4.7 Article

Technical note: Time lag correction of aquatic eddy covariance data measured in the presence of waves

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BIOGEOSCIENCES
卷 12, 期 22, 页码 6721-6735

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COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/bg-12-6721-2015

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  1. National Science Foundation [OCE-1061108, OCE-1061218, OCE-1061364, OCE-1334848, OCE 1334117]
  2. University of Virginia

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Extracting benthic oxygen fluxes from eddy covariance time series measured in the presence of surface gravity waves requires careful consideration of the temporal alignment of the vertical velocity and the oxygen concentration. Using a model based on linear wave theory and measured eddy covariance data, we show that a substantial error in flux can arise if these two variables are not aligned correctly in time. We refer to this error in flux as the time lag bias. In one example, produced with the wave model, we found that an offset of 0.25 s between the oxygen and the velocity data produced a 2-fold overestimation of the flux. In another example, relying on nighttime data measured over a seagrass meadow, a similar offset reversed the flux from an uptake of -50 mmol m(-2) d(-1) to a release of 40 mmol m(-2) d(-1). The bias is most acute for data measured at shallow-water sites with short-period waves and low current velocities. At moderate or higher current velocities (>5-10 cm s(-1)), the bias is usually insignificant. The widely used traditional time shift correction for data measured in unidirectional flows, where the maximum numerical flux is sought, should not be applied in the presence of waves because it tends to maximize the time lag bias or give unrealistic flux estimates. Based on wave model predictions and measured data, we propose a new time lag correction that minimizes the time lag bias. The correction requires that the time series of both vertical velocity and oxygen concentration contain a clear periodic wave signal. Because wave motions are often evident in eddy covariance data measured at shallow-water sites, we encourage more work on identifying new time lag corrections.

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