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Implementation of adaptation actions to protect biodiversity is limited by uncertainty about the future. One reason for this is the fear of making the wrong decisions caused by the myriad future scenarios presented to decision-makers. We propose an adaptive management (AM) method for optimally managing a population under uncertain and changing habitat conditions. Our approach incorporates multiple future scenarios and continually learns the best management strategy from observations, even as conditions change. We demonstrate the performance of our AM approach by applying it to the spatial management of migratory shorebird habitats on the East Asian–Australasian flyway, predicted to be severely impacted by future sea-level rise. By accounting for non-stationary dynamics, our solution protects 25 000 more birds per year than the current best stationary approach. Our approach can be applied to many ecological systems that require efficient adaptation strategies for an uncertain future.
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Sam Nicol
Commonwealth Scientific and Industrial Research Organisation
Richard A. Fuller
The University of Queensland
Takuya Iwamura
University of Geneva
Proceedings of the Royal Society B Biological Sciences
Stanford University
The University of Queensland
CSIRO Land and Water
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Nicol et al. (Wed,) studied this question.
synapsesocial.com/papers/6a208a61fdf8ac6477c63a7c — DOI: https://doi.org/10.1098/rspb.2014.2984