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Network-based restoration strategies maximize ecosystem recovery

Environmental Studies and Forestry

Network-based restoration strategies maximize ecosystem recovery

U. Bhatia, S. Dubey, et al.

Research by Udit Bhatia, Sarth Dubey, Tarik C. Gouhier, and Auroop R. Ganguly reveals a groundbreaking approach to restoring biodiversity. Their findings suggest that reintroducing species based on their original network connections maximizes recovery, offering a near-optimal restoration strategy for ecosystems on the brink of collapse.

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~3 min • Beginner • English
Abstract
Redressing global patterns of biodiversity loss requires quantitative frameworks that can predict ecosystem collapse and inform restoration strategies. By applying a network-based dynamical approach to synthetic and real-world mutualistic ecosystems, we show that biodiversity recovery following collapse is maximized when extirpated species are reintroduced based solely on their total number of connections in the original interaction network. More complex network-based strategies that prioritize the reintroduction of species that improve ‘higher order’ topological features such as compartmentalization do not provide meaningful performance improvements. These results suggest that it is possible to design nearly optimal restoration strategies that maximize biodiversity recovery for data-poor ecosystems in order to ensure the delivery of critical natural services that fuel economic development, food security, and human health around the globe.
Publisher
Communications Biology
Published On
Dec 12, 2023
Authors
Udit Bhatia, Sarth Dubey, Tarik C. Gouhier, Auroop R. Ganguly
Tags
biodiversity
ecosystem collapse
restoration strategies
network approach
mutualistic ecosystems
topological features
natural services
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