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Machine learning application to automatically classify heavy minerals in river sand by using SEM/EDS data

机译:通过使用SEM / EDS数据,机器学习应用程序自动对河砂中的重型矿物质进行分类

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Heavy minerals are generally trace components of sand or sandstone. Fast and accurate heavy mineral classification has become a necessity. Energy Dispersive X-ray Spectrometers (EDS) integrated with Scanning Electron Microscopy (SEM) were used to obtain rapid heavy mineral elemental compositions. However, mineral identification is challenging since there are wide ranges of spectral datasets for natural minerals. This study aimed to find a reliable, machine learning classifier for identifying various heavy minerals based on EDS data. After selecting 22 distinct heavy minerals from modern river sands, we obtained their elemental data by SEM/EDS. The elemental data from a total of 3067 mineral grains were collected under various instrumental conditions. We compared the classification performance of four classifiers (Decision Tree, Random Forest, Support Vector Machine, Bayesian Network). Our results indicated that machine learning methods, especially Random Forest, can be used as the most effective classifier for heavy mineral classification.
机译:重型矿物质通常是沙子或砂岩的痕量组分。快速准确的重型矿物分类已成为必需品。与扫描电子显微镜(SEM)集成的能量分散X射线光谱仪(EDS)用于获得快速重的矿物元素组合物。然而,矿物质鉴定是具有挑战性,因为天然矿物质的光谱数据集宽范围。本研究旨在找到一种可靠的机器学习分类器,用于基于EDS数据识别各种重型矿物质。从现代河砂中选择22个不同的重型矿物后,我们通过SEM / EDS获得了元素数据。在各种仪器条件下收集了总共3067个矿物晶粒的元素数据。我们比较了四分类器的分类性能(决策树,随机森林,支持向量机,贝叶斯网络)。我们的结果表明,机器学习方法,特别是随机森林,可作为重型矿物分类的最有效分类器。

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