2022
DOI: 10.1021/acsomega.2c04649
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Machine Learning with Enormous “Synthetic” Data Sets: Predicting Glass Transition Temperature of Polyimides Using Graph Convolutional Neural Networks

Abstract: In the present work, we address the problem of utilizing machine learning (ML) methods to predict the thermal properties of polymers by establishing "structure−property" relationships. Having focused on a particular class of heterocyclic polymers, namely polyimides (PIs), we developed a graph convolutional neural network (GCNN), being one of the most promising tools for working with big data, to predict the PI glass transition temperature T g as an example of the fundamental property of polymers. To train the … Show more

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Cited by 27 publications
(21 citation statements)
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“…47 We also note that Huang et al have used atomic energies to train NN-based atomistic models. 69 In a wider perspective, the pre-training of NN models is a well-documented approach in the ML literature for various applications and domains, [70][71][72][73][74] and it has very recently been described in the context of interatomic potential models, 47,75,76 property prediction with synthetic pre-training data, 77 and as a means to learn generalpurpose representations for atomistic structure. 76…”
Section: Digital Discovery Accepted Manuscriptmentioning
confidence: 99%
“…47 We also note that Huang et al have used atomic energies to train NN-based atomistic models. 69 In a wider perspective, the pre-training of NN models is a well-documented approach in the ML literature for various applications and domains, [70][71][72][73][74] and it has very recently been described in the context of interatomic potential models, 47,75,76 property prediction with synthetic pre-training data, 77 and as a means to learn generalpurpose representations for atomistic structure. 76…”
Section: Digital Discovery Accepted Manuscriptmentioning
confidence: 99%
“…CNNs are also increasingly being adopted for feature extraction and property prediction in materials science research. [24][25][26][27] Taking inspiration from these approaches, we have recently developed an ML pipeline called nanoNET 28 for predicting pair correlation functions of a mesoscale polymer nanocomposite model system. Here, we extend and generalize the nanoNET workflow for an atomistic hard material system.…”
Section: Introductionmentioning
confidence: 99%
“…More recently, graph convolutional neural networks (GCNs) have become a promising framework to predict the properties of chemical compounds as well as polymer molecules due to their learning capability in a black-box manner. In the GCNs, the chemical structures are converted into a molecular graph, where nodes and edges represent atoms and bonds. Unlike the descriptor-based methods, the GCNs have the capability to autonomously learn the molecular representations and enable end-to-end predictions of properties from the molecular graphs.…”
Section: Introductionmentioning
confidence: 99%