论文标题
从液滴配置信息中推断浓缩乳液的稳定性
Inferring the stability of concentrated emulsions from droplet configuration information
论文作者
论文摘要
当液滴紧紧地堆积在2D微通道中时,一对液滴的合并会触发一系列聚结的雪崩事件,这些事件在整个乳液中传播。发现这种传播是随机的,即,每个聚结事件并不一定触发另一个。为了研究局部概率传播如何影响雪崩的动力学,总体上使用了基于随机剂的模型。作为输入,i)液滴如何包装(配置)和ii)局部概率传播的度量(实验得出;流体和其他系统参数的功能),该模型预测了雪崩的预期尺寸分布。在本文中,我们研究了液滴配置如何影响雪崩动力学。我们发现这些雪崩的平均大小非依赖液滴的方式。当液滴堆积不同时,即使其他系统属性(液滴数量,流体特性,通道几何形状等)也保持恒定,雪崩动力学的变化很大。 bidisperse乳液的动力学变化较小,它们比单分散乳液更稳定。为了使系统级别了解给定的液滴配置如何促进或阻碍雪崩的传播,我们采用了图理论分析,其中乳液以图表表示。我们发现,基础图的特性,即平均程度和代数连通性,与观察到的雪崩动力学息息相关。我们利用这种依赖性来得出一个基于数据的模型,该模型可以从图形的属性中预测预期的雪崩大小。
When droplets are tightly packed in a 2D microchannel, coalescence of a pair of droplets can trigger an avalanche of coalescence events that propagate through the entire emulsion. This propagation is found to be stochastic, i.e. every coalescence event does not necessarily trigger another. To study how the local probabilistic propagation affects the dynamics of the avalanche, as a whole, a stochastic agent based model is used. Taking as input, i) how the droplets are packed (configuration) and ii) a measure of local probabilistic propagation (experimentally derived; function of fluid and other system parameters), the model predicts the expected size distribution of avalanches. In this article, we investigate how droplet configuration affects the avalanche dynamics. We find the mean size of these avalanches to depend non-trivially on how droplets are packed together. Large variations in the avalanche dynamics are observed when droplet packing are different, even when the other system properties (number of droplets, fluid properties, channel geometry, etc.) are kept constant. Bidisperse emulsions show less variation in the dynamics and they are surprisingly more stable than monodisperse emulsions. To get a systems-level understanding of how a given droplet-configuration either facilitates or impedes the propagation of an avalanche, we employ a graph-theoretic analysis, where emulsions are expressed as graphs. We find that the properties of the underlying graph, namely the mean degree and the algebraic connectivity, are well correlated with the observed avalanche dynamics. We exploit this dependence to derive a data-based model that predicts the expected avalanche sizes from the properties of the graph.