Advancing 2D material predictions: superior work function estimation with atomistic line graph neural networks

IF 3.9 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
RSC Advances Pub Date : 2024-11-29 DOI:10.1039/D4RA07703B
Harikrishnan Sibi, Jovita Biju and Chandra Chowdhury
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Abstract

Despite the increased research and scholarly attention on two-dimensional (2D) materials, there is still a limited range of practical applications for these materials. This is because it is challenging to acquire properties that are usually obtained by experiments or first-principles predictions, which require substantial time and resources. Descriptor-based machine learning models frequently require further density functional theory (DFT) calculations to enhance prediction accuracy due to the intricate nature of the systems and the constraints of the descriptors employed. Unlike these models, research has demonstrated that graph neural networks (GNNs), which solely rely on the systems' coordinates for model description, greatly improve the ability to represent and simulate atomistic materials. Within this framework, we employed the Atomistic Line Graph Neural Network (ALIGNN) to predict the work function, a crucial material characteristic, for a diverse array of 2D materials sourced from the Computational 2D Materials Database (C2DB). We found that the ALIGNN algorithm shows superior performance compared to standard feature-based approaches. It attained a mean absolute error of 0.20 eV, whereas random forest models achieved 0.27 eV.

Abstract Image

推进二维材料预测:利用原子线图神经网络进行卓越的功函数估算
尽管对二维(2D)材料的研究和学术关注日益增多,但这些材料的实际应用范围仍然有限。这是因为要获得通常通过实验或第一原理预测获得的特性具有挑战性,而这需要大量的时间和资源。基于描述符的机器学习模型经常需要进一步的密度泛函理论(DFT)计算,以提高预测的准确性,这是由于系统的复杂性和所使用描述符的限制。与这些模型不同的是,研究表明,图神经网络(GNN)完全依赖于系统坐标进行模型描述,大大提高了表示和模拟原子材料的能力。在此框架内,我们采用原子线图神经网络(ALIGNN)来预测来自计算二维材料数据库(C2DB)的各种二维材料的功函数(一种重要的材料特性)。我们发现,与标准的基于特征的方法相比,ALIGNNN 算法表现出更优越的性能。它的平均绝对误差为 0.20 eV,而随机森林模型为 0.27 eV。
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来源期刊
RSC Advances
RSC Advances chemical sciences-
CiteScore
7.50
自引率
2.60%
发文量
3116
审稿时长
1.6 months
期刊介绍: An international, peer-reviewed journal covering all of the chemical sciences, including multidisciplinary and emerging areas. RSC Advances is a gold open access journal allowing researchers free access to research articles, and offering an affordable open access publishing option for authors around the world.
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