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Chemometrical exploration of the wet precipitation chemistry from the Austrian Monitoring Network (1988-1999)

机译:奥地利监测网(1988-1999)对湿法降水化学的化学计量学探索

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The present paper deals with the application of different chemometric methods to an environmental data set derived from the monitoring of wet precipitation in Austria (1988-1999). These methods are: principal component analysis (PCA); projection pursuit (PP); density-based spatial clustering of application with noise (DBSCAN); ordering points to identify the clustering structures (OPTICS); self-organizing maps (SOM), also called the Kohonen network; and the neural gas (NG) network. The aim of the study is to introduce some new approaches into environmetrics and to compare their usefulness with already existing techniques for the classification and interpretation of environmental data. The density-based approaches give information about the occurrence of natural clusters in the studied data set, which, however, do not occur in the case presented here; information about high-density zones (very similar samples) and extreme samples is also obtained. The partitioning techniques (clustering, but also neural gas and Kohonen networks) offer an opportunity to classify the objects of interest into several defined groups, the patterns of ionic concentration of which can be studied in detail. The visual aids, such as the color map and the Kohonen map, for each site are very helpful in understanding the relationships between samples and between samples and variables. All methods, and in particular projection pursuit, give information about samples with extreme characteristics.
机译:本文件涉及不同化学计量学方法对从奥地利(1988-1999年)湿降水监测获得的环境数据集的应用。这些方法是:主成分分析(PCA);投影追踪(PP);基于噪声的基于密度的应用程序空间聚类(DBSCAN);排序点以标识聚类结构(OPTICS);自组织地图(SOM),也称为Kohonen网络;和神经气体(NG)网络。该研究的目的是向环境计量学引入一些新方法,并将其与用于环境数据分类和解释的现有技术进行比较。基于密度的方法提供了有关研究数据集中自然簇的出现的信息,但是,在这里介绍的情况下不会出现;还可以获得有关高密度区域(非常相似的样本)和极端样本的信息。分区技术(聚类,还有神经气体网络和Kohonen网络)提供了将感兴趣的对象分类为几个定义的组的机会,可以详细研究其离子浓度的模式。每个站点的视觉辅助工具(例如颜色图和Kohonen图)对于理解样本之间以及样本与变量之间的关系非常有帮助。所有方法,尤其是投影追踪,都可以提供有关具有极端特征的样本的信息。

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