离子化合物非晶化焓的机器学习加速预测

IF 9.6 1区 化学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Qian Yu, Guang Sun and Wei Luo*, 
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引用次数: 0

摘要

非晶态离子材料在先进的能量存储、电催化和光学器件方面具有前景,但系统地评估其形成非晶态相的倾向仍然不发达。在这里,我们提出了一个用于有效预测非晶化焓的机器学习框架,非晶化焓是将晶体离子化合物转化为非晶相的热力学成本的通用度量。通过将标准化的基于dft的熔炼和淬火协议与机器学习相结合,我们建立了一个包含407种化合物的训练集,并确定了与非晶化焓相关的关键描述符。随机森林回归器突出了相关特征,但显示出有限的预测能力。为了克服这个问题,我们实现了最先进的图神经网络(GNN)之一e3nn,并采用了迁移学习方法。应用该GNN对12123种离子化合物进行筛选,发现氮化物和硫化物通常会抑制非晶化,而富含碱或卤素和多阳离子的化合物则有利于非晶化。我们的数据驱动方法为发现新型非晶离子材料提供了实用指南,加速了不同应用的实验开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning-Accelerated Prediction of Amorphization Enthalpy in Ionic Compounds

Machine Learning-Accelerated Prediction of Amorphization Enthalpy in Ionic Compounds

Amorphous ionic materials hold promise for advanced energy storage, electrocatalysis, and optical devices, yet systematically evaluating their propensity to form amorphous phases remains underdeveloped. Here, we present a machine learning framework for efficiently predicting amorphization enthalpy, a universal measure of the thermodynamic cost of converting crystalline ionic compounds to amorphous phases. By combining a standardized DFT-based melt-and-quench protocol with machine learning, we build a training set of 407 compounds and identify key descriptors linked to the amorphization enthalpy. A random forest regressor highlights relevant features but shows a limited predictive power. To overcome this, we implement e3nn, one of the state-of-art graph neural networks (GNN), and adopt a transfer-learning approach. Applying this GNN to screen 12,123 ionic compounds reveals that nitrides and sulfides typically resist amorphization, while alkali- or halogen-rich and multi-cation compositions favor it. Our data-driven approach offers a practical guide for discovering novel amorphous ionic materials, accelerating experimental development across diverse applications.

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来源期刊
ACS Materials Letters
ACS Materials Letters MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
14.60
自引率
3.50%
发文量
261
期刊介绍: ACS Materials Letters is a journal that publishes high-quality and urgent papers at the forefront of fundamental and applied research in the field of materials science. It aims to bridge the gap between materials and other disciplines such as chemistry, engineering, and biology. The journal encourages multidisciplinary and innovative research that addresses global challenges. Papers submitted to ACS Materials Letters should clearly demonstrate the need for rapid disclosure of key results. The journal is interested in various areas including the design, synthesis, characterization, and evaluation of emerging materials, understanding the relationships between structure, property, and performance, as well as developing materials for applications in energy, environment, biomedical, electronics, and catalysis. The journal has a 2-year impact factor of 11.4 and is dedicated to publishing transformative materials research with fast processing times. The editors and staff of ACS Materials Letters actively participate in major scientific conferences and engage closely with readers and authors. The journal also maintains an active presence on social media to provide authors with greater visibility.
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