Literature DB >> 32846039

Structure and parameter uncertainty in centennial projections of forest community structure and carbon cycling.

Alexey N Shiklomanov1,2, Ben Bond-Lamberty2, Jeff W Atkins3, Christopher M Gough3.   

Abstract

Secondary forest regrowth shapes community succession and biogeochemistry for decades, including in the Upper Great Lakes region. Vegetation models encapsulate our understanding of forest function, and whether models can reproduce multi-decadal succession patterns is an indication of our ability to predict forest responses to future change. We test the ability of a vegetation model to simulate C cycling and community composition during 100 years of forest regrowth following stand-replacing disturbance, asking (a) Which processes and parameters are most important to accurately model Upper Midwest forest succession? (b) What is the relative importance of model structure versus parameter values to these predictions? We ran ensembles of the Ecosystem Demography model v2.2 with different representations of processes important to competition for light. We compared the magnitude of structural and parameter uncertainty and assessed which sub-model-parameter combinations best reproduced observed C fluxes and community composition. On average, our simulations underestimated observed net primary productivity (NPP) and leaf area index (LAI) after 100 years and predicted complete dominance by a single plant functional type (PFT). Out of 4,000 simulations, only nine fell within the observed range of both NPP and LAI, but these predicted unrealistically complete dominance by either early hardwood or pine PFTs. A different set of seven simulations were ecologically plausible but under-predicted observed NPP and LAI. Parameter uncertainty was large; NPP and LAI ranged from ~0% to >200% of their mean value, and any PFT could become dominant. The two parameters that contributed most to uncertainty in predicted NPP were plant-soil water conductance and growth respiration, both unobservable empirical coefficients. We conclude that (a) parameter uncertainty is more important than structural uncertainty, at least for ED-2.2 in Upper Midwest forests and (b) simulating both productivity and plant community composition accurately without physically unrealistic parameters remains challenging for demographic vegetation models.
© 2020 John Wiley & Sons Ltd.

Entities:  

Keywords:  canopy radiative transfer; demographic vegetation modeling; forest succession; temperate deciduous forest; terrestrial carbon cycle; uncertainty analysis

Year:  2020        PMID: 32846039     DOI: 10.1111/gcb.15164

Source DB:  PubMed          Journal:  Glob Chang Biol        ISSN: 1354-1013            Impact factor:   10.863


  2 in total

1.  Climate Drives Modeled Forest Carbon Cycling Resistance and Resilience in the Upper Great Lakes Region, USA.

Authors:  Kalyn Dorheim; Christopher M Gough; Lisa T Haber; Kayla C Mathes; Alexey N Shiklomanov; Ben Bond-Lamberty
Journal:  J Geophys Res Biogeosci       Date:  2022-01-13       Impact factor: 4.432

2.  Liana optical traits increase tropical forest albedo and reduce ecosystem productivity.

Authors:  Félicien Meunier; Marco D Visser; Alexey Shiklomanov; Michael C Dietze; J Antonio Guzmán Q; G Arturo Sanchez-Azofeifa; Hannes P T De Deurwaerder; Sruthi M Krishna Moorthy; Stefan A Schnitzer; David C Marvin; Marcos Longo; Chang Liu; Eben N Broadbent; Angelica M Almeyda Zambrano; Helene C Muller-Landau; Matteo Detto; Hans Verbeeck
Journal:  Glob Chang Biol       Date:  2021-10-30       Impact factor: 13.211

  2 in total

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