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Comparative Study on Assimilating Remote Sensing High Frequency Radar Surface Currents at an Atlantic Marine Renewable Energy Test Site

机译:大西洋海洋可再生能源试验场吸收遥感高频雷达表面电流的比较研究

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A variety of data assimilation approaches have been applied to enhance modelling capability and accuracy using observations from different sources. The algorithms have varying degrees of complexity of implementation, and they improve model results with varying degrees of success. Very little work has been carried out on comparing the implementation of different data assimilation algorithms using High Frequency radar (HFR) data into models of complex inshore waters strongly influenced by both tides and wind dynamics, such as Galway Bay. This research entailed implementing four different data assimilation algorithms: Direct Insertion (DI), Optimal Interpolation (OI), Nudging and indirect data assimilation via correcting model forcing into a three-dimensional hydrodynamic model and carrying out detailed comparisons of model performances. This work will allow researchers to directly compare four of the most common data assimilation algorithms being used in operational coastal hydrodynamics. The suitability of practical data assimilation algorithms for hindcasting and forecasting in shallow coastal waters subjected to alternate wetting and drying using data collected from radars was assessed. Results indicated that a forecasting system of surface currents based on the three-dimensional model EFDC (Environmental Fluid Dynamics Code) and the HFR data using a Nudging or DI algorithm was considered the most appropriate for Galway Bay. The largest averaged Data Assimilation Skill Score (DASS) over the ?¢???¥6 h forecasting period from the best model NDA attained 26% and 31% for east?¢????west and north?¢????south surface velocity components respectively. Because of its ease of implementation and its accuracy, this data assimilation system can provide timely and useful information for various practical coastal hindcast and forecast operations.
机译:已使用各种数据同化方法来使用来自不同来源的观察结果来增强建模能力和准确性。该算法具有不同程度的实现复杂性,并且以不同程度的成功提高了模型结果。关于将使用高频雷达(HFR)数据的不同数据同化算法的实施与受潮汐和风速动态强烈影响的复杂沿海水域模型(例如高威湾)进行比较的工作很少。这项研究需要实施四种不同的数据同化算法:直接插入(DI),最优插值(OI),通过将模型强制逼入三维水动力模型并进行模型性能的详细比较来对数据和间接数据同化。这项工作将使研究人员可以直接比较四种用于海岸流体动力学的最常见数据同化算法。使用从雷达收集的数据,评估了实际数据同化算法在经过交替润湿和干燥的浅海沿海地区进行后预报和预报的适用性。结果表明,基于三维模型EFDC(环境流体动力学代码)和使用Nudging或DI算法的HFR数据的地表电流预测系统被认为最适合戈尔韦湾。在最佳预测NDA模式下的¥ 6小时预测期内,最大平均数据同化技能得分(DASS)达到了东部,西部和北部的26%和31%。南表面速度分量。由于其易于实施和准确性,该数据同化系统可以为各种实际的沿海后预报和预报操作提供及时和有用的信息。

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