基于统计方法的古代玻璃制品成分分析与鉴定

Kerui Wu, Minghan Li, Hongyi Ren
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引用次数: 0

摘要

本文通过灵活运用统计方法分析了其在古玻璃制品成分分析和鉴定中的作用,重点介绍了四种统计方法:系统聚类算法、K-means算法、logistic回归模型和灰色关联分析。本文以2022年CUMCM C项目为例,系统地介绍了这四种常用的数据分类和统计方法,对给定的数据进行分类和分析。本文选择合适的高钾铅钡玻璃化学成分进行细分,并给出了具体的细分方法和结果。对未知类别的玻璃文物进行化学成分分析,鉴定其类型。获得了高钾文物表面风化的灰色关联矩阵,并对其化学成分关联度进行了分析。这极大地促进了古代文物中化学成分的成分分析和鉴定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Component Analysis and Identification of Ancient Glass Products Based on Statistical Methods
This paper analyzes its role in the composition analysis and identification of ancient glass products by flexible use of statistical methods, and emphasizes four statistical methods: systematic clustering algorithm, K-means algorithm, logistic regression model and grey correlation analysis. Taking the C project of CUMCM in 2022 as an example, this paper systematically introduces these four common data classification and statistical methods to classify and analyze the given data. In this paper, suitable chemical components of high potassium and lead barium glass were selected for subdivision, and the specific division methods and results w ere given. The chemical composition of glass relics of unknown category was analyzed to identify their type. The grey correlation matrix of surface weathering of high-potassium cultural relics was obtained, and the correlation degree of chemical components was analyzed. This greatly promotes the composition analysis and identification of chemical components in ancient relics.
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