A hybrid approach for metal element identification by using laser-induced breakdown spectroscopy data

Haofeng Zeng, Zhuoxiang Zhang, Sicong Liu
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Abstract

Recycling scrap metal is an important way to protect the ecological environment. Design effective yet efficient techniques to automatically identify recyclable scrap metals is an important task within this topic. Due to the advantages of fast response and high accuracy, laser-induced breakdown spectroscopy (LIBS) recently played an important role in the mineral identification. However, the identification accuracy of peak-seeking is greatly affected by the data quality of the LIBS spectrum, whereas machine learning methods may be greatly affected by the number of training data. By considering the above open issues, this paper proposes a hybrid algorithm based on support vector machine (SVM) and element peak-seeking. By investing the identified difference of the major element (with the largest composition in the alloy) and the general element (with composition more than 1% in the alloy) between peak-seeking and SVM, three integration types (i.e., rejection, partial acceptance, complete acceptance) are defined. The final recognition result is generated according to different integration types and the corresponding integration methods. To verify the feasibility of the proposed approach, a simulated alloy LIBS database was established based on 31 metal elements and the simulated alloy LIBS data according to their compositions. Comparing with the result obtained by only using SVM, the proposed method greatly improved the recognition accuracy. The accuracy of identifying all general elements increased from 8% to 74.5%. Experimental results confirmed the effectiveness of the proposed method in identification of general metal elements in terms of higher detection accuracy.
利用激光诱导击穿光谱数据进行金属元素鉴定的混合方法
回收废金属是保护生态环境的重要途径。设计有效而高效的技术来自动识别可回收的废金属是本课题的重要任务。激光诱导击穿光谱(LIBS)以其快速响应和高精度的优点,在矿物鉴定中发挥着重要的作用。然而,寻峰方法的识别精度受LIBS谱数据质量的影响较大,而机器学习方法受训练数据数量的影响较大。针对上述开放性问题,本文提出了一种基于支持向量机(SVM)和元素寻峰的混合算法。通过将寻峰与支持向量机识别出的主元素(合金中成分最多)与一般元素(合金中成分大于1%)的差异,定义了拒绝、部分接受、完全接受三种积分类型。根据不同的积分类型和相应的积分方法生成最终的识别结果。为了验证所提方法的可行性,基于31种金属元素和模拟合金LIBS数据,按其成分建立了模拟合金LIBS数据库。与仅使用支持向量机的结果相比,该方法大大提高了识别精度。识别所有一般元素的准确率由8%提高到74.5%。实验结果证实了该方法在一般金属元素鉴定中的有效性,具有较高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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