Single particle fluctuations dominate the long-time dynamic susceptibility in glass-forming liquids
Rajib K. Pandit, Elijah Flenner, Horacio E. Castillo

TL;DR
This paper investigates the long-time behavior of dynamic susceptibility in glass-forming liquids, revealing dominance of single-particle fluctuations at extended timescales and proposing a method to isolate collective effects.
Contribution
It introduces a new approach to separate collective relaxation from single-particle fluctuations in dynamic susceptibility measurements of glass-forming liquids.
Findings
At very long times, the overlap decays as a power law $t^{-d/2}$.
Single-particle fluctuations dominate $ ext{chi}_4(t)$ beyond 10-100 times the $ au_ ext{alpha}$.
A method to extract collective relaxation contributions was developed and applied to simulations.
Abstract
Liquids near the glass transition exhibit dynamical heterogeneity, i.e. correlated regions in the liquid relax at either a much faster rate or a much slower rate than the average. This collective phenomenon has been characterized by measurements of a dynamic susceptibility , which are sometimes interpreted in terms of the size of those relaxing regions and the intensity of the fluctuations. We show that the results of those measurements can be affected not only by the collective fluctuations in the relaxation rate, but also by density fluctuations in the initial state and by single-particle fluctuations. We also show that at very long times the average overlap probing the similarity between an initial and a final state separated by a time interval decays as a power law . This is much slower than the stretched exponential behavior $C(t) \sim {\rm…
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Taxonomy
TopicsMaterial Dynamics and Properties · Theoretical and Computational Physics · Complex Systems and Time Series Analysis
