Integrating megafauna into blue carbon strategies: dugongs could enhance seagrass carbon storage
大型動物をブルーカーボン戦略に統合:ジュゴンが海草の炭素貯蔵を強化する可能性 (AI 翻訳)
Oswald J. Schmitz, Reem AlMealla
🤖 gxceed AI 要約
日本語
この研究は、ジュゴンのような大型草食動物が海草生態系の炭素貯蔵に与える影響をモデル化。バーレーンのハロドゥレ海草床を対象に、ジュゴンの存在が正味生態系炭素収支(NECB)と堆積物炭素貯蔵を2~3倍に高めることを示した。この結果は、NDCにおけるブルーカーボン評価に動物の機能的役割を組み込む重要性を強調する。
English
This study models how large herbivores like dugongs affect carbon storage in seagrass ecosystems. Focusing on the Halodule seagrass beds of Bahrain, the model shows that dugong presence enhances net ecosystem carbon balance (NECB) and sediment carbon stocks by 2-3 times. The findings highlight the importance of integrating animal functional roles into blue carbon accounting for NDCs.
Unofficial AI-generated summary based on the public title and abstract. Not an official translation.
📝 gxceed 編集解説 — Why this matters
日本のGX文脈において
日本のブルーカーボン戦略(藍藻・海草藻場の保全)において、大型動物の役割はほとんど考慮されていない。本論文は、ジュゴンの生息地保護が炭素貯蔵を大幅に向上させる可能性を示し、日本のサンゴ礁・海草藻場管理やJブルークレジット制度において、生物多様性と炭素貯蔵の相乗効果を評価する新たな視点を提供する。
In the global GX context
Global blue carbon accounting under NDCs typically omits animal impacts. This paper provides a compelling case that conserving megafauna like dugongs can significantly boost seagrass carbon storage, offering a new nature-based solution for climate mitigation that integrates biodiversity and carbon accounting. Relevant for IPCC guidelines and UNFCCC NDC revisions.
👥 読者別の含意
🔬研究者:This paper provides a novel modeling framework linking megafauna to blue carbon, useful for researchers studying animal-ecosystem carbon dynamics and integrating biodiversity into climate models.
🏢実務担当者:Conservation and carbon project developers can use these findings to advocate for dugong protection as a blue carbon enhancement strategy, potentially increasing carbon credits from seagrass restoration.
🏛政策担当者:Policymakers should consider including megafauna conservation in NDC blue carbon commitments to avoid underestimating natural carbon sinks and to leverage co-benefits for biodiversity.
📄 Abstract(原文)
Coastal seagrass ecosystems occupy a small fraction of the global ocean yet make disproportionately large contributions to carbon capture and storage. In addition, they are increasingly promoted as blue carbon solutions within nationally determined contributions (NDCs). Despite this, most seagrass carbon budgets implicitly assume bottom-up control and very often neglect the functional role of large herbivores. Dugongs ( Dugong dugon ) are specialist seagrass grazers who may strongly influence seagrass productivity and sediment carbon storage through a combination of biomass removal, sediment disturbance, and rapid nutrient recycling, but their net effect on ecosystem carbon balance remains unknown. We apply a general animal-driven carbon-nutrient cycling model to estimate dugong effects in one of the world’s most important dugong hotspots, the Halodule seagrass beds of Bahrain. We parameterize the sediment-seagrass-dugong model with literature data and validated the model with estimates of net primary production (NPP), net ecosystem carbon balance (NECB) and sediment carbon stocks against literature-based and field measurements comparing scenarios with dugong presence vs. absence. Our results indicate that a realistic dugong aggregation (~700 individuals) can, on average enhance seagrass NPP and NECB by 2.4 times (with a range of uncertainty between 1.1- 4.2 times) and sediment carbon stocks by 2.63 times with a range of uncertainty of 1.1 – 7.6 times) relative to a dugong-absent conditions. This yields substantial additional carbon uptake and storage across the 145 km 2 focal conservation area which corresponds to an additional 7.9 x10 7 kg C y -1 captured and 9.1 x10 8 kg C stored in sediments. Our findings demonstrate that conserving dugongs and their habitat can significantly increase the climate mitigation value of seagrass ecosystems and that explicitly accounting for animal functional roles is critical to avoid underestimating blue carbon contributions in NDC accounting.
🔗 Provenance — このレコードを発見したソース
- openalex https://doi.org/10.3389/fmars.2026.1816090first seen 2026-06-17 05:53:58 · last seen 2026-06-17 07:14:15
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