Predicting Model for Device Density of States of Quantum-Confined SiC Nanotube with Magnetic Dopant: An Integrated Approach Utilizing Machine Learning and Density Functional Theory

IF 2.8 3区 材料科学 Q3 CHEMISTRY, PHYSICAL
Silicon Pub Date : 2024-09-10 DOI:10.1007/s12633-024-03127-0
Nguyen Thanh Tien, Pham Thi Bich Thao, Vusala Nabi Jafarova, Debarati Dey Roy
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引用次数: 0

Abstract

We investigate the influence of spin and impurity on the density of states of SiC nanotubes employing Density Functional Theory (DFT) and a Machine Learning (ML) based framework. Our study investigates the electronic structures and magnetic properties of various SiC nanotube configurations, including wurtzite, Co-doped, and undoped single-wall (6,0) chiral nanotubes, employing both DFT and pseudopotential approaches. The calculated energy band gap values for SiC bulk structures, nanotubes, and doped systems, retaining local density and local spin density approximations with the Hubbard U method, exhibit distinct characteristics. While undoped SiC systems remain nonmagnetic whereas Co-doped SiC systems show magnetic properties, with a total magnetic moment of around ~ 1.9 µB. Our first-principles calculations indicate that Co-doped SiC nanotubes induce magnetism, however the total energy calculations revealed satisfactory stability for the ferromagnetic phase. Validation against DFT data demonstrates that our model achieves approximately 91.5% accuracy for predicting the density of states for quantum-confined SiC nanotube structures and also showcasing significant potential for further electronic properties calculations in this domain. Integrating ML algorithms with DFT-based approach presents an efficient algorithm for predicting total density of states in quantum-confined nanoscale structures. The fine tree regression algorithm shows highly efficient and effective prediction for density of states calculations.

预测带有磁性掺杂剂的量子约束碳化硅纳米管的器件状态密度模型:利用机器学习和密度泛函理论的综合方法
我们采用密度泛函理论(DFT)和基于机器学习(ML)的框架研究了自旋和杂质对碳化硅纳米管状态密度的影响。我们的研究采用 DFT 和伪势方法研究了各种碳化硅纳米管构型的电子结构和磁性能,包括沃特兹体、掺杂 Co 和未掺杂的单壁 (6,0) 手性纳米管。采用 Hubbard U 方法保留了局部密度和局部自旋密度近似值,计算出的 SiC 体结构、纳米管和掺杂系统的能带间隙值表现出明显的特征。未掺杂的 SiC 系统仍然是非磁性的,而掺杂 Co 的 SiC 系统则显示出磁性,总磁矩约为 1.9 µB。我们的第一原理计算表明,掺杂 Co 的 SiC 纳米管会产生磁性,但总能量计算显示铁磁相具有令人满意的稳定性。根据 DFT 数据进行的验证表明,我们的模型在预测量子约束碳化硅纳米管结构的状态密度方面达到了约 91.5% 的准确率,同时也展示了在该领域进一步进行电子特性计算的巨大潜力。将 ML 算法与基于 DFT 的方法相结合,提出了一种预测量子约束纳米结构总态密度的高效算法。精细树回归算法显示了对状态密度计算的高效预测。
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来源期刊
Silicon
Silicon CHEMISTRY, PHYSICAL-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.90
自引率
20.60%
发文量
685
审稿时长
>12 weeks
期刊介绍: The journal Silicon is intended to serve all those involved in studying the role of silicon as an enabling element in materials science. There are no restrictions on disciplinary boundaries provided the focus is on silicon-based materials or adds significantly to the understanding of such materials. Accordingly, such contributions are welcome in the areas of inorganic and organic chemistry, physics, biology, engineering, nanoscience, environmental science, electronics and optoelectronics, and modeling and theory. Relevant silicon-based materials include, but are not limited to, semiconductors, polymers, composites, ceramics, glasses, coatings, resins, composites, small molecules, and thin films.
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