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Small angle scattering of diblock copolymers profiled by machine learning

Chi-Huan Tung, Shou-Yi Chang, Hsin‐Lung Chen, Yangyang Wang, Kunlun Hong, Jan‐Michael Y. Carrillo, Bobby G. Sumpter, Yuya Shinohara, Changwoo Do, Wei‐Ren Chen

2022The Journal of Chemical Physics15 citationsDOIOpen Access PDF

Abstract

We outline a machine learning strategy for quantitively determining the conformation of AB-type diblock copolymers with excluded volume effects using small angle scattering. Complemented by computer simulations, a correlation matrix connecting conformations of different copolymers according to their scattering features is established on the mathematical framework of a Gaussian process, a multivariate extension of the familiar univariate Gaussian distribution. We show that the relevant conformational characteristics of copolymers can be probabilistically inferred from their coherent scattering cross sections without any restriction imposed by model assumptions. This work not only facilitates the quantitative structural analysis of copolymer solutions but also provides the reliable benchmarking for the related theoretical development of scattering functions.

Topics & Concepts

ScatteringCopolymerGaussianStatistical physicsUnivariateMatrix (chemical analysis)Computer scienceMaterials sciencePhysicsMultivariate statisticsOpticsPolymerMachine learningNuclear magnetic resonanceQuantum mechanicsComposite materialAdvanced Polymer Synthesis and CharacterizationMachine Learning in Materials ScienceNMR spectroscopy and applications
Small angle scattering of diblock copolymers profiled by machine learning | Litcius