand characteristics. α, αj,β and βi are regression coeffcients) considerably improved the accuracy of tree height and biomass estimation. Compared to the basic model, the second approximation models signifcantly reduced the mean absolute bias between the observed and computed values by 25%–34% for C. lanceolata and by 21%–26% for Pinus forest, respectively. Our results highlight the necessity of incorporating environments and stand characteristics into the allometric models and provide a universal method to accurately estimate H-D-based tree biomass across a wider domain.

Key words: allometric coeffcient, two-step approximation, environment, stand characteristics, stepwise regression, nonlinear regression, forest