Issue 20, 2022

Investigating the quasi-liquid layer on ice surfaces: a comparison of order parameters

Abstract

Ice surfaces are characterized by pre-melted quasi-liquid layers (QLLs), which mediate both crystal growth processes and interactions with external agents. Understanding QLLs at the molecular level is necessary to unravel the mechanisms of ice crystal formation. Computational studies of the QLLs heavily rely on the accuracy of the methods employed for identifying the local molecular environment and arrangements, discriminating between solid-like and liquid-like water molecules. Here we compare the results obtained using different order parameters to characterize the QLLs on hexagonal ice (Ih) and cubic ice (Ic) model surfaces investigated with molecular dynamics (MD) simulations in a range of temperatures. For the classification task, in addition to the traditional Steinhardt order parameters in different flavours, we select an entropy fingerprint and a deep learning neural network approach (DeepIce), which are conceptually different methodologies. We find that all the analysis methods give qualitatively similar trends for the behaviours of the QLLs on ice surfaces with temperature, with some subtle differences in the classification sensitivity limited to the solid–liquid interface. The thickness of QLLs on the ice surface increases gradually as the temperature increases. The trends of the QLL size and of the values of the order parameters as a function of temperature for the different facets may be linked to surface growth rates which, in turn, affect crystal morphologies at lower vapour pressure. The choice of the order parameter can be therefore informed by computational convenience except in cases where a very accurate determination of the liquid–solid interface is important.

Graphical abstract: Investigating the quasi-liquid layer on ice surfaces: a comparison of order parameters

Supplementary files

Article information

Article type
Paper
Submitted
14 Feb 2022
Accepted
05 May 2022
First published
05 May 2022
This article is Open Access
Creative Commons BY license

Phys. Chem. Chem. Phys., 2022,24, 12476-12487

Investigating the quasi-liquid layer on ice surfaces: a comparison of order parameters

J. Shi, M. Fulford, H. Li, M. Marzook, M. Reisjalali, M. Salvalaglio and C. Molteni, Phys. Chem. Chem. Phys., 2022, 24, 12476 DOI: 10.1039/D2CP00752E

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