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Modelling optimal behavioural strategies in structured populations using a novel theoretical framework

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journal contribution
posted on 2020-05-21, 15:32 authored by Andrew Morozov, Oleg A Kuzenkov, Elena G Arashkevich
Understanding complex behavioural patterns of organisms observed in nature can be facilitated using mathematical modelling. The conventional paradigm in animal behavior modelling consists of maximisation of some evolutionary fitness function. However, the definition of fitness of an organism or population is generally subjective, and using different criteria can lead us to contradictory model predictions regarding optimal behaviour. Moreover, structuring of natural populations in terms of individual size or developmental stage creates an extra challenge for theoretical modelling. Here we revisit and formalise the definition of evolutionary fitness to describe long-term selection of strategies in deterministic self-replicating systems for generic modelling settings which involve an arbitrary function space of inherited strategies. Then we show how optimal behavioural strategies can be obtained for different developmental stages in a generic von-Foerster stage-structured population model with an arbitrary mortality term. We implement our theoretical framework to explore patterns of optimal diel vertical migration (DVM) of two dominant zooplankton species in the north-eastern Black Sea. We parameterise the model using 7 years of empirical data from 2007-2014 and show that the observed DVM can be explained as the result of a trade-off between depth-dependent metabolic costs for grazers, anoxia zones, available food, and visual predation.

Funding

The computational results were obtained in the framework of the state assignment of Ministry of Science and Higher Education of the Russian Federation (theme No. № 0149- 2019-0004). Collection and analysis of zooplankton was supported by the Russian Foundation for Basic Research (grant 17-05-00799). Te work was also supported by the Ministry of Education and Science of the Russian Federation (Project No. 14.Y26.31.0022).

History

Citation

Scientific Reports, 2019, volume 9, Article number: 15020

Author affiliation

Department of Mathematics

Version

  • VoR (Version of Record)

Published in

Scientific Reports

Volume

9

Issue

1

Publisher

Nature Research

issn

2045-2322

eissn

2045-2322

Acceptance date

2019-09-26

Copyright date

2019

Available date

2019-10-21

Spatial coverage

England

Language

English

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