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Near‐Term Forecasting of Terrestrial Mobile Species Distributions for Adaptive Management Under Extreme Weather Events

Dobson, Rachel; Willis, Stephen G.; Jennings, Stewart; Cheke, Robert A.; Challinor, Andrew J.; Dallimer, Martin

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Authors

Rachel Dobson rachel.a.dobson@durham.ac.uk
Post Doctoral Research Associate

Stephen G. Willis

Stewart Jennings

Robert A. Cheke

Andrew J. Challinor

Martin Dallimer



Abstract

Across the globe, mobile species are key components of ecosystems. Migratory birds and nomadic antelope can have considerable conservation, economic or societal value, while irruptive insects can be major pests and threaten food security. Extreme weather events, which are increasing in frequency and intensity under ongoing climate change, are driving rapid and unforeseen shifts in mobile species distributions. This challenges their management, potentially leading to population declines, or exacerbating the adverse impacts of pests. Near‐term, within‐year forecasting may have the potential to anticipate mobile species distribution changes during extreme weather events, thus informing adaptive management strategies. Here, for the first time, we assess the robustness of near‐term forecasting of the distribution of a terrestrial species under extreme weather. For this, we generated near‐term (2 weeks to 7 months ahead) distribution forecasts for a crop pest that is a threat to food security in southern Africa, the red‐billed quelea Quelea quelea. To assess performance, we generated hindcasts of the species distribution across 13 years (2004–2016) that encompassed two major droughts. We show that, using dynamic species distribution models (D‐SDMs), environmental suitability for quelea can be accurately forecast with seasonal lead times (up to 7 months ahead), at high resolution, and across a large spatial scale, including in extreme drought conditions. D‐SDM predictive accuracy and near‐term hindcast reliability were primarily driven by the availability of training data rather than overarching weather conditions. We discuss how a forecasting system could be used to inform adaptive management of mobile species and mitigate impacts of extreme weather, including by anticipating sites and times for transient management and proactively mobilising resources for prepared responses. Our results suggest that such techniques could be widely applied to inform more resilient, adaptive management of mobile species worldwide.

Citation

Dobson, R., Willis, S. G., Jennings, S., Cheke, R. A., Challinor, A. J., & Dallimer, M. (2024). Near‐Term Forecasting of Terrestrial Mobile Species Distributions for Adaptive Management Under Extreme Weather Events. Global Change Biology, 30(11), Article e17579. https://doi.org/10.1111/gcb.17579

Journal Article Type Article
Acceptance Date Oct 22, 2024
Online Publication Date Nov 15, 2024
Publication Date Nov 1, 2024
Deposit Date Nov 25, 2024
Publicly Available Date Nov 25, 2024
Journal Global Change Biology
Print ISSN 1354-1013
Electronic ISSN 1365-2486
Publisher Wiley
Peer Reviewed Peer Reviewed
Volume 30
Issue 11
Article Number e17579
DOI https://doi.org/10.1111/gcb.17579
Keywords red‐billed quelea, seasonal forecasting, climate change, dynamic species management, near‐term forecasting, extreme weather events, species distribution modelling, climate adaptation strategies, Quelea quelea
Public URL https://durham-repository.worktribe.com/output/3105007

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