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Machine intelligence-accelerated discovery of all-natural plastic substitutes

Nature Nanotechnology 2024 78 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 60 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Tianle Chen, Zhenqian Pang, Shuaiming He, Yang Li, Snehi Shrestha, Joshua M. Little, Haochen Yang, Tsai‐Chun Chung, Jiayue Sun, Hayden Christopher Whitley, I‐Chi Lee, Taylor J. Woehl, Teng Li, Teng Li, Liangbing Hu, Po‐Yen Chen

Summary

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.

One possible solution against the accumulation of petrochemical plastics in natural environments is to develop biodegradable plastic substitutes using natural components. However, discovering all-natural alternatives that meet specific properties, such as optical transparency, fire retardancy and mechanical resilience, which have made petrochemical plastics successful, remains challenging. Current approaches still rely on iterative optimization experiments. Here we show an integrated workflow that combines robotics and machine learning to accelerate the discovery of all-natural plastic substitutes with programmable optical, thermal and mechanical properties. First, an automated pipetting robot is commanded to prepare 286 nanocomposite films with various properties to train a support-vector machine classifier. Next, through 14 active learning loops with data augmentation, 135 all-natural nanocomposites are fabricated stagewise, establishing an artificial neural network prediction model. We demonstrate that the prediction model can conduct a two-way design task: (1) predicting the physicochemical properties of an all-natural nanocomposite from its composition and (2) automating the inverse design of biodegradable plastic substitutes that fulfils various user-specific requirements. By harnessing the model's prediction capabilities, we prepare several all-natural substitutes, that could replace non-biodegradable counterparts as exhibiting analogous properties. Our methodology integrates robot-assisted experiments, machine intelligence and simulation tools to accelerate the discovery and design of eco-friendly plastic substitutes starting from building blocks taken from the generally-recognized-as-safe database.

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