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Exploratory data analysis and clustering of multivariate spatial hydrogeological data by means of GEO3DSOM, a variant of Kohonen's Self-Organizing Map

机译:利用Kohonen自组织图的变体GEO3DSOM进行探索性数据分析和多元空间水文地质数据的聚类

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摘要

The use of unsupervised artificial neural network techniques like the self-organizing map (SOM) algorithm has proven to be a useful tool in exploratory data analysis and clustering of multivariate data sets. In this study a variant of the SOM-algorithm is proposed, the GEO3DSOM, capable of explicitly incorporating three-dimensional spatial knowledge into the algorithm. The performance of the GEO3DSOM is compared to the performance of the standard SOM in analyzing an artificial data set and a hydrochemical data set. The hydrochemical data set consists of 131 groundwater samples collected in two detritic, phreatic, Cenozoic aquifers in Central Belgium. Both techniques succeed very well in providing more insight in the groundwater quality data set, visualizing the relationships between variables, highlighting the main differences between groups of samples and pointing out anomalous wells and well screens. The GEO3DSOM however has the advantage to provide an increased resolution while still maintaining a good generalization of the data set.
机译:事实证明,使用无监督人工神经网络技术(如自组织映射(SOM)算法)是探索性数据分析和多元数据集聚的有用工具。在这项研究中,提出了一种SOM算法的变体GEO3DSOM,它能够将三维空间知识明确地纳入算法中。在分析人工数据集和水化学数据集时,将GEO3DSOM的性能与标准SOM的性能进行了比较。水化学数据集由在比利时中部的两个碎屑,潜水,新生代含水层中收集的131个地下水样品组成。两种技术都成功地为地下水质量数据集提供了更多的见解,可视化了变量之间的关系,突出显示了样本组之间的主要差异,并指出了异常井和井网。但是,GEO3DSOM的优点是可以提供更高的分辨率,同时仍然可以很好地概括数据集。

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