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Interpreting Self-Organizing Map errors in the classification of ocean patterns

机译:解释海洋模式分类中的自组织图错误

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The paper aims to introduce quality measures that can evaluate how well the Self-organizing Maps method performs in transitional stages. The errors have been computed with respect to the spatial and temporal properties of the data and in relation to the data gap significance. Temperature and salinity data collected in the central Adriatic Sea at six stations during 196 field cruises carried out between 1963 and 2011 have been used for the mapping of ocean patterns and computation of the respective errors. The errors resemble both the stability of ocean regimes and variability of patterns that are documented in the investigated region. As the data collection methodology and approach have changed over time, the errors may be a good indication for the presence of bad data in a series, which may then be controlled by other quality-check techniques.
机译:本文旨在介绍可以评估自组织图方法在过渡阶段的性能的质量度量。已经相对于数据的空间和时间特性以及相对于数据间隙重要性计算了误差。在1963年至2011年之间进行的196次野外航行期间,在亚得里亚海中部六个站点收集的温度和盐度数据已用于海图测绘和相应误差的计算。这些错误既类似于海洋状况的稳定性,也类似于研究区域中记录的模式变化。由于数据收集方法和方法已随着时间而变化,因此错误可能是一系列不良数据的良好指示,然后可以通过其他质量检查技术来控制这些数据。

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