Machine learning enables polymer cloud-point engineering via inverse design

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Abstract

Inverse design is an outstanding challenge in disordered systems with multiple length scales such as polymers, particularly when designing polymers with desired phase behavior. Here we demonstrate high-accuracy tuning of poly(2-oxazoline) cloud point via machine learning. With a design space of four repeating units and a range of molecular masses, we achieve an accuracy of 4 °C root mean squared error (RMSE) in a temperature range of 24–90 °C, employing gradient boosting with decision trees. The RMSE is >3x better than linear and polynomial regression. We perform inverse design via particle-swarm optimization, predicting and synthesizing 17 polymers with constrained design at 4 target cloud points from 37 to 80 °C. Our approach challenges the status quo in polymer design with a machine learning algorithm, that is capable of fast and systematic discovery of new polymers.

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Kumar, J. N., Li, Q., Tang, K. Y. T., Buonassisi, T., Gonzalez-Oyarce, A. L., & Ye, J. (2019). Machine learning enables polymer cloud-point engineering via inverse design. Npj Computational Materials, 5(1). https://doi.org/10.1038/s41524-019-0209-9

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