Abstract
Block copolymers play a vital role in materials science due to their widely studied self-assembly behavior. Traditionally, exploring the phase space of block copolymer self-assembly and associated structure–property relationships involves iterative synthesis, characterization, and theory, which is labor-intensive both experimentally and computationally. Here, we introduce a versatile, high-throughput workflow towards materials discovery that integrates controlled polymerization and automated chromatographic separation with a novel physics-informed machine learning (ML) algorithm for the rapid analysis of small-angle X-ray scattering (SAXS) data. Leveraging the expansive and high-quality experimental datasets generated by automated chromatography, this machine learning method effectively reduces data dimensionality by extracting chemical-independent features from SAXS data. This new approach allows for the rapid and accurate prediction of morphologies without repetitive manual analysis, achieving out-of-sample predictive accuracy of around 95% for both novel and existing materials in the training dataset. By focusing on a subset of samples with large predictive uncertainty, only a small fraction of the samples needs to be inspected to further improve accuracy and achieve near-perfect predictions. In summary, the synergistic combination of controlled synthesis, automated chromatography, and data-driven analysis creates a powerful workflow that markedly expedites the discovery of structure–property relationships in advanced soft materials.
Supplementary materials
Title
Supporting Information
Description
Methodology of block copolymer synthesis, automated chromatography, data collection, peak detection, feature extraction, and model development; numerical results of bagging and boosting models; analysis of misclassification instances.
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