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Cluster analysis by self-organizing maps: An application to the modelling of water quality in a treatment process

机译:通过自组织图进行聚类分析:在处理过程中水质建模中的应用

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The unit processes in water treatment involve many complex physical and chemical phenomena which are difficult to assess using traditional data analysis methods. Moreover, measurement data gathered from the process is often challenging with respect to modelling purposes, because there is a lack of continuous online measurements, for which sparse laboratory measurement data have to be conducted to compensate them. This paper reports on the application of self-organizing map (SOM) techniques combined with K-means clustering to model water quality in the treatment of drinking water. At the first phase of the study, a SOM was produced by using both on-line and laboratory data of the treatment process and raw water. At the second phase, the reference vectors of the map were classified by K-means algorithm into clusters, which can be used to present different states of the process. At the final phase, the results were interpreted by analyzing the reference vectors in the clusters. The introduced approach offers a straightforward method for assessing the essential characteristics of the process. In addition, the results clearly demonstrate some challenges in the modelling of water quality in treatment processes.
机译:水处理的单位过程涉及许多复杂的物理和化学现象,这些现象很难使用传统的数据分析方法进行评估。此外,从过程中收集的测量数据通常在建模方面具有挑战性,因为缺少连续的在线测量,为此必须进行稀疏的实验室测量数据来进行补偿。本文报告了自组织映射(SOM)技术与K-means聚类相结合在饮用水处理中建立水质模型的应用。在研究的第一阶段,通过使用处理过程和原水的在线和实验室数据生成了SOM。在第二阶段,通过K-means算法将图的参考向量分类为簇,这些簇可用于表示过程的不同状态。在最后阶段,通过分析聚类中的参考向量来解释结果。引入的方法提供了一种简单的方法来评估过程的基本特征。此外,结果清楚地表明了处理过程中水质建模的一些挑战。

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