机器学习(ML)辅助氧化物涂层液态金属(LM)合金的表面张力和振荡诱导弹性模量研究。

IF 4.9 3区 材料科学 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY JPhys Materials Pub Date : 2023-10-01 Epub Date: 2023-09-26 DOI:10.1088/2515-7639/acf78c
Kazi Zihan Hossain, Sharif Amit Kamran, Alireza Tavakkoli, M Rashed Khan
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引用次数: 0

摘要

氧化物涂层的高表面张力流体的悬滴经常产生扰动形状,阻碍界面研究。共晶镓铟或Galinstan是涂有~5 nm氧化镓(Ga2O3)膜的高表面张力流体,属于这种流体分类,也称为液态金属(LMs)。最近出现的基于LM的应用通常不能在不分析不同环境中的界面能量学的情况下进行。虽然文献中有许多技术可用于界面研究,但基于悬滴的分析是最简单的。然而,由于表面氧化物的存在,悬滴的扰动形状经常被忽视,成为误差的来源。此外,利用振荡悬滴的表面氧化物的探索性研究尚未开发。我们解决了这两个挑战,并提出了两个有贡献的新颖性——(a)通过利用机器学习(ML)技术,我们预测了扰动垂向液滴的近似表面张力值;(ii)通过利用振荡诱导气泡张力计方法,我们研究了氧化物涂层LM液滴的动态弹性模量。我们根据LM的垂坠形状参数创建了数据集,并训练了不同的模型进行比较。我们在所有型号中都实现了>99%的准确率,并增加了与其他流体配合使用的多功能性。进一步利用性能最佳的模型来预测非轴对称LM液滴的近似值。然后,我们分析了LM在空气中的弹性和粘性模量,利用振荡诱导的垂向液滴,这为界面研究提供了替代昂贵流变仪的补充机会。我们相信,它将利用对称液滴和扰动液滴,对LM上的氧化物层进行更基础的研究。我们的研究拓宽了材料科学的视野,来自ML和人工智能领域的研究人员可以协同工作,解决与表面科学、界面研究和其他与基于LM的系统相关的研究相关的更复杂的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine learning (ML)-assisted surface tension and oscillation-induced elastic modulus studies of oxide-coated liquid metal (LM) alloys.

Pendant drops of oxide-coated high-surface tension fluids frequently produce perturbed shapes that impede interfacial studies. Eutectic gallium indium or Galinstan are high-surface tension fluids coated with a ∼5 nm gallium oxide (Ga2O3) film and falls under this fluid classification, also known as liquid metals (LMs). The recent emergence of LM-based applications often cannot proceed without analyzing interfacial energetics in different environments. While numerous techniques are available in the literature for interfacial studies- pendant droplet-based analyses are the simplest. However, the perturbed shape of the pendant drops due to the presence of surface oxide has been ignored frequently as a source of error. Also, exploratory investigations of surface oxide leveraging oscillatory pendant droplets have remained untapped. We address both challenges and present two contributing novelties- (a) by utilizing the machine learning (ML) technique, we predict the approximate surface tension value of perturbed pendant droplets, (ii) by leveraging the oscillation-induced bubble tensiometry method, we study the dynamic elastic modulus of the oxide-coated LM droplets. We have created our dataset from LM's pendant drop shape parameters and trained different models for comparison. We have achieved >99% accuracy with all models and added versatility to work with other fluids. The best-performing model was leveraged further to predict the approximate values of the nonaxisymmetric LM droplets. Then, we analyzed LM's elastic and viscous moduli in air, harnessing oscillation-induced pendant droplets, which provides complementary opportunities for interfacial studies alternative to expensive rheometers. We believe it will enable more fundamental studies of the oxide layer on LM, leveraging both symmetric and perturbed droplets. Our study broadens the materials science horizon, where researchers from ML and artificial intelligence domains can work synergistically to solve more complex problems related to surface science, interfacial studies, and other studies relevant to LM-based systems.

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来源期刊
JPhys Materials
JPhys Materials Physics and Astronomy-Condensed Matter Physics
CiteScore
10.30
自引率
2.10%
发文量
40
审稿时长
12 weeks
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