通过 k-Means 聚类加强石化木成分数据分析及其解读

Triyana Muliawati, D. G. Harbowo, Andre Markus Fernando Lubis, Juan Daniel Turnip, Erina Rosalia Irda, Adelia Azahra, Yanti Marito
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摘要

在地质学上,木质材料化石的形成需要适当的条件,其中一些条件已经保存了数百万年。在自然界中,木材在严酷的地质条件下分解之前,其有机质必须迅速被无机元素取代。众所周知,氧化硅等无机氧化物是大多数木材标本的主要成分(高达 80%)。碱性氧化物(如氧化钠和氧化钾)的存在似乎对石化过程中二氧化硅的溶解起着重要作用。然而,它们在植物木材化石石化现象中的意义尚不清楚。因此,本研究进行了聚类分析,以确定石化木化石中存在的二氧化硅和碱性化合物之间的关系。采用的方法是肘法支持的均值聚类,其目的是将一组复杂的数据审查和排序为子集,从而进行解释。结果表明,木材化石成分数据的最佳聚类为 = 3。二氧化硅和氧化碱化合物(-0.504 到 -0.387)以及其他无机化合物(+0.957)之间存在着相当的相关性。钠和钾的存在与硅化过程密切相关(+0.905)。此外,数据聚类的结果使木材化石过程易于描述,特别是通过数据回归。数据可视化为碱性氧化物在木材硅化过程中的作用提供了更多事实和正确解释。这项研究加深了我们对木材化石,尤其是地质历史中木材化学成分成因的理解。
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k-Means Clustering to Enhance the Petrified Wood Composition Data Analyses and Its Interpretation
Geologically, the fossilization of wood materials into fossils requires appropriate conditions, some of which have been preserved for millions of years. In nature, the organic mass of wood must be quickly replaced by inorganic elements before it decomposes under harsh geological conditions. Anorganic oxides such as silica-oxide, are known to be the main components of most wood specimens (up to 80%). The presence of alkaline oxides such as sodium and potassium oxide seems to play a major role in the presence of dissolved silica during petrification. However, their significance in the petrification phenomenon that occurs in fossilized plant wood is not yet known. Therefore, in this study, cluster analysis was conducted to determine the relationship between the presence of silica and alkaline compounds in petrified wood fossils. The approach used was -means clustering supported by the Elbow Method, which aims to review and order a complex set of data into subsets, thus allowing interpretation. The results showed that the clustering of the fossil wood composition data was optimal at  = 3. There is a fair correlation between the presence of silica and alkali oxide compounds (-0.504 to -0.387), as well as with another inorganic compounds (+0.957). The presence of sodium and potassium is strongly correlated during silicification (+0.905). Additionally, the results of data clustering made the wood fossilization process susceptible to describe, especially through data regression. The data visualization provides more facts and proper explanations of the role of alkaline oxides in wood silicification. This study furthers our understanding of wood fossilization, especially the diagenesis of wood chemical composition in geological history.
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