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Get Free AccessSeagrass meadows are natural carbon sinks, and their conservation and restoration play a crucial role in climate change mitigation and adaptation. However, blue carbon projects are hindered, in most nations, by major gaps in understanding the distribution and extent of seagrasses. Here, we show how satellite tracking of green turtles ( Chelonia mydas ) provided a major advance in identifying novel seagrass blue carbon resources in the Red Sea. By tracking 53 nesting green turtles, we identified 38 distinctive foraging sites. All ground-truthed foraging sites (100%) identified a seagrass meadow, surpassing the 40% ( n = 30) accuracy of satellite imagery-based inferences. Sampling from these turtle-derived locations represents a greater range of depths than previously sampled in the Red Sea providing a carbon stock estimate of 4.89 ± 0.83 kg C org (organic carbon) m −2 . By improving estimates of seagrass extent and associated blue carbon, our approach can support the conservation of blue carbon resources in data-deficient regions worldwide.
Hugo F. Mann, Natalie Wildermann, Chuancheng Fu, Héctor Barrios–Garrido, Takahiro Shimada, Naira Pluma, Carlos M. Duarte (2024). Green turtle tracking leads the discovery of seagrass blue carbon resources. , 291(2035), DOI: https://doi.org/10.1098/rspb.2024.0502.
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Type
Article
Year
2024
Authors
7
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1098/rspb.2024.0502
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