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Application of Scikit and Keras Libraries for the Classification of Iron Ore Data Acquired by Laser-Induced Breakdown Spectroscopy (LIBS)

机译:Scikit和Keras库在激光诱导击穿光谱法(LIBS)采集的铁矿石数据分类中的应用

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摘要

Due to the complexity of, and low accuracy in, iron ore classification, a method of Laser-Induced Breakdown Spectroscopy (LIBS) combined with machine learning is proposed. In the research, we collected LIBS spectra of 10 iron ore samples. At the beginning, principal component analysis algorithm was employed to reduce the dimensionality of spectral data, then we applied k-nearest neighbor model, neural network model, and support vector machine model to the classification. The results showed that the accuracy of three models were 82.96%, 93.33%, and 94.07% respectively. The results also demonstrated that LIBS with machine learning model exhibits an excellent classification performance. Therefore, LIBS technique combined with machine learning can achieve a rapid, precise classification of iron ores, and can provide a completely new method for iron ores’ selection in the metallurgical industry.
机译:由于铁矿石分类的复杂性和准确性低,提出了一种结合机器学习的激光诱导击穿光谱法(LIBS)。在研究中,我们收集了10个铁矿石样品的LIBS光谱。最初,使用主成分分析算法来减少光谱数据的维数,然后将k最近邻模型,神经网络模型和支持向量机模型应用于分类。结果表明,三个模型的准确度分别为82.96%,93.33%和94.07%。结果还表明,具有机器学习模型的LIBS具有出色的分类性能。因此,LIBS技术与机器学习相结合,可以快速,准确地对铁矿石进行分类,并为冶金行业中的铁矿石选择提供一种全新的方法。

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