Data-driven identification and analysis of the glass transition in polymer melts

Abstract
We propose a data-driven approach based on information about structural fluctuations of polymer chains, which clearly identifies the glass transition temperature of polymer melts of weakly semiflexible chains. We use principal component analysis (PCA) with clustering to distinguish between liquid and glassy states and predict in the asymptotic limit. Our method indicates that for temperatures approaching from above it is sufficient to consider short molecular dynamics simulation trajectories, which just reach into the Rouse-like monomer displacement regime. The first eigenvalue of PCA and participation ratio show sharp changes around . Our approach requires minimum user inputs and is robust and transferable.
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