arXiv Open Access 2025

AI-assisted design of chemically recyclable polymers for food packaging

Brandon K. Phan Chiho Kim Janhavi Nistane Wei Xiong Haoyu Chen +7 lainnya
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Abstrak

Polymer packaging plays a crucial role in food preservation but poses major challenges in recycling and environmental persistence. To address the need for sustainable, high-performance alternatives, we employed a polymer informatics workflow to identify single- and multi-layer drop-in replacements for polymer-based packaging materials. Machine learning (ML) models, trained on carefully curated polymer datasets, predicted eight key properties across a library of approximately 7.4 million ring-opening polymerization (ROP) polymers generated by virtual forward synthesis (VFS). Candidates were prioritized by the enthalpy of polymerization, a critical metric for chemical recyclability. This screening yielded thousands of promising candidates, demonstrating the feasibility of replacing diverse packaging architectures. We then experimentally validated poly(p-dioxanone) (poly-PDO), an existing ROP polymer whose barrier performance had not been previously reported. Validation showed that poly-PDO exhibits strong water barrier performance, mechanical and thermal properties consistent with predictions, and excellent chemical recyclability (95% monomer recovery), thereby meeting the design targets and underscoring its potential for sustainable packaging. These findings highlight the power of informatics-driven approaches to accelerate the discovery of sustainable polymers by uncovering opportunities in both existing and novel chemistries.

Penulis (12)

B

Brandon K. Phan

C

Chiho Kim

J

Janhavi Nistane

W

Wei Xiong

H

Haoyu Chen

W

Woo Jin Jang

F

Farzad Gholami

Y

Yongliang Su

J

Jerry Qi

R

Ryan Lively

W

Will Gutekunst

R

Rampi Ramprasad

Format Sitasi

Phan, B.K., Kim, C., Nistane, J., Xiong, W., Chen, H., Jang, W.J. et al. (2025). AI-assisted design of chemically recyclable polymers for food packaging. https://arxiv.org/abs/2511.04704

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2025
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arXiv
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