Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2)

Research output: Contribution to journalJournal articleResearchpeer-review

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Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2). / Meunier, Félicien; Krishna Moorthy, Sruthi M.; Peaucelle, Marc; Calders, Kim; Terryn, Louise; Verbruggen, Wim; Liu, Chang; Saarinen, Ninni; Origo, Niall; Nightingale, Joanne; Disney, Mathias; Malhi, Yadvinder; Verbeeck, Hans.

In: Geoscientific Model Development, Vol. 15, No. 12, 2022, p. 4783-4803.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Meunier, F, Krishna Moorthy, SM, Peaucelle, M, Calders, K, Terryn, L, Verbruggen, W, Liu, C, Saarinen, N, Origo, N, Nightingale, J, Disney, M, Malhi, Y & Verbeeck, H 2022, 'Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2)', Geoscientific Model Development, vol. 15, no. 12, pp. 4783-4803. https://doi.org/10.5194/gmd-15-4783-2022

APA

Meunier, F., Krishna Moorthy, S. M., Peaucelle, M., Calders, K., Terryn, L., Verbruggen, W., Liu, C., Saarinen, N., Origo, N., Nightingale, J., Disney, M., Malhi, Y., & Verbeeck, H. (2022). Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2). Geoscientific Model Development, 15(12), 4783-4803. https://doi.org/10.5194/gmd-15-4783-2022

Vancouver

Meunier F, Krishna Moorthy SM, Peaucelle M, Calders K, Terryn L, Verbruggen W et al. Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2). Geoscientific Model Development. 2022;15(12):4783-4803. https://doi.org/10.5194/gmd-15-4783-2022

Author

Meunier, Félicien ; Krishna Moorthy, Sruthi M. ; Peaucelle, Marc ; Calders, Kim ; Terryn, Louise ; Verbruggen, Wim ; Liu, Chang ; Saarinen, Ninni ; Origo, Niall ; Nightingale, Joanne ; Disney, Mathias ; Malhi, Yadvinder ; Verbeeck, Hans. / Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2). In: Geoscientific Model Development. 2022 ; Vol. 15, No. 12. pp. 4783-4803.

Bibtex

@article{c7c318754e8b458a9f8aa7abe953847b,
title = "Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2)",
abstract = "Terrestrial biosphere models (TBMs) are invaluable tools for studying plant-atmosphere interactions at multiple spatial and temporal scales, as well as how global change impacts ecosystems. Yet, TBM projections suffer from large uncertainties that limit their usefulness. Forest structure drives a significant part of TBM uncertainty as it regulates key processes such as the transfer of carbon, energy, and water between the land and the atmosphere, but it remains challenging to observe and reliably represent. The poor representation of forest structure in TBMs might actually result in simulations that reproduce observed land fluxes but fail to capture carbon pools, forest composition, and demography. Recent advances in terrestrial laser scanning (TLS) offer new opportunities to capture the three-dimensional structure of the ecosystem and to transfer this information to TBMs in order to increase their accuracy. In this study, we quantified the impacts of prescribing initial conditions (tree size distribution), constraining key model parameters with observations, as well as imposing structural observations of individual trees (namely tree height, leaf area, woody biomass, and crown area) derived from TLS on the state-of-the-art Ecosystem Demography model (ED2.2) of a temperate forest site (Wytham Woods, UK). We assessed the relative contributions of initial conditions, model structure, and parameters to the overall output uncertainty by running ensemble simulations with multiple model configurations. We show that forest demography and ecosystem functions as modelled by ED2.2 are sensitive to the imposed initial state, the model parameters, and the choice of key model processes. In particular, we show that: Parameter uncertainty drove the overall model uncertainty, with a mean contribution of 63ĝ€¯% to the overall variance of simulated gross primary production. Model uncertainty in the gross primary production was reduced fourfold when both TLS and trait data were integrated into the model configuration. Land fluxes and ecosystem composition could be simultaneously and accurately simulated with physically realistic parameters when appropriate constraints were applied to critical parameters and processes. We conclude that integrating TLS data can inform TBMs of the most adequate model structure, constrain critical parameters, and prescribe representative initial conditions. Our study also confirms the need for simultaneous observations of plant traits, structure, and state variables if we seek to improve the robustness of TBMs and reduce their overall uncertainties. ",
author = "F{\'e}licien Meunier and {Krishna Moorthy}, {Sruthi M.} and Marc Peaucelle and Kim Calders and Louise Terryn and Wim Verbruggen and Chang Liu and Ninni Saarinen and Niall Origo and Joanne Nightingale and Mathias Disney and Yadvinder Malhi and Hans Verbeeck",
note = "Publisher Copyright: {\textcopyright} 2022 F{\'e}licien Meunier et al.",
year = "2022",
doi = "10.5194/gmd-15-4783-2022",
language = "English",
volume = "15",
pages = "4783--4803",
journal = "Geoscientific Model Development",
issn = "1991-959X",
publisher = "Copernicus GmbH",
number = "12",

}

RIS

TY - JOUR

T1 - Using terrestrial laser scanning to constrain forest ecosystem structure and functions in the Ecosystem Demography model (ED2.2)

AU - Meunier, Félicien

AU - Krishna Moorthy, Sruthi M.

