Literature DB >> 33124764

A Review of Key Features and Their Implementation in Unstructured, Structured, and Agent-Based Population Models for Ecological Risk Assessment.

Chiara Accolla1, Maxime Vaugeois1, Volker Grimm2,3, Adrian P Moore1, Pamela Rueda-Cediel1, Amelie Schmolke4, Valery E Forbes1.   

Abstract

Population models can provide valuable tools for ecological risk assessment (ERA). A growing amount of work on model development and documentation is now available to guide modelers and risk assessors to address different ERA questions. However, there remain misconceptions about population models for ERA, and communication between regulators and modelers can still be hindered by a lack of clarity in the underlying formalism, implementation, and complexity of different model types. In particular, there is confusion about differences among types of models and the implications of including or ignoring interactions of organisms with each other and their environment. In this review, we provide an overview of the key features represented in population models of relevance for ERA, which include density dependence, spatial heterogeneity, external drivers, stochasticity, life-history traits, behavior, energetics, and how exposure and effects are integrated in the models. We differentiate 3 broadly defined population model types (unstructured, structured, and agent-based) and explain how they can represent these key features. Depending on the ERA context, some model features will be more important than others, and this can inform model type choice, how features are implemented, and possibly the collection of additional data. We show that nearly all features can be included irrespective of formalization, but some features are more or less easily incorporated in certain model types. We also analyze how the key features have been used in published population models implemented as unstructured, structured, and agent-based models. The overall aim of this review is to increase confidence and understanding by model users and evaluators when considering the potential and adequacy of population models for use in ERA. Integr Environ Assess Manag 2021;17:521-540.
© 2020 SETAC. © 2020 SETAC.

Entities:  

Keywords:  Agent-based models; Ecological risk assessment; Good modeling practice; Matrix models; ODE models

Mesh:

Year:  2020        PMID: 33124764     DOI: 10.1002/ieam.4362

Source DB:  PubMed          Journal:  Integr Environ Assess Manag        ISSN: 1551-3777            Impact factor:   2.992


  2 in total

1.  Moving beyond Risk Quotients: Advancing Ecological Risk Assessment to Reflect Better, More Robust and Relevant Methods.

Authors:  Sandy Raimondo; Valery E Forbes
Journal:  Ecologies (Basel)       Date:  2022-05-27

2.  Pop-guide: Population modeling guidance, use, interpretation, and development for ecological risk assessment.

Authors:  Sandy Raimondo; Amelie Schmolke; Nathan Pollesch; Chiara Accolla; Nika Galic; Adrian Moore; Maxime Vaugeois; Pamela Rueda-Cediel; Andrew Kanarek; Jill Awkerman; Valery Forbes
Journal:  Integr Environ Assess Manag       Date:  2021-02-01       Impact factor: 3.084

  2 in total

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