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A predictive nondestructive model for the covariation of tree height diameter and stem volume scaling relationships

机译:树木高度直径和茎体积比例关系的协变的预测性非破坏性模型

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摘要

Metabolic scaling theory (MST) posits that the scaling exponents among plant height H, diameter D, and biomass M will covary across phyletically diverse species. However, the relationships between scaling exponents and normalization constants remain unclear. Therefore, we developed a predictive model for the covariation of H, D, and stem volume V scaling relationships and used data from Chinese fir (Cunninghamia lanceolata) in Jiangxi province, China to test it. As predicted by the model and supported by the data, normalization constants are positively correlated with their associated scaling exponents for D vs. V and H vs. V, whereas normalization constants are negatively correlated with the scaling exponents of H vs. D. The prediction model also yielded reliable estimations of V (mean absolute percentage error = 10.5 ± 0.32 SE across 12 model calibrated sites). These results (1) support a totally new covariation scaling model, (2) indicate that differences in stem volume scaling relationships at the intra-specific level are driven by anatomical or ecophysiological responses to site quality and/or management practices, and (3) provide an accurate non-destructive method for predicting Chinese fir stem volume.
机译:代谢比例缩放理论(MST)认为,植物高度H,直径D和生物量M之间的缩放比例指数将跨越物种多样的物种而变化。但是,缩放指数和归一化常数之间的关系仍然不清楚。因此,我们开发了H,D和茎体积V比例关系的协变预测模型,并使用了来自中国江西省杉木(Cunninghamia lanceolata)的数据进行了检验。如模型所预测并得到数据的支持,归一化常数与D对V和H对V的标度指数正相关,而归一化常数与H对D的标度指数负相关。该模型还得出了可靠的V估计值(12个模型校准点的平均绝对百分比误差= 10.5±0.32 SE)。这些结果(1)支持全新的协变缩放模型,(2)表明种内水平上茎体积缩放关系的差异是由对站点质量和/或管理实践的解剖或生态生理响应所驱动的;以及(3)提供了一种准确的无损方法来预测杉树茎的体积。

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