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Advances in self-organizing maps for their application to compositional data

机译:自组织地图在合成数据中的应用进展

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A self-organizing map (SOM) is a non-linear projection of a D-dimensional data set, where the distance among observations is approximately preserved on to a lower dimensional space. The SOM arranges multivariate data based on their similarity to each other by allowing pattern recognition leading to easier interpretation of higher dimensional data. The SOM algorithm allows for selection of different map topologies, distances and parameters, which determine how the data will be organized on the map. In the particular case of compositional data (such as elemental, mineralogical, or maceral abundance), the sample space is governed by Aitchison geometry and extra steps are required prior to their SOM analysis. Following the principle of working on log-ratio coordinates, the simplicial operations and the Aitchison distance, which are appropriate elements for the SOM, are presented. With this structure developed, a SOM using Aitchison geometry is applied to properly interpret elemental data from combustion products (bottom ash, fly ash, and economizer fly ash) in a Wyoming coal-fired power plant. Results from this effort provide knowledge about the differences between the ash composition in the coal combustion process.
机译:自组织图(SOM)是D维数据集的非线性投影,其中观测值之间的距离大约保留在较低维空间上。通过允许模式识别,SOM可以基于它们彼此之间的相似性来排列多变量数据,从而可以更轻松地解释高维数据。 SOM算法允许选择不同的地图拓扑,距离和参数,这决定了如何在地图上组织数据。在成分数据的特定情况下(例如元素,矿物学或宏观的丰度),样品空间由Aitchison几何形状控制,在进行SOM分析之前需要采取额外的步骤。遵循处理对数比坐标的原理,介绍了简单操作和Aitchison距离,它们是SOM的适当元素。随着这种结构的发展,在怀俄明州的一个燃煤电厂中,使用了Aitchison几何形状的SOM被应用来正确解释来自燃烧产物(底灰,粉煤灰和省煤器粉煤灰)的元素数据。这项工作的结果提供了有关煤燃烧过程中灰分组成之间差异的知识。

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