Abstract
The complexity and diversity of polymer topologies, or chain architectures, present substantial challenges in predicting and engineering polymer properties. Although machine learning is increasingly used in polymer science, applications to address architecturally complex polymers are nascent. Here, we use a generative machine learning model based on variational autoencoders and data generated from molecular dynamics simulations to design polymer topologies that exhibit target properties. Following the construction of a dataset featuring 1,342 polymers with linear, cyclic, branch, comb, star, or dendritic structures, we employ a multi-task learning framework that effectively reconstructs and classifies polymer topologies while predicting their dilute-solution radii of gyration. This framework enables the generation of novel polymer topologies with target size, which is subsequently validated through molecular simulation. These capabilities are then exploited to contrast rheological properties of topologically distinct polymers with otherwise similar dilute-solution behavior. This research opens new avenues for engineering polymers with more intricate and tailored properties with machine learning.
Supplementary materials
Title
Supplementary Information
Description
Topological descriptors details; Polymer topology dataset
generation; Graph cleansing procedure; Guided polymer generation and validation; Additional VAE results
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Supplementary weblinks
Title
GitHub Repository for poly-topoGNN-vae
Description
The repository is structured with Python files and Jupyter notebooks to reproduce all figures and utilize models.
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ToPoRg-1342: dataset of single-chain radii of gyration for 1,342 topologically diverse coarse-grained polymers
Description
This distribution provides access to 1,342 configurations of coarse-grained polymers. The data is provided as a serialized object using the `pickle' Python module and in csv format. The data was compiled using Python version 3.8.
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