Research on automotive scrap metal classification method using laser-induced breakdown spectroscopy and two-step clustering algorithm

Author:

Lin Jingjun1ORCID,Dai Panyang1ORCID,Che Changjin2ORCID,Lin Xiaomei1,Li Yao1ORCID,Yang Jiangfei1ORCID,Huang Yutao1,Ren Yongkang1ORCID,Zhen Xin1,Yang Xingyue3

Affiliation:

1. Changchun University of Technology 1 , Changchun, Jilin 130012, China

2. Beihua University 2 , Changchun, Jilin 132013, China

3. Jiangxi Normal University 3 , Jiangxi 330022, China

Abstract

In the recycling of scrap metal, the establishment of the classification database of recyclables has the advantages of fast classification speed and high analysis accuracy. However, the classification and recycling of unknown samples become highly significant due to the extensive variety of standard metal samples and the challenges in obtaining them. In this study, a method for multi-element classification of automotive scrap metals in general environmental conditions was achieved by utilizing laser-induced breakdown spectroscopy (LIBS) and two-step clustering algorithm (K-means, hierarchical clustering). The two unsupervised learning algorithms were employed to cluster the LIBS spectral data of 60 automotive scrap metal samples rapidly and hierarchically. Three rare metal elements and three elements for distinguishing metal categories were selected to meet the recycling requirements. After applying the multiplicative scatter correction to the spectral data for calibration, the initial clustering clusters were determined using the Davies–Bouldin index, Calinski–Harabasz index, and silhouette coefficient. Then, the Kruskal–Wallis test was conducted on each cluster to check the significance. The clusters that failed the test were split and reclustered until all clusters met the significance criterion (α=0.05). The accuracy of the proposed method for classifying the collected automotive scrap metals reached 97.6%. This indicates the great potential of this method in the field of automotive scrap metal classification.

Funder

Department of Science and Technology of Jilin Province

National Natural Science Foundation of China

Publisher

Laser Institute of America

Reference29 articles.

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