A machine learning approach targeting parameter estimation for plant functional type coexistence modeling using ELM-FATES (v2.0)
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Published:2023-07-17
Issue:14
Volume:16
Page:4017-4040
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Li LingchengORCID, Fang YilinORCID, Zheng ZhonghuaORCID, Shi Mingjie, Longo MarcosORCID, Koven Charles D.ORCID, Holm Jennifer A.ORCID, Fisher Rosie A., McDowell Nate G., Chambers Jeffrey, Leung L. RubyORCID
Abstract
Abstract. Tropical forest dynamics play a crucial role in the global carbon, water,
and energy cycles. However, realistically simulating the dynamics of
competition and coexistence between different plant functional types (PFTs)
in tropical forests remains a significant challenge. This study aims to
improve the modeling of PFT coexistence in the Functionally Assembled
Terrestrial Ecosystem Simulator (FATES), a vegetation demography model
implemented in the Energy Exascale Earth System Model (E3SM) land model
(ELM), ELM-FATES. Specifically, we explore (1) whether plant trait
relationships established from field measurements can constrain ELM-FATES
simulations and (2) whether machine learning (ML)-based surrogate models
can emulate the complex ELM-FATES model and optimize parameter selections to
improve PFT coexistence modeling. We conducted three ensembles of ELM-FATES
experiments at a tropical forest site near Manaus, Brazil. By comparing the
ensemble experiments without (Exp-CTR) and with (Exp-OBS) consideration of
observed trait relationships, we found that accounting for these
relationships slightly improves the simulations of water, energy, and carbon
variables when compared to observations but degrades the simulation of PFT
coexistence. Using ML-based surrogate models trained on Exp-CTR, we
optimized the trait parameters in ELM-FATES and conducted another ensemble
of experiments (Exp-ML) with these optimized parameters. The proportion of
PFT coexistence experiments significantly increased from 21 % in Exp-CTR
to 73 % in Exp-ML. After filtering the experiments that allow for PFT
coexistence to agree with observations (within 15 % tolerance), 33 % of
the Exp-ML experiments were retained, which is a significant improvement
compared to the 1.4 % in Exp-CTR. Exp-ML also accurately reproduces the annual
means and seasonal variations in water, energy, and carbon fluxes and the
field inventory of aboveground biomass. This study represents a
reproducible method that utilizes machine learning to identify parameter
values that improve model fidelity against observations and PFT coexistence
in vegetation demography models for diverse ecosystems. Our study also
suggests the need for new mechanisms to enhance the robust simulation of
coexisting plants in ELM-FATES and has significant implications for
modeling the response and feedbacks of ecosystem dynamics to climate change.
Publisher
Copernicus GmbH
Reference138 articles.
1. Adler, P. B., HilleRisLambers, J., Kyriakidis, P. C., Guan, Q., and Levine,
J. M.: Climate variability has a stabilizing effect on the coexistence of
prairie grasses, P. Natl. Acad. Sci. USA, 103, 12793–12798,
https://doi.org/10.1073/pnas.0600599103, 2006. 2. Adler, P. B., Fajardo, A., Kleinhesselink, A. R., and Kraft, N. J. B.:
Trait-based tests of coexistence mechanisms, Ecol. Lett., 16, 1294–1306,
https://doi.org/10.1111/ele.12157, 2013. 3. Angert, A. L., Huxman, T. E., Chesson, P., and Venable, D. L.: Functional
tradeoffs determine species coexistence via the storage effect, P.
Natl. Acad. Sci. USA, 106, 11641–11645,
https://doi.org/10.1073/pnas.0904512106, 2009. 4. Antoniadis, A., Lambert-Lacroix, S., and Poggi, J.-M.: Random forests for
global sensitivity analysis: A selective review, Reliab. Eng. Syst. Safe., 206,
107312, https://doi.org/10.1016/j.ress.2020.107312, 2020. 5. Bauman, D., Fortunel, C., Delhaye, G., Malhi, Y., Cernusak, L. A., Bentley,
L. P., Rifai, S. W., Aguirre-Gutiérrez, J., Menor, I. O., Phillips, O.
L., McNellis, B. E., Bradford, M., Laurance, S. G. W., Hutchinson, M. F.,
Dempsey, R., Santos-Andrade, P. E., Ninantay-Rivera, H. R., Paucar, J. R.
C., and McMahon, S. M.: Tropical tree mortality has increased with rising
atmospheric water stress, Nature, 608, 1–6,
https://doi.org/10.1038/s41586-022-04737-7, 2022.
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