Adapting genetic algorithms for multifunctional landscape decisions: A theoretical case study on wild bees and farmers in the UK
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Authors
Knight, EllenBalzter, Heiko
Breeze, Tom D
Brettschneider, Julia
Girling, Robbie D
Hagen‐Zanker, Alex
Image, Mike
Johnson, Colin G
Lee, Christopher
Lovett, Andrew
Petrovskii, Sergei
Varah, Alexa

Whelan, Mick
Yang, Shengxiang
Gardner, Emma
Issue date
2024-11-05Submitted date
2024-04-23Subject Terms
agroecologyecological modelling
genetic algorithms
landscape optimisation
land-use decisions
multi-functional landscapes
pollinators
spatial modelling
Metadata
Show full item recordAbstract
Abstract - Spatial modelling approaches to aid land‐use decisions which benefit both wildlife and humans are often limited to the comparison of pre‐determined landscape scenarios, which may not reflect the true optimum landscape for any end‐user. Furthermore, the needs of wildlife are often under‐represented when considered alongside human financial interests in these approaches. We develop a method of addressing these gaps using a case‐study of wild bees in the UK, an important group whose declines may adversely affect both human economies and surrounding ecosystems. By combining the genetic algorithm NSGA‐II with a process‐based pollinator model which simulates bee foraging and population dynamics, Poll4pop, we ‘evolve’ a typical UK agricultural landscape to identify optimum land cover configurations for three different guilds of wild bee. These configurations are compared to those resulting from optimisations for farm income alone, as well as optimisations that seek a compromise between bee populations and farm income objectives. We find that the land cover proportions in landscapes optimised for each bee guild reflect their nesting habitat preferences rather than foraging preferences, highlighting a limiting resource within the study landscape. The spatially explicit nature of these optimised landscapes illustrates how improvement for a given target species may be limited by differences between their movement range and the scale of the units being improved. Land cover composition and configuration differ significantly in landscapes optimised for farm income and bee population growth simultaneously and illustrate how human agents are required to compromise much more when the multifaceted nature of biodiversity is recognised and represented by multiple objectives within an optimisation framework. Our methods provide a way to quantify the extent to which real‐life landscapes promote or compromise objectives for different landscape end‐users. Our investigation suggests that optimisation set‐up (decision‐unit scales, traditional choice of a single biodiversity metric) can bias outcomes towards human‐centric solutions. It also demonstrates the importance of representing the individual requirements of different actors with different landscape‐level needs when using genetic algorithms to support biodiversity‐inclusive decision‐making in multi‐functional landscapes.Citation
Knight, E., Balzter, H., Breeze, T. D., Brettschneider, J., Girling, R. D., Hagen-Zanker, A., Image, M., Johnson, C. G., Lee, C., Lovett, A., Petrovskii, S., Varah, A., Whelan, M., Yang, S., & Gardner, E. (2024). Adapting genetic algorithms for multifunctional landscape decisions: A theoretical case study on wild bees and farmers in the UK. Methods in Ecology and Evolution, 15, 2153–2167. https://doi.org/10.1111/2041-210X.14424Publisher
WileyJournal
Methods in Ecology and EvolutionType
Journal ArticleItem Description
Copyright © 2024 The Author(s). Methods in Ecology and Evolution published by John Wiley & Sons Ltd on behalf of British Ecological Society.https://doi.org/10.1111/2041-210X.14424. The linked file is the published version of the article,.NHM Repository
ISSN
2041-210XEISSN
2041-210Xae974a485f413a2113503eed53cd6c53
10.1111/2041-210x.14424
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