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Sensitivity analysis of a data assimilation technique for hindcasting and forecasting hydrodynamics of a complex coastal water body

机译:数据同化技术的敏感性分析,用于后预报和预测复杂沿海水体的水动力

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Accurate forecasting of coastal surface currents is of great economic importance due to marine activities such as marine renewable energy and fish farms in coastal regions in recent twenty years. Advanced oceanographic observation systems such as satellites and radars can provide many parameters of interest, such as surface currents and waves, with fine spatial resolution in near real time. To enhance modelling capability, data assimilation (DA) techniques which combine the available measurements with the hydrodynamic models have been used since the 1990s in oceanography. Assimilating measurements into hydrodynamic models makes the original model background states follow the observation trajectory, then uses it to provide more accurate forecasting information. Galway Bay is an open, wind dominated water body on which two coastal radars are deployed. An efficient and easy to implement sequential DA algorithm named Optimal Interpolation (OI) was used to blend radar surface current data into a three-dimensional Environmental Fluid Dynamics Code (EFDC) model. Two empirical parameters, horizontal correlation length and DA cycle length (CL), are inherent within OI. No guidance has previously been published regarding selection of appropriate values of these parameters or how sensitive OI DA is to variations in their values. Detailed sensitivity analysis has been performed on both of these parameters and results presented. Appropriate value of DA CL was examined and determined on producing the minimum Root-Mean-Square-Error (RMSE) between radar data and model background states. Analysis was performed to evaluate assimilation index (AI) of using an OI DA algorithm in the model. AI of the half-day forecasting mean vectors' directions was over 50% in the best assimilation model. The ability of using OI to improve model forecasts was also assessed and is reported upon.
机译:由于近二十年来海洋活动,例如海洋可再生能源和沿海地区的养鱼场,准确预测沿海地表水流具有重要的经济意义。先进的海洋观测系统(例如卫星和雷达)可以提供近乎实时的精细空间分辨率,从而提供许多有用的参数,例如地表电流和海浪。为了增强建模能力,自1990年代以来,在海洋学中就已经使用了将数据与水动力模型相结合的数据同化(DA)技术。将测量值吸收到流体动力学模型中,可以使原始模型的背景状态遵循观测轨迹,然后使用它来提供更准确的预测信息。戈尔韦湾是一个开放的,以风为主的水体,上面部署了两个沿海雷达。一种有效且易于实现的顺序DA算法,称为最优插值(OI),用于将雷达表面电流数据混合到三维环境流体动力学代码(EFDC)模型中。 OI内含两个经验参数,水平相关长度和DA循环长度(CL)。先前尚未发布有关选择这些参数的适当值或OI DA对其值变化的敏感程度的指南。对这些参数和给出的结果均进行了详细的灵敏度分析。在产生雷达数据和模型背景状态之间的最小均方根误差(RMSE)的情况下,检查并确定DA CL的适当值。进行分析以评估在模型中使用OI DA算法的同化指数(AI)。在最佳同化模型中,半天预测平均向量方向的AI超过50%。还评估并报告了使用OI改进模型预测的能力。

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