AU - Peaucelle, Marc

AU - Calders, Kim

AU - Terryn, Louise

AU - Verbruggen, Wim

AU - Liu, Chang

AU - Saarinen, Ninni

AU - Origo, Niall

AU - Nightingale, Joanne

AU - Disney, Mathias

AU - Malhi, Yadvinder

AU - Verbeeck, Hans

N1 - Publisher Copyright: © 2022 Félicien Meunier et al.

PY - 2022

Y1 - 2022

N2 - Terrestrial biosphere models (TBMs) are invaluable tools for studying plant-atmosphere interactions at multiple spatial and temporal scales, as well as how global change impacts ecosystems. Yet, TBM projections suffer from large uncertainties that limit their usefulness. Forest structure drives a significant part of TBM uncertainty as it regulates key processes such as the transfer of carbon, energy, and water between the land and the atmosphere, but it remains challenging to observe and reliably represent. The poor representation of forest structure in TBMs might actually result in simulations that reproduce observed land fluxes but fail to capture carbon pools, forest composition, and demography. Recent advances in terrestrial laser scanning (TLS) offer new opportunities to capture the three-dimensional structure of the ecosystem and to transfer this information to TBMs in order to increase their accuracy. In this study, we quantified the impacts of prescribing initial conditions (tree size distribution), constraining key model parameters with observations, as well as imposing structural observations of individual trees (namely tree height, leaf area, woody biomass, and crown area) derived from TLS on the state-of-the-art Ecosystem Demography model (ED2.2) of a temperate forest site (Wytham Woods, UK). We assessed the relative contributions of initial conditions, model structure, and parameters to the overall output uncertainty by running ensemble simulations with multiple model configurations. We show that forest demography and ecosystem functions as modelled by ED2.2 are sensitive to the imposed initial state, the model parameters, and the choice of key model processes. In particular, we show that: Parameter uncertainty drove the overall model uncertainty, with a mean contribution of 63ĝ€¯% to the overall variance of simulated gross primary production. Model uncertainty in the gross primary production was reduced fourfold when both TLS and trait data were integrated into the model configuration. Land fluxes and ecosystem composition could be simultaneously and accurately simulated with physically realistic parameters when appropriate constraints were applied to critical parameters and processes. We conclude that integrating TLS data can inform TBMs of the most adequate model structure, constrain critical parameters, and prescribe representative initial conditions. Our study also confirms the need for simultaneous observations of plant traits, structure, and state variables if we seek to improve the robustness of TBMs and reduce their overall uncertainties.

AB - Terrestrial biosphere models (TBMs) are invaluable tools for studying plant-atmosphere interactions at multiple spatial and temporal scales, as well as how global change impacts ecosystems. Yet, TBM projections suffer from large uncertainties that limit their usefulness. Forest structure drives a significant part of TBM uncertainty as it regulates key processes such as the transfer of carbon, energy, and water between the land and the atmosphere, but it remains challenging to observe and reliably represent. The poor representation of forest structure in TBMs might actually result in simulations that reproduce observed land fluxes but fail to capture carbon pools, forest composition, and demography. Recent advances in terrestrial laser scanning (TLS) offer new opportunities to capture the three-dimensional structure of the ecosystem and to transfer this information to TBMs in order to increase their accuracy. In this study, we quantified the impacts of prescribing initial conditions (tree size distribution), constraining key model parameters with observations, as well as imposing structural observations of individual trees (namely tree height, leaf area, woody biomass, and crown area) derived from TLS on the state-of-the-art Ecosystem Demography model (ED2.2) of a temperate forest site (Wytham Woods, UK). We assessed the relative contributions of initial conditions, model structure, and parameters to the overall output uncertainty by running ensemble simulations with multiple model configurations. We show that forest demography and ecosystem functions as modelled by ED2.2 are sensitive to the imposed initial state, the model parameters, and the choice of key model processes. In particular, we show that: Parameter uncertainty drove the overall model uncertainty, with a mean contribution of 63ĝ€¯% to the overall variance of simulated gross primary production. Model uncertainty in the gross primary production was reduced fourfold when both TLS and trait data were integrated into the model configuration. Land fluxes and ecosystem composition could be simultaneously and accurately simulated with physically realistic parameters when appropriate constraints were applied to critical parameters and processes. We conclude that integrating TLS data can inform TBMs of the most adequate model structure, constrain critical parameters, and prescribe representative initial conditions. Our study also confirms the need for simultaneous observations of plant traits, structure, and state variables if we seek to improve the robustness of TBMs and reduce their overall uncertainties.

U2 - 10.5194/gmd-15-4783-2022

DO - 10.5194/gmd-15-4783-2022

M3 - Journal article

AN - SCOPUS:85132984923

VL - 15

SP - 4783

EP - 4803

JO - Geoscientific Model Development

JF - Geoscientific Model Development

SN - 1991-959X

IS - 12

ER -

ID: 313052385