Deciphering the variability in air-sea gas transfer due to sea state and wind history

Yang, M, Moffat, D, Dong, Y, Bidlot, J-R and Grassian, V 2024 Deciphering the variability in air-sea gas transfer due to sea state and wind history. PNAS Nexus, 3 (9). https://doi.org/10.1093/pnasnexus/pgae389

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Official URL: http://dx.doi.org/10.1093/pnasnexus/pgae389

Abstract/Summary

Understanding processes driving air-sea gas transfer and being able to model both its mean and variability are critical for studies of climate and carbon cycle. The air-sea gas transfer velocity (K660) is almost universally parameterized as a function of wind speed in large scale models—an oversimplification that buries the mechanisms controlling K660 and neglects much natural variability. Sea state has long been speculated to affect gas transfer, but consistent relationships from in situ observations have been elusive. Here, applying a machine learning technique to an updated compilation of shipboard direct observations of the CO2 transfer velocity (KCO2,660), we show that the inclusion of significant wave height improves the model simulation of KCO2,660, while parameters such as wave age, wave steepness, and swell-wind directional difference have little influence on KCO2,660. Wind history is found to be important, as in high seas KCO2,660 during periods of falling winds exceed periods of rising winds by ∼20% in the mean. This hysteresis in KCO2,660 is consistent with the development of waves and increase in whitecap coverage as the seas mature. A similar hysteresis is absent from the transfer of a more soluble gas, confirming that the sea state dependence in KCO2,660 is primarily due to bubble�mediated gas transfer upon wave breaking. We propose a new parameterization of KCO2,660 as a function of wind stress and significant wave height, which resemble observed KCO2,660 both in the mean and on short timescales

Item Type: Publication - Article
Divisions: Plymouth Marine Laboratory > National Capability categories > Long-term Multi-Centre ORCHESTRA
Plymouth Marine Laboratory > Science Areas > Marine Biochemistry and Observations
Depositing User: S Hawkins
Date made live: 11 Oct 2024 16:39
Last Modified: 11 Oct 2024 16:39
URI: https://plymsea.ac.uk/id/eprint/10301

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