Zhuoyan Zhou, Wenhan Gao, Saifullah Jamali, Cong Yu, Yuzhu Liu
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引用次数: 0
Abstract
The rapid identification and classification of metal garbage has been experimentally investigated. By combining laser-induced breakdown spectroscopy (LIBS) and machine learning, metal garbage can be effectively identified through spectral analysis. In this work, a novel method for metal garbage classification was developed, and a LIBS system was self-developed. As an example of metal recycling, five types of metal were adopted. Several characteristic lines of Al, W, Fe, Cu, Sn, Pb, and C were identified. For a more effective classification, principal component analysis was conducted to reduce the dimension of the spectra. Samples after the dimension reduction were classified by using K-nearest neighbors, and five types were obtained, exhibiting a final classification accuracy of 97.18%. Moreover, a mathematical model of the linear formulas between spectrum and concentration was established to achieve quantitative analysis with Fe taken as an example, laying the foundation for more refined classification.
对金属垃圾的快速识别和分类进行了实验研究。将激光诱导击穿光谱(LIBS)与机器学习相结合,可以通过光谱分析有效识别金属垃圾。本研究开发了一种新型的金属垃圾分类方法,并自主研发了一套激光诱导击穿光谱系统。以金属回收为例,采用了五种金属。确定了 Al、W、Fe、Cu、Sn、Pb 和 C 的几条特征线。为了更有效地进行分类,进行了主成分分析以降低光谱的维度。利用 K 最近邻法对降维后的样本进行分类,得到五种类型,最终分类准确率为 97.18%。此外,以铁为例,建立了光谱与浓度之间线性公式的数学模型,实现了定量分析,为更精细的分类奠定了基础。
期刊介绍:
Journal of Applied Spectroscopy reports on many key applications of spectroscopy in chemistry, physics, metallurgy, and biology. An increasing number of papers focus on the theory of lasers, as well as the tremendous potential for the practical applications of lasers in numerous fields and industries.