posted on 2024-01-24, 21:45authored byTian Ren, Yuanyuan Li, Xi Wang, Yurong Deng, Chengbin Zheng
Rapid
and in situ identification of specific polymers is a challenging
and crucial step in plastic recycling. However, conventional techniques
continue to exhibit significant limitations in the rapid and field
classification of plastic products, especially with the wide range
of commercially available color polymers because of their large size,
high energy consumption, and slow and complicated analysis procedures.
In this work, a simple analytical system integrating a miniature and
low power consumption (22.3 W) pyrolyzer (Pyr) and a low temperature,
atmospheric pressure point discharge optical emission spectrometer
(μPD-OES) was fabricated for rapidly identifying polymer types.
Plastic debris is decomposed in the portable pyrolyzer to yield volatile
products, which are then swept into the μPD-OES instrument for
monitoring the optical emission patterns of the thermal pyrolysis
products. With machine learning, five extensively used raw polymers
and their consumer plastics were classified with an accuracy of ≥97.8%.
Furthermore, the proposed method was applied to the identification
of the aged polymers and plastic samples collected from a garbage
recycling station, indicating its great potential for identification
of environmentally weathered plastics. This portable Pyr-μPD-OES
system provides a cost-effective tool for rapid and field identification
of polymer types of recycled plastic for proper management and resource
recycling.