4.7 Article

Application of self-organizing maps to coal elemental data

Journal

INTERNATIONAL JOURNAL OF COAL GEOLOGY
Volume 277, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.coal.2023.104358

Keywords

Coal elemental data; Hierarchical clustering; Self-organizing maps; Modes of occurrence

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Understanding the modes of occurrence of elements in coal is crucial for evaluating their environmental and health impacts and recovering critical elements from coal ash. This paper introduces the application of the self-organizing map algorithm in analyzing the modes of occurrence of elements in coal and compares it with the average linkage hierarchical clustering algorithm. The results show that the self-organizing map algorithm provides more consistent results with the geochemical nature and previous investigations.
Understanding the modes of occurrence of elements in coal is important, not only to help properly evaluate the impacts of potentially toxic elements on the environment and human health but also to provide technical guidance for recovering critical elements from coal ash. Statistical and multivariate data analysis methods have widely been used, together with physical and chemical methods, to determine the modes of occurrence of elements in coal. However, some of the statistical methods, e.g., average linkage hierarchical clustering algorithm have some disadvantages (e.g., statistical errors and poor visualization). A self-organizing map is an unsupervised artificial neural network, and it is known for its high data mining capability and excellent data visualization. In contrast to the average linkage hierarchical clustering algorithm that is commonly used for analyzing the modes of occurrence of elements in coal, the self-organizing map algorithm can provide a topological relationship among elements instead of merely providing the groups to which the elements belong. This paper focuses on the application of self-organizing map to coal elemental data for analyzing the modes of occurrence of elements in coal. Samples used in this study are from the Adaohai, Hailiushu, and Datanhao mines, all located in the Daqingshan Coalfield, Inner Mongolia, China. The results obtained from the self-organizing map algorithm are compared with those produced by average linkage hierarchical clustering algorithm. Based on the previous investigations (mainly direct methods) and further analysis, it can be concluded that the results from the self-organizing map algorithm in this investigation are more consistent with the geochemical nature and previous investigations by direct methods than those from average linkage hierarchical clustering algorithm. Consequently, the self-organizing map algorithm is a new reliable and intuitive method for analyzing the modes of occurrence of elements in coal.

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