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Identification of Patterns over Regional Scales Using Self-Organising Maps on Images from Marine Modelling Outputs

机译:使用自组织地图在来自海洋建模输出的图像上的区域尺度上的模式的识别

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The Self-Organizing Feature Map (or SOM), has been used to analyse a dataset consisting of oceanographic modelling output images, in order to identify patterns in the hydrodynamic behaviour of the south-east Tasmanian (SETas) coastal region over a 360-day period between August 2009 and August 2010. The SOM provided a visualization of the dataset, distributed across a 5x7 two- dimensional grid, which enabled an oceanographer to identify significant hydrodynamic patterns being exhibited by the SETas region over that period. Four prototype (typical) states were identified by the oceanographer, who then interpreted each of these states in terms of the major ocean currents which impact on the region, the East Australian Current and the Zeehan Current. These results indicate that SOM analysis can be a useful technique for identifying patterns in large oceanographic datasets, such as those now being provided by remote sensing, ocean modelling and marine sensor network technologies.
机译:已用于分析由海洋建模输出图像组成的数据集,以识别360天的东南塔斯马尼亚(Setas)沿海地区的流体动力行为中的模式 2009年8月至2010年8月期间。SOM提供了数据集的可视化,分布在5x7二维网格上,该网格使海洋人能够识别Setas区域在该时段上所呈现的显着的流体动力学模式。 海洋学家确定了四个原型(典型的)国家,然后将这些国家解释了这些国家,这些国家在对该地区影响到该地区,东澳大利亚电流和ZEEHAN当前的主要海洋电流方面。 这些结果表明,SOM分析可以是用于识别大型海洋图数据集中的模式的有用技术,例如现在通过遥感,海洋建模和海洋传感器网络技术提供的模式。

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