Modelling the habitat preference of two key <i>Sphagnum</i> species in a poor fen as controlled by capitulum water content

Author:

Gong Jinnan,Roulet NigelORCID,Frolking SteveORCID,Peltola Heli,Laine Anna M.ORCID,Kokkonen Nicola,Tuittila Eeva-StiinaORCID

Abstract

Abstract. Current peatland models generally treat vegetation as static, although plant community structure is known to alter as a response to environmental change. Because the vegetation structure and ecosystem functioning are tightly linked, realistic projections of peatland response to climate change require the inclusion of vegetation dynamics in ecosystem models. In peatlands, Sphagnum mosses are key engineers. Moss community composition primarily follows habitat moisture conditions. The known species habitat preference along the prevailing moisture gradient might not directly serve as a reliable predictor for future species compositions, as water table fluctuation is likely to increase. Hence, modelling the mechanisms that control the habitat preference of Sphagna is a good first step for modelling community dynamics in peatlands. In this study, we developed the Peatland Moss Simulator (PMS), which simulates the community dynamics of the peatland moss layer. PMS is a process-based model that employs a stochastic, individual-based approach for simulating competition within the peatland moss layer based on species differences in functional traits. At the shoot-level, growth and competition were driven by net photosynthesis, which was regulated by hydrological processes via the capitulum water content. The model was tested by predicting the habitat preferences of Sphagnum magellanicum and Sphagnum fallax – two key species representing dry (hummock) and wet (lawn) habitats in a poor fen peatland (Lakkasuo, Finland). PMS successfully captured the habitat preferences of the two Sphagnum species based on observed variations in trait properties. Our model simulation further showed that the validity of PMS depended on the interspecific differences in the capitulum water content being correctly specified. Neglecting the water content differences led to the failure of PMS to predict the habitat preferences of the species in stochastic simulations. Our work highlights the importance of the capitulum water content with respect to the dynamics and carbon functioning of Sphagnum communities in peatland ecosystems. Thus, studies of peatland responses to changing environmental conditions need to include capitulum water processes as a control on moss community dynamics. Our PMS model could be used as an elemental design for the future development of dynamic vegetation models for peatland ecosystems.

Publisher

Copernicus GmbH

Subject

Earth-Surface Processes,Ecology, Evolution, Behavior and Systematics

Reference105 articles.

1. Alekseychik, P., Lindroth, A., Mammarella, I., Lund, M., Rinne, J., Kasurinen, V., Nilsson, M., Peichl, M., Lohila, A., Aurela, M., Laurila, T., Shurpali, N., Tuittila, E.-S., Martikainen, P. M., and Vesala, T.: Surface energy exchange in natural and managed Fennoscandian peatlands, Mires and Peat, 21, 1–26, https://doi.org/10.19189/MaP.2018.OMB.333, 2018.

2. Alm, J., Shurpali, N. J., Tuittila, E.-S., Laurila, T., Maljanen, M., Saarnio, S., and Minkkinen, K.: Methods for determining emission factors for the use of peat and peatlands – flux measurements and modelling, Boreal Environ. Res., 12, 85–100, 2007.

3. Amarasekare, P.: Competitive coexistence in spatially structured environments: A synthesis, Ecol. Lett., 6, 1109–1122, 2003.

4. Anderson K. and Neuhauser C.: Patterns in spatial simulations – are they real?, Ecol. Model., 155, 19–30, 2000.

5. Andrus R. E.: Some aspects of Sphagnum ecology, Can. J. Bot., 64, 416–426, 1986.

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