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Sensitivity of HF radar-derived surface current self-organizing maps to various processing procedures and mesoscale wind forcing

机译:HF雷达得出的地表电流自组织图对各种处理程序和中尺度风强迫的敏感性

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摘要

We performed a number of sensitivity experiments by applying a mapping technique, self-organizing maps (SOM) method, to the surface current data measured by high-frequency (HF) radars in the northern Adriatic and surface winds modelled by two state-of-the-art mesoscale meteorological models, the Aladin (Aire Limit,e Adaptation Dynamique D,veloppement InterNational) and the Weather and Research Forecasting models. Surface current data used for the SOM training were collected during a period in which radar coverage was the highest: between February and November 2008. Different pre-processing techniques, such as removal of tides and low-pass filtering, were applied to the data in order to test the sensitivity of characteristic patterns and the connectivity between different SOM solutions. Topographic error did not exceed 15 %, indicating the applicability of the SOM method to the data. The largest difference has been obtained when comparing SOM patterns originating from unprocessed and low-pass filtered data. Introduction of modelled winds in joint SOM analyses stabilized the solutions, while sensitivity to wind forcing coming from the two different meteorological models was found to be small. Such a low sensitivity is considered to be favourable for creation of an operational ocean forecasting system based on neural networks, HF radar measurements and numerical weather prediction mesoscale models.
机译:我们通过将映射技术,自组织映射(SOM)方法应用于亚得里亚海北部的高频(HF)雷达测得的地表电流数据和通过两种状态下建模的地表风,进行了许多敏感性实验。最先进的中尺度气象模型,阿拉丁(Aire Limit,e适应性动力学D,快速发展国际)和天气与研究预报模型。用于SOM训练的地表电流数据是在雷达覆盖率最高的时期(2008年2月至2008年11月)期间收集的。不同的预处理技术(如潮汐去除和低通滤波)被应用到了SOM训练中。为了测试特征模式的敏感性以及不同SOM解决方案之间的连通性。地形误差不超过15%,表明SOM方法对数据的适用性。比较来自未处理和低通滤波数据的SOM模式时,已获得最大的差异。在联合SOM分析中引入建模风可以稳定解决方案,而发现来自两种不同气象模型的强迫风敏感性很小。如此低的灵敏度被认为有利于创建基于神经网络,HF雷达测量和数值天气预报中尺度模型的海洋预报系统。

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