叶面积从季节到十年动态变化的一般模型

IF 10.8 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Boya Zhou, Wenjia Cai, Ziqi Zhu, Han Wang, Sandy P. Harrison, I. Colin Prentice
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引用次数: 0

摘要

在生态系统尺度上,以叶面积指数(LAI)的季节动态为代表的叶物候是陆地与大气之间CO2、能量和水分交换的关键控制因子。因此,叶片物候的可靠模拟对于动态全球植被模型(dgvm)以及气候和地球系统模型中的陆地表面表征都很重要。关于叶片物候学应该如何建模,目前还没有普遍的共识。然而,最近的一项理论进展假设了“稳态”初级生产总值(GPP)和LAI的时间过程之间的普遍关系-即,如果天气条件保持不变,LAI和GPP将相互一致。该理论通过(a) GPP对LAI的Beer’s law依赖,(b) GPP支持碳分配给叶片的要求,结合LAI与GPP的互反关系,体现了叶子应该在最有利于植物的时候出现的理念。在这里,我们开发了一个全球预测LAI模型,将该理论方法与参数稀疏陆地GPP模型(P模型)相结合,该模型与所有生物群落通量塔得出的GPP很好地拟合,以及基于P模型的方案,该方案预测季节性最大LAI为能量限制率(最大化GPP)和水限制率(最大化可利用降水)的较小值。采用指数移动平均法表示叶片分配与模型稳态LAI之间的时滞。该模型在站点和全球水平上捕获了卫星衍生的跨生物群系的LAI动态。由于该模型优于trend项目中使用的15个dgvm,因此可以为植被和气候模型中叶面积动态的改进表示提供基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A General Model for the Seasonal to Decadal Dynamics of Leaf Area

A General Model for the Seasonal to Decadal Dynamics of Leaf Area

A General Model for the Seasonal to Decadal Dynamics of Leaf Area

Leaf phenology, represented at the ecosystem scale by the seasonal dynamics of leaf area index (LAI), is a key control on the exchanges of CO2, energy, and water between the land and atmosphere. Robust simulation of leaf phenology is thus important for both dynamic global vegetation models (DGVMs) and land-surface representations in climate and Earth System models. There is no general agreement on how leaf phenology should be modeled. However, a recent theoretical advance posits a universal relationship between the time course of “steady-state” gross primary production (GPP) and LAI—that is, the mutually consistent LAI and GPP that would pertain if weather conditions were held constant. This theory embodies the concept that leaves should be displayed when their presence is most beneficial to plants, combined with the reciprocal relationship of LAI and GPP via (a) the Beer's law dependence of GPP on LAI, and (b) the requirement for GPP to support the allocation of carbon to leaves. Here we develop a global prognostic LAI model, combining this theoretical approach with a parameter-sparse terrestrial GPP model (the P model) that achieves a good fit to GPP derived from flux towers in all biomes and a scheme based on the P model that predicts seasonal maximum LAI as the lesser of an energy-limited rate (maximizing GPP) and a water-limited rate (maximizing the use of available precipitation). The exponential moving average method is used to represent the time lag between leaf allocation and modeled steady-state LAI. The model captures satellite-derived LAI dynamics across biomes at both site and global levels. Since this model outperforms the 15 DGVMs used in the TRENDY project, it could provide a basis for improved representation of leaf-area dynamics in vegetation and climate models.

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来源期刊
Global Change Biology
Global Change Biology 环境科学-环境科学
CiteScore
21.50
自引率
5.20%
发文量
497
审稿时长
3.3 months
期刊介绍: Global Change Biology is an environmental change journal committed to shaping the future and addressing the world's most pressing challenges, including sustainability, climate change, environmental protection, food and water safety, and global health. Dedicated to fostering a profound understanding of the impacts of global change on biological systems and offering innovative solutions, the journal publishes a diverse range of content, including primary research articles, technical advances, research reviews, reports, opinions, perspectives, commentaries, and letters. Starting with the 2024 volume, Global Change Biology will transition to an online-only format, enhancing accessibility and contributing to the evolution of scholarly communication.
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