BlueMinerva: An integrated, autonomous platform for carbon flux and environmental monitoring at the aquatic–atmospheric interface in low-flow waterbodies
BlueMinerva: 低流量水域の大気-水界面における炭素フラックスと環境モニタリングのための統合自律プラットフォーム (AI 翻訳)
Judith Vogt, Tarek S. El‐Madany, Christian Burgold, Abdullah Bolek, Elliot Pratt, Torsten Sachs, Christian Wille, Manuel Helbig, Maximilian P. Lau, Sebastian Zug, Jörg Matschullat, Mathias Göckede
🤖 gxceed AI 要約
日本語
本論文は、湖沼におけるCO2およびCH4フラックスの空間的不均一性を捉えるため、自律型プラットフォーム「BlueMinerva」を開発・実証した。ドイツとスウェーデンの湖で計72時間の観測により485のチャンバー法フラックス推定値を取得し、低コストセンサーの有効性や渦相関法との比較を行った。本プラットフォームは高解像度のフラックス変動と環境要因の同時測定を可能にし、湖沼炭素動態の理解向上に貢献する。
English
This paper presents BlueMinerva, an autonomous platform for measuring CO2 and CH4 fluxes at the water-air interface of low-flow waterbodies. Deployed in two lakes (Germany and Sweden), it collected 485 chamber-derived flux estimates over 72 hours, comparing low-cost and high-cost sensors and eddy covariance data. The platform resolves spatial variability and simultaneously measures limnological and meteorological variables, advancing high-resolution biogeochemical monitoring.
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
日本では農業用ため池や湖沼からの温室効果ガス排出が注目されつつあるが、本プラットフォームはそうした現場での高解像度モニタリングに応用可能である。SSBJやTCFD関連の報告には直接関係しないが、自然炭素吸収源のMRV技術として将来的な価値がある。
In the global GX context
While not directly linked to corporate disclosure, this platform addresses the need for high-resolution monitoring of natural greenhouse gas fluxes, which is relevant for nature-based solutions and carbon accounting verification. It contributes to the methodological toolbox for understanding lake carbon dynamics, supporting global climate science and potential integration into MRV frameworks.
👥 読者別の含意
🔬研究者:Provides a validated autonomous platform for high-resolution flux measurements in lakes, useful for biogeochemical and climate research.
🏢実務担当者:The platform offers a scalable method for monitoring emissions from waterbodies, potentially applicable for environmental impact assessments.
🏛政策担当者:Demonstrates a technology that could support MRV for natural carbon sinks, informing climate policy and carbon crediting schemes.
📄 Abstract(原文)
Abstract. Water-air fluxes of carbon dioxide (CO2) and methane (CH4) in lakes exhibit substantial spatial heterogeneity, often varying across remarkably fine spatial scales. While manual flux chamber measurements offer high spatial resolution and the potential to capture this variability, their application is typically constrained by labor intensity and logistical limitations. In contrast, eddy covariance (EC) measurements integrate fluxes over a larger footprint, effectively averaging over spatial gradients and complicating a process-based interpretation of the data. Bridging this gap requires methods that combine spatial precision with scalable, continuous monitoring – essential for advancing our mechanistic understanding of lake carbon dynamics. To facilitate highly resolved biogeochemical measurements, we developed BlueMinerva, an autonomous platform to monitor surface carbon fluxes with the static chamber method, and simultaneously determine physicochemical, biological, bathymetric, and meteorological variables at pre-defined locations. The platform can be programmed to navigate a user-defined track across a waterbody, and collect flux and ancillary data both in transit and at fixed locations for several hours to days, depending on the sensor configuration and related battery requirements. We deployed the setup at Dagow Lake (Germany) and in a small lake in the Stordalen Mire (Sweden). In total, we obtained 485 chamber-derived flux estimates over 72 measurement hours. We compared CO2 flux estimates between measurements with two different gas analyzers that were simultaneously mounted on the BlueMinerva. The lower-cost sensor (CARBOCAP GMP343, Vaisala) performed equally well as the precise, but costlier sensor (LI-7810, LI-COR) as long as measurements were sufficiently long (around 5 min). Furthermore, we compared measured carbon fluxes with those from an eddy covariance tower at Dagow Lake where CH4 fluxes diverged slightly, possibly linked to the usage of different sensors (closed-path versus open-path), while magnitudes of CO2 fluxes matched well. At both lakes, we identified areas of higher emissions, especially for CH4, and were thus able to resolve the spatial variability of carbon fluxes within the waterbodies. Concurrently, we measured differences in meteorological conditions, and critical limnological variables (water temperature, specific conductivity, pH, dissolved oxygen, chlorophyll, phycocyanin, turbidity, and fluorescent dissolved organic matter) – valuable measurements that enable a comprehensive assessment of environmental drivers behind flux variability. We conclude that platforms like the BlueMinerva have the potential to be adopted widely by scientists and stakeholders to better capture biogeochemical processes in lakes at high spatial and temporal resolution.
🔗 Provenance — このレコードを発見したソース
- openalex https://doi.org/10.5194/egusphere-2026-2262first seen 2026-05-28 05:02:37 · last seen 2026-06-16 04:51:26
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