Results in Optics (Aug 2021)

Classification of plastics using laser-induced breakdown spectroscopy combined with principal component analysis and K nearest neighbor algorithm

  • Xiaotao Yan,
  • Xinying Peng,
  • Yuzhi Qin,
  • Zhiying Xu,
  • Bohan Xu,
  • Chuangkai Li,
  • Nan Zhao,
  • Jiaming Li,
  • Qiongxiong Ma,
  • Qingmao Zhang

Journal volume & issue
Vol. 4
p. 100093

Abstract

Read online

Plastics play an important role in manufacture and our daily life. In order to realize fast classifications of plastics products, this paper proposes a method using laser-induced breakdown spectroscopy (LIBS) combined with principal component analysis (PCA) and K_nearest neighbor algorithm (kNN) to achieve highly-accurate classification of plastic products with a small amount of data training.After dimensionality reduction by PCA, the higher the dimensionality reduction, the higher the average recognition accuracy of samples, but the rising trend tends to be flat. When the original data of each sample is reduced to less than 10 dimensions, the classification accuracy of classifying the same kind of samples produced by different manufacturers into different categories is significantly higher than that of classifying the same kind of samples produced by different manufacturers into one category. However, when the data is reduced to more than 10 dimensions, there is little difference between the two classification methods, when reduced to 20 dimensions, the average recognition accuracy is 99.6%.In the aspect of improving classification efficiency, after dimensionality reduction by PCA, the training time of the model is reduced from 369 s to 168 s, and the time of classifying a single sample is reduced from 0.1 s to less than 0.02 s. This work provides an effective method for rapid automatic classification in the process of plastic manufacturing and recycling.

Keywords