Confronting an individual-based simulation model with empirical community patterns of grasslands.

Grasslands contribute to global biogeochemical cycles and can host a high number of plant species. Both-species dynamics and biogeochemical fluxes-are influenced by abiotic and biotic environmental factors, management and natural disturbances. In order to understand and project grassland dynamics un...

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Main Authors: Franziska Taubert, Jessica Hetzer, Julia Sabine Schmid, Andreas Huth
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0236546
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spelling doaj-511e06e1bc82414098e1fab2e2d2e5922021-03-03T21:59:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01157e023654610.1371/journal.pone.0236546Confronting an individual-based simulation model with empirical community patterns of grasslands.Franziska TaubertJessica HetzerJulia Sabine SchmidAndreas HuthGrasslands contribute to global biogeochemical cycles and can host a high number of plant species. Both-species dynamics and biogeochemical fluxes-are influenced by abiotic and biotic environmental factors, management and natural disturbances. In order to understand and project grassland dynamics under global change, vegetation models which explicitly capture all relevant processes and drivers are required. However, the parameterization of such models is often challenging. Here, we report on testing an individual- and process-based model for simulating the dynamics and structure of a grassland experiment in temperate Europe. We parameterized the model for three species and confront simulated grassland dynamics with empirical observations of their monocultures and one two-species mixture. The model reproduces general trends of vegetation patterns (vegetation cover and height, aboveground biomass and leaf area index) for the monocultures and two-species community. For example, the model simulates well an average annual grassland cover of 70% in the species mixture (observed cover of 77%), but also shows mismatches with specific observation values (e.g. for aboveground biomass). By a sensitivity analysis of the applied inverse model parameterization method, we demonstrate that multiple vegetation attributes are important for a successful parameterization while leaf area index revealed to be of highest relevance. Results of our study pinpoint to the need of improved grassland measurements (esp. of temporally higher resolution) in close combination with advanced modelling approaches.https://doi.org/10.1371/journal.pone.0236546
collection DOAJ
language English
format Article
sources DOAJ
author Franziska Taubert
Jessica Hetzer
Julia Sabine Schmid
Andreas Huth
spellingShingle Franziska Taubert
Jessica Hetzer
Julia Sabine Schmid
Andreas Huth
Confronting an individual-based simulation model with empirical community patterns of grasslands.
PLoS ONE
author_facet Franziska Taubert
Jessica Hetzer
Julia Sabine Schmid
Andreas Huth
author_sort Franziska Taubert
title Confronting an individual-based simulation model with empirical community patterns of grasslands.
title_short Confronting an individual-based simulation model with empirical community patterns of grasslands.
title_full Confronting an individual-based simulation model with empirical community patterns of grasslands.
title_fullStr Confronting an individual-based simulation model with empirical community patterns of grasslands.
title_full_unstemmed Confronting an individual-based simulation model with empirical community patterns of grasslands.
title_sort confronting an individual-based simulation model with empirical community patterns of grasslands.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Grasslands contribute to global biogeochemical cycles and can host a high number of plant species. Both-species dynamics and biogeochemical fluxes-are influenced by abiotic and biotic environmental factors, management and natural disturbances. In order to understand and project grassland dynamics under global change, vegetation models which explicitly capture all relevant processes and drivers are required. However, the parameterization of such models is often challenging. Here, we report on testing an individual- and process-based model for simulating the dynamics and structure of a grassland experiment in temperate Europe. We parameterized the model for three species and confront simulated grassland dynamics with empirical observations of their monocultures and one two-species mixture. The model reproduces general trends of vegetation patterns (vegetation cover and height, aboveground biomass and leaf area index) for the monocultures and two-species community. For example, the model simulates well an average annual grassland cover of 70% in the species mixture (observed cover of 77%), but also shows mismatches with specific observation values (e.g. for aboveground biomass). By a sensitivity analysis of the applied inverse model parameterization method, we demonstrate that multiple vegetation attributes are important for a successful parameterization while leaf area index revealed to be of highest relevance. Results of our study pinpoint to the need of improved grassland measurements (esp. of temporally higher resolution) in close combination with advanced modelling approaches.
url https://doi.org/10.1371/journal.pone.0236546
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