Trait‐based approaches as ecological time machines: Developing tools for reconstructing long‐term variation in ecosystems

Author:

Brown Kerry A.1ORCID,Bunting M. Jane2ORCID,Carvalho Fabio3ORCID,de Bello Francesco45ORCID,Mander Luke6ORCID,Marcisz Katarzyna7ORCID,Mottl Ondrej89ORCID,Reitalu Triin1011ORCID,Svenning Jens‐Christian12ORCID

Affiliation:

1. Department of Geography, Geology and the Environment Kingston University London Kingston Upon Thames UK

2. School of Environmental Sciences University of Hull Hull UK

3. Lancaster Environment Centre Lancaster University Lancaster UK

4. Centro de Investigaciones sobre Desertificación (CSIC‐UV‐GV) Valencia Spain

5. Department of Botany, Faculty of Science University of South Bohemia České Budějovice Czech Republic

6. School of Environment, Earth and Ecosystem Sciences The Open University Milton Keynes UK

7. Climate Change Ecology Research Unit Adam Mickiewicz University Poznań Poland

8. Department of Biology University of Bergen Bergen Norway

9. Bjerknes Centre for Climate Research Bergen Norway

10. Institute of Ecology and Earth Sciences University of Tartu Tartu Estonia

11. Institute of Geology Tallinn University of Technology Tallinn Estonia

12. Center for Biodiversity Dynamics in a Changing World (BIOCHANGE) & Section for Ecoinformatics and Biodiversity, Department of Biology Aarhus University Aarhus C Denmark

Abstract

Abstract Research over the past decade has shown that quantifying spatial variation in ecosystem properties is an effective approach to investigating the effects of environmental change on ecosystems. Yet, current consensus among scientists is that we need a better understanding of short‐ and long‐term (temporal) variation in ecosystem properties to plan effective ecosystem management and predict future ecologies. Trait‐based approaches can be used to reconstruct ecosystem properties from long‐term ecological records and contribute significantly to developing understandings of ecosystem change over decadal to millennial time‐scales. Here, we synthesise current trait‐based approaches and explore how organisms' functional traits (FTs) can be scaled across time and space. We propose a framework for reconstructing long‐term variation in ecosystems by means of analysing FTs derived from palaeoecological datasets. We then summarise challenges that must be overcome to reconcile trait‐based approaches with palaeo‐datasets. Finally, we discuss the benefits and limitations of trait‐based reconstructions of ecosystem temporal dynamics and suggest future directions for research. Reconstructing environmental properties through time vis‐à‐vis FTs can be separated into two parts. The first is to record trait data for organisms present in modern ecosystems, and the second is to reconstruct temporal variability in FTs from palaeoecological datasets, capturing changes in trait composition over time. Translating palaeoecological datasets into FTs is challenging due to taphonomic, taxonomic and chronological uncertainties, as well as uniformitarian assumptions. Explicitly identifying and addressing these challenges is important to effectively calculate changes in FT through time. Palaeo‐trait research offers insights into questions related to short‐ and long‐term ecosystem functioning, environmental change and extinction and community assembly rules across time. As work in this area matures, we expect that trait‐based approaches integrating palaeoecology and neo‐ecology will improve understanding of past ecologies and provide a deeper insight of their implications for present‐day and future ecosystem management and conservation. Read the free Plain Language Summary for this article on the Journal blog.

Funder

Danmarks Grundforskningsfond

Eesti Teadusagentuur

European Research Council

Royal Society

Villum Fonden

Publisher

Wiley

Subject

Ecology, Evolution, Behavior and Systematics

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