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Predictions of biodiversity are improved by integrating trait‐based competition with abiotic filtering

Loïc Chalmandrier, Daniel B. Stouffer, Adam S. T. Purcell, William G. Lee, Andrew J. Tanentzap, Daniel C. Laughlin

2022Ecology Letters37 citationsDOIOpen Access PDF

Abstract

All organisms must simultaneously tolerate the environment and access limiting resources if they are to persist. Approaches to understanding abiotic filtering and competitive interactions have generally been developed independently. Consequently, integrating those factors to predict species abundances and community structure remains an unresolved challenge. We introduce a new synthetic framework that models both abiotic filtering and competition by using functional traits. First, our framework estimates species carrying capacities along abiotic gradients. Second, it estimates pairwise competitive interactions as a function of species trait differences. Applied to the study of a complex wetland community, our combined approach more than doubles the explained variance of species abundances compared to a model of abiotic tolerances alone. Trait-based integration of competitive interactions and abiotic filtering improves our ability to predict species abundances, bringing us closer to more accurate predictions of biodiversity structure in a changing world.

Topics & Concepts

Abiotic componentEcologyBiodiversityTraitCompetition (biology)BiologyEnvironmental scienceEnvironmental resource managementGeographyComputer scienceProgramming languageEcology and Vegetation Dynamics StudiesPlant and animal studiesSpecies Distribution and Climate Change
Predictions of biodiversity are improved by integrating trait‐based competition with abiotic filtering | Litcius