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Application of data assimilation for improving forecast of water levels and residual currents in Singapore regional waters
Authors:Rama Rao Karri  Abhijit Badwe  Xuan Wang  Ghada El Serafy  Julius Sumihar  Vladan Babovic  Herman Gerritsen
Affiliation:1. Singapore-Delft Water Alliance, National University of Singapore, Singapore, 117577, Singapore
2. Deltares, P.O. Box 177, 2600 MH, Delft, The Netherlands
Abstract:Hydrodynamic models are commonly used for predicting water levels and currents in the deep ocean, ocean margins and shelf seas. Their accuracy is typically limited by factors, such as the complexity of the coastal geometry and bathymetry, plus the uncertainty in the flow forcing (deep ocean tide, winds and pressure). In Southeast Asian waters with its strongly hydrodynamic characteristics, the lack of detailed marine observations (bathymetry and tides) for model validation is an additional factor limiting flow representation. This paper deals with the application of ensemble Kalman filter (EnKF)-based data assimilation with the purpose of improving the deterministic model forecast. The efficacy of the EnKF is analysed via a twin experiment conducted with the 2D barotropic Singapore regional model. The results show that the applied data assimilation can improve the forecasts significantly in this complex flow regime.
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