0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Sign in to save

AI-Assisted Design of Chemically Recyclable Polymers for Food Packaging

Polymers 2026 Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Brandon K. Phan, Chiho Kim, Janhavi Nistane, Wei Xiong, H Chen, Woo Jin Jang, Farzad Gholami, Yang Su, Jerry Qi, Ryan P. Lively, Will R. Gutekunst, Rampi Ramprasad

Summary

Researchers applied a machine learning–driven polymer informatics workflow to screen ~7.4 million ring-opening polymerization polymers for sustainable food packaging, experimentally validating poly(p-dioxanone) as a promising candidate with strong water barrier performance and ~95% chemical recyclability, demonstrating how data-driven design can bridge sustainability goals and real-world packaging applications.

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. Beyond identifying potential replacements, this work establishes a generalizable framework for navigating vast polymer design spaces under competing performance constraints. The results illustrate how data-driven polymer design can bridge the gap between sustainability concepts and experimentally realizable materials for real-world packaging applications.

Sign in to start a discussion.

More Papers Like This

Article Tier 2

Leveraging Artificial Intelligence for Accelerated Polymer Synthesis and Design

This review examines AI-enabled advances in polymer informatics, focusing on machine learning and deep learning approaches for accelerating the design of application-specific polymeric materials across energy storage, production, and sustainable economy applications including recyclable and biodegradable polymers. The review highlights how AI-powered workflows are shortening the design-to-discovery cycle for next-generation polymer materials.

Article Tier 2

Bioplastic design using multitask deep neural networks

Researchers used deep neural networks trained on nearly 23,000 polymer chemistries to identify 14 biodegradable bioplastics — made from biological sources rather than petroleum — that could replace the seven most commonly used synthetic plastics, which account for 75% of global plastic production. This AI-driven approach accelerates the search for eco-friendly plastic alternatives that naturally break down rather than fragmenting into persistent microplastics.

Article Tier 2

Feasibility of Utilizing Machine Learning to Identify a More Sustainable Alternative to Polyester in Textiles

Researchers used machine learning trained on the PI1M polymer dataset of over one million compounds to identify sustainable alternatives to polyester in textiles, predicting key material properties including glass transition temperature, density, melting temperature, oxygen permeability, and bulk modulus. The study found that artificial neural networks could screen polymer candidates for environmental compatibility while maintaining performance characteristics comparable to polyester.

Article Tier 2

Revealing factors influencing polymer degradation with rank-based machine learning

Researchers developed a machine learning platform using a ranking-based algorithm to predict and compare how easily different polymer materials biodegrade, integrating three different experimental datasets with varying conditions. Analysis revealed key molecular factors that control degradability, offering guidance for designing more environmentally friendly plastics.

Article Tier 2

Machine intelligence-accelerated discovery of all-natural plastic substitutes

Researchers combined robotics and machine learning to rapidly discover biodegradable plastic substitutes made entirely from natural ingredients, using an automated system to test 286 material combinations and build a predictive model that can design new materials to order. This approach dramatically speeds up the search for alternatives to petroleum-based plastics that contribute to microplastic pollution.

Share this paper