Dynamics of supercooled liquids from static averaged quantities using machine learning

Publication date

2023-06-01

Authors

Ciarella, Simone
Chiappini, MassimilianoISNI 0000000506355213
Boattini, EmanueleISNI 0000000517780223
Dijkstra, M.ISNI 0000000358257928
Janssen, Liesbeth M.C.

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

We introduce a machine-learning approach to predict the complex non-Markovian dynamics of supercooled liquids from static averaged quantities. Compared to techniques based on particle propensity, our method is built upon a theoretical framework that uses as input and output system-averaged quantities, thus being easier to apply in an experimental context where particle resolved information is not available. In this work, we train a deep neural network to predict the self intermediate scattering function of binary mixtures using their static structure factor as input. While its performance is excellent for the temperature range of the training data, the model also retains some transferability in making decent predictions at temperatures lower than the ones it was trained for, or when we use it for similar systems. We also develop an evolutionary strategy that is able to construct a realistic memory function underlying the observed non-Markovian dynamics. This method lets us conclude that the memory function of supercooled liquids can be effectively parameterized as the sum of two stretched exponentials, which physically corresponds to two dominant relaxation modes.

Keywords

deep learning, evolutionary strategy, glass, liquid dynamics, soft matter, Software, Human-Computer Interaction, Artificial Intelligence

Citation

Ciarella, S, Chiappini, M, Boattini, E, Dijkstra, M & Janssen, L M C 2023, 'Dynamics of supercooled liquids from static averaged quantities using machine learning', Machine Learning: Science and Technology, vol. 4, no. 2, 025010, pp. 1-13. https://doi.org/10.1088/2632-2153/acc7e1