通过数据同化增强潮汐和浪涌预测(技术说明)

R. Karri, V. Babovic
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引用次数: 10

摘要

由于南海、安达曼海和爪哇海三大水体的共同作用,新加坡海峡区域水域具有复杂的水动力现象。这会导致水位异常并产生剩余电流。数值水动力模型通常用于预测海洋的水位。但它们的正确性通常受到几个因素的限制,即与海岸几何形状相关的复杂性和流动强迫因素(风、压力和深海潮汐)的不确定性。马六甲海峡和新加坡区域水域的海洋动力学建模尤其具有挑战性,因为存在大量较小的岛屿和强烈的非线性潮汐相互作用。由于新加坡岛周围的局部水深和几何变化以及不同尺度的气象影响,进一步增加了复杂性。本研究承认通过使用数据同化可以增强和更好地预测潮汐和浪涌。通过便携式接口OpenDA,将集成卡尔曼滤波器与水动力模型相结合,提高了模型的预测能力。为了评估模型的敏感性和增强效果,设计了双试验来改善半封闭河口的潮汐边界强迫效应。本研究的主要结果表明,在这种复杂的流动状态下,模型结果可以得到显著改善。
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Enhanced Predictions of Tides and Surges through Data Assimilation (TECHNICAL NOTE)
The regional waters in Singapore Strait are characterized by complex hydrodynamic phenomena as a result of the combined effect of three large water bodies viz. the South China Sea, the Andaman Sea, and the Java Sea. This leads to anomalies in water levels and generates residual currents. Numerical hydrodynamic models are generally used for predicting water levels in the ocean and seas. But their correctness is typically limited by several factors, namely the complexity associated with the coastal geometry and uncertainty in the flow forcing factors like (winds, pressure and deep ocean tides). Modeling of ocean dynamics in the Malacca strait and Singapore regional waters is particularly challenging due to the presence of large number of smaller islands and strongly nonlinear tidal interactions. The complexity is further enhanced due to the composite local bathymetry and geometry variations around the Singapore Island and  meteorological effects on different scales. This study acknowledges the enhancement and better prediction of tides and surges through the use of data assimilation. Through a portable interface OpenDA, an ensemble Kalman filter is integrated with a hydrodynamic model to enhance the model predictions. To assess the sensitivity and evaluate model enhancement, a twin experiment is designed to improve tidal boundary forcing effect in a semi-enclosed estuary. The key outcomes of this study signify that the model results can be significantly improved in this complex flow regime.
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