4.6 Article

Influence of the catalytic system on the methanolysis of polyethylene terephthalate at mild conditions: A systematic investigation

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CHEMICAL ENGINEERING SCIENCE
卷 260, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.ces.2022.117875

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Polyethylene terephthalate; Mixed fabrics depolymerization; Low-temperature methanolysis; HPLC characterization; Product distribution

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  1. Whiletrue s.r.l.

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Plastic disposal poses a threat to the environment due to the lack of cost-effective technologies for producing high-quality polymers from scraps. This study investigates the efficiency of different catalytic systems in the methanolysis of PET and identifies potassium carbonate and dichloromethane as the most effective catalyst/cosolvent pair.
Plastic disposal is becoming a threat to our environment because of the severe lack of technologies producing high-quality polymers from scraps at a competitive cost compared to the virgin versions. Regarding polyethylene terephthalate (PET), different recycling technologies have been proposed, but they have several disadvantages in terms of cost, process flexibility, and safety. This work systematically investigates the efficiency of different catalytic systems in the methanolysis of PET, operated at mild temperature. High-performance liquid chromatography was adopted to assess the depolymerization efficacy and the product distribution, allowing a quantitative comparison between the different catalytic systems. Potassium carbonate and dichloromethane proved to be the best performing catalyst/cosolvent pair, leading to almost complete depolymerization of PET from bottle flakes and high yield to dimethyl terephthalate. On the other side, when treating PET/cotton fabrics, the hydrolysis catalyzed by hydroxyl groups in the cotton hampered the complete PET depolymerization, leaving room for further research. (C) 2022 Elsevier Ltd. All rights reserved.

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