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Automated matching of two-time X-ray photon correlation maps from protein dynamics with Cahn-Hilliard type simulations using autoencoder networks

Authors :
Timmermann, S.
Starostin, V.
Girelli, A.
Ragulskaya, A.
Rahmann, H.
Reiser, M.
Begam, N.
Randolph, L.
Sprung, M.
Westermeier, F.
Zhang, F.
Schreiber, F.
Gutt, C.
Publication Year :
2021

Abstract

We use machine learning methods for an automated classification of experimental XPCS two-time correlation functions from an arrested liquid-liquid phase separation of a protein solution. We couple simulations based on the Cahn-Hilliard equation with a glass transition scenario and classify the measured correlation maps automatically according to quench depth and critical concentration at a glass/gel transition. We introduce routines and methodologies using an autoencoder network and a differential evolution based algorithm for classification of the measured correlation functions. The here presented method is a first step towards handling large amounts of dynamic data measured at high brilliance synchrotron and X-ray free-electron laser sources facilitating fast comparison to phase field models of phase separation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.11787
Document Type :
Working Paper