Abstract
Application of lake models coupled within earth-system prediction models, especially for predictions from days to weeks, requires accurate initialization of lake temperatures. Commonly used methods to initialize lake temperatures include interpolation of global sea-surface temperature (SST) analyses to inland lakes, daily satellite-based observations, or model-based reanalyses. However, each of these methods have limitations in capturing the temporal characteristics of lake temperatures (e.g., effects of anomalously warm or cold weather) for all lakes within a geographic region and/or during extended cloudy periods. An alternative lake-initialization method was developed which uses two-way-coupled cycling of a small-lake model within an hourly data assimilation system of a weather prediction model. The lake model simulated lake temperatures were compared with other estimates from satellite and in situ observations and interpolated-SST data for a multi-month period in 2021. The lake cycling initialization, now applied to two operational US NOAA weather models, was found to decrease errors in lake surface temperature from as much as 5-10 K vs. interpolated-SST data to about 1-2 K compared to available in situ and satellite observations.
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CITATION STYLE
Benjamin, S. G., Smirnova, T. G., James, E. P., Anderson, E. J., Fujisaki-Manome, A., Kelley, J. G. W., … Kelley, S. G. T. (2022). Inland lake temperature initialization via coupled cycling with atmospheric data assimilation. Geoscientific Model Development, 15(17), 6659–6676. https://doi.org/10.5194/gmd-15-6659-2022
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