This is a Preprint and has not been peer reviewed. The published version of this Preprint is available: https://doi.org/10.1007/s10533-021-00851-2. This is version 3 of this Preprint.
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Abstract
Coupled biogeochemical cycles drive ecosystem ecology by influencing individual-to-community scale behaviors; yet the development of process-based models that accurately capture these dynamics remains elusive. Soil organic matter (SOM) decomposition in particular is influenced by resource stoichiometry that dictates microbial nutrient acquisition (‘ecological stoichiometry’). Despite its basis in biogeochemical modeling, ecological stoichiometry is only implicitly considered in many high-resolution microbial investigations and the metabolic models they inform. State-of-science SOM decomposition models in both fields have advanced largely separately, but they agree on a need to move beyond pool-based models. This presents an opportunity and a challenge to maximize the strengths of various models across different scales and environmental contexts. To address this challenge, we contend that ecological stoichiometry provides a framework for merging biogeochemical and microbiological models, as both explicitly consider substrate chemistries that are the basis of ecological stoichiometry as applied to SOM decomposition. We highlight two gaps that limit our understanding of SOM decomposition: (1) understanding how individual microorganisms alter metabolic strategies in response to substrate stoichiometry and (2) translating this knowledge to the scale of biogeochemical models. We suggest iterative information exchange to refine the objectives of high-resolution investigations and to specify limited dynamics for representation in large-scale models, resulting in a new class of omics-enabled biogeochemical models. Assimilating theoretical and modelling frameworks from different scientific domains is the next frontier in SOM decomposition modelling, and advancing technologies in the context of stoichiometric theory provides a consistent framework for interpreting molecular data, and further distilling this information into tractable SOM decomposition models.
DOI
https://doi.org/10.32942/osf.io/4yzk3
Subjects
Ecology and Evolutionary Biology, Life Sciences, Terrestrial and Aquatic Ecology
Keywords
Carbon cycling, carbon use efficiency, ecosystem models, Microbiome, nitrogen cycling, soil nutrients, stoichiometry
Dates
Published: 2021-02-14 01:17
Last Updated: 2021-07-01 08:41
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CC-By Attribution-NonCommercial-NoDerivatives 4.0 International
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