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Clustering and upscaling of station precipitation records to regional patterns using self-organizing maps (SOMs)

机译:使用自组织图(SOM)将站降水记录聚类并按比例放大为区域模式

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摘要

Self-organizing maps (SOMs), a particular application of artificial neural networks, are used to proportionately combine precipitation records of individual stations into a regional data set by extracting the common regional variability from the locally forced variability at each station. The methodology is applied to a 100 yr record of precipitation data for 104 stations in the Mid-Atlantic/Northeast United States region. The SOM combines stations with common precipitation characteristics and identifies precipitation regions that are consistent across a range of spatial scales. A variation of the SOM application identifies the temporal modes of the regional precipitation record and uses them to fill missing data: in the station observations to produce a regional precipitation record. A test of the methodology with a complete data set shows that the 'missing data' routine improves the regional signal when up to 80% of the data are missing from 80% of the stations. The improvement is almost as pronounced when there is a bias in the missing data for both high-precipitation and low-precipitation events. [References: 8]
机译:自组织映射(SOM)是人工神经网络的一种特殊应用,用于通过从每个站点的局部强制变化中提取公共区域变化,将各个站点的降水记录成比例地组合到一个区域数据集中。将该方法应用于美国中大西洋/美国东北地区104个站点的100年降水记录。 SOM结合了具有共同降水特征的台站,并确定了在一系列空间尺度上一致的降水区域。 SOM应用程序的一种变型可以识别区域降水记录的时间模式,并使用它们来填充缺失的数据:在台站观测中可以生成区域降水记录。对具有完整数据集的方法进行的测试表明,当80%的站点中丢失多达80%的数据时,“丢失数据”例程会改善区域信号。当高降水量事件和低降水量事件的缺失数据存在偏差时,这种改善几乎是明显的。 [参考:8]

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