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A modeling framework for inferring tree growth and allocation from physiological, morphological and allometric traits

期刊

TREE PHYSIOLOGY
卷 29, 期 4, 页码 587-605

出版社

OXFORD UNIV PRESS
DOI: 10.1093/treephys/tpn051

关键词

Acer rubrum; carbon allocation; carbon reserves; carbon storage; growth model; labile carbon; loblolly pine; Pinus taeda; red maple; retranslocation; shade-tolerance; succession; tree mortality

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资金

  1. National Science Foundation [0630119]
  2. Div Of Biological Infrastructure
  3. Direct For Biological Sciences [0630119] Funding Source: National Science Foundation

向作者/读者索取更多资源

Predictions of forest succession, diversity and function require in understanding of how species differ in their growth. allocation patterns and susceptibility to mortality. These processes in turn are affected by allometric constrainsts and the physiological state of the tree, both of which are coupled to the tree's labile carbon status. Ultimately, insight into the hidden labile pools and the processes affecting the allocation of labile carbon to storage, maintenance and growth will improve our ability to predict growth, mortality and forest dynamics. We developed the 'Allometrically Constrained Growth and Carbon Allocation' (ACGCA) model that explicitly couples tree growth, mortality, allometries and labile carbon. This coupling results in (1) a semi-mechanistic basis for predicting tree death, (2) an allocation scheme that simultaneously satisfies allometric relationships and physiology-based carbon dynamics and (3) a range of physiological states that are consistent with tree behavior (e.g., healthy, static, shrinking, recovering, recovered and dead). We present the ACGCA model and illustrate aspects of its behavior by conducting simultations under different forest gap dynamics scenarios and with parameter values obtained for two ecologically dissimilar species: loblolly pine (Pinus taeda L.) and red maple (Acer rubrum L.). The model reproduces growth and mortality patterns of these species that are consistent with their shade-tolerance and succession status. The ACGCA framework provides an alternative, and potentially improved. approach for predicting tree growth, mortality and forest dynamics.

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