A guide to ecosystem models and their environmental applications.

Nat Ecol Evol

Centre for Integrative Ecology, School of Life and Environmental Sciences, Deakin University, Burwood, Victoria, Australia.

Published: November 2020

AI Article Synopsis

  • Traditional applied ecology has shifted from single-species management to ecosystem-level management due to consistent failures, recognizing the importance of interactions among organisms and processes.
  • Ecosystem models are essential for understanding these complex dynamics, helping to describe interactions, predict future states, and inform decision-making while identifying uncertainties.
  • Addressing the challenges of ecosystem modelling requires strategies like ensemble and multi-model approaches to effectively manage uncertainty and enhance the quality of ecological predictions.

Article Abstract

Applied ecology has traditionally approached management problems through a simplified, single-species lens. Repeated failures of single-species management have led us to a new paradigm - managing at the ecosystem level. Ecosystem management involves a complex array of interacting organisms, processes and scientific disciplines. Accounting for interactions, feedback loops and dependencies between ecosystem components is therefore fundamental to understanding and managing ecosystems. We provide an overview of the main types of ecosystem models and their uses, and discuss challenges related to modelling complex ecological systems. Existing modelling approaches typically attempt to do one or more of the following: describe and disentangle ecosystem components and interactions; make predictions about future ecosystem states; and inform decision making by comparing alternative strategies and identifying important uncertainties. Modelling ecosystems is challenging, particularly when balancing the desire to represent many components of an ecosystem with the limitations of available data and the modelling objective. Explicitly considering different forms of uncertainty is therefore a primary concern. We provide some recommended strategies (such as ensemble ecosystem models and multi-model approaches) to aid the explicit consideration of uncertainty while also meeting the challenges of modelling ecosystems.

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Source
http://dx.doi.org/10.1038/s41559-020-01298-8DOI Listing

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