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Copolymer Informatics with Multitask Deep Neural Networks

Christopher Kuenneth, William Schertzer, Rampi Ramprasad

2021Macromolecules105 citationsDOIOpen Access PDF

Abstract

Polymer informatics tools have been recently gaining ground to efficiently and effectively develop, design, and discover new polymers that meet specific application needs. So far, however, these data-driven efforts have largely focused on homopolymers. Here, we address the property prediction challenge for copolymers, extending the polymer informatics framework beyond homopolymers. Advanced polymer fingerprinting and deep-learning schemes that incorporate multitask learning and meta learning are proposed. A large data set containing over 18 000 data points of glass transition, melting, and degradation temperature of homopolymers and copolymers of up to two monomers is used to demonstrate the copolymer prediction efficacy. The developed models are accurate, fast, flexible, and scalable to more copolymer properties when suitable data become available.

Topics & Concepts

CopolymerComputer sciencePolymerScalabilityDeep learningMaterials informaticsInformaticsTask (project management)MonomerSet (abstract data type)Materials scienceArtificial neural networkArtificial intelligenceNanotechnologyHealth informaticsSystems engineeringEngineeringDatabaseNursingPublic healthComposite materialMedicineEngineering informaticsProgramming languageElectrical engineeringMachine Learning in Materials ScienceComputational Drug Discovery MethodsAdvanced Polymer Synthesis and Characterization