半导体和电介质的理论和数据驱动方法:从预测到实验。

IF 7.4 3区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Science and Technology of Advanced Materials Pub Date : 2024-11-04 eCollection Date: 2024-01-01 DOI:10.1080/14686996.2024.2423600
Fumiyasu Oba, Takayuki Nagai, Ryoji Katsube, Yasuhide Mochizuki, Masatake Tsuji, Guillaume Deffrennes, Kota Hanzawa, Akitoshi Nakano, Akira Takahashi, Kei Terayama, Ryo Tamura, Hidenori Hiramatsu, Yoshitaro Nose, Hiroki Taniguchi
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引用次数: 0

摘要

随着相关方法和算法的发展、大量材料数据的可用性以及计算机性能的提高,使用理论计算和数据科学方法的计算方法在材料科学与技术领域变得越来越重要。正如本文所回顾的,我们已开发出用于无机材料设计和预测的计算方法,尤其侧重于半导体和电介质的探索。高通量第一原理计算用于系统、准确地预测极子、点缺陷、表面和界面的局部原子和电子结构,以及块体的基本特性。机器学习技术可用于有效预测各种材料特性、构建相图以及搜索满足目标特性的材料。这些计算方法阐明了材料功能背后的机理,并结合合成、表征和器件制造探索了有前途的材料。例如,开发三元氮化物半导体以实现潜在的光电和光伏应用;探索磷化物半导体和优化异质界面以改进基于磷化物的光伏电池;发现层状过氧化物中的铁电性并从理论上理解其起源,所有这些都证明了我们计算机辅助材料研究的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theoretical and data-driven approaches to semiconductors and dielectrics: from prediction to experiment.

Computational approaches using theoretical calculations and data scientific methods have become increasingly important in materials science and technology, with the development of relevant methodologies and algorithms, the availability of large materials data, and the enhancement of computer performance. As reviewed herein, we have developed computational methods for the design and prediction of inorganic materials with a particular focus on the exploration of semiconductors and dielectrics. High-throughput first-principles calculations are used to systematically and accurately predict the local atomic and electronic structures of polarons, point defects, surfaces, and interfaces, as well as bulk fundamental properties. Machine learning techniques are utilized to efficiently predict various material properties, construct phase diagrams, and search for materials satisfying target properties. These computational approaches have elucidated the mechanisms behind material functionalities and explored promising materials in combination with synthesis, characterization, and device fabrication. Examples include the development of ternary nitride semiconductors for potential optoelectronic and photovoltaic applications, the exploration of phosphide semiconductors and the optimization of heterointerfaces toward the improvement of phosphide-based photovoltaic cells, and the discovery of ferroelectricity in layered perovskite oxides and the theoretical understanding of its origin, all of which demonstrate the effectiveness of our computer-aided materials research.

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来源期刊
Science and Technology of Advanced Materials
Science and Technology of Advanced Materials 工程技术-材料科学:综合
CiteScore
10.60
自引率
3.60%
发文量
52
审稿时长
4.8 months
期刊介绍: Science and Technology of Advanced Materials (STAM) is a leading open access, international journal for outstanding research articles across all aspects of materials science. Our audience is the international community across the disciplines of materials science, physics, chemistry, biology as well as engineering. The journal covers a broad spectrum of topics including functional and structural materials, synthesis and processing, theoretical analyses, characterization and properties of materials. Emphasis is placed on the interdisciplinary nature of materials science and issues at the forefront of the field, such as energy and environmental issues, as well as medical and bioengineering applications. Of particular interest are research papers on the following topics: Materials informatics and materials genomics Materials for 3D printing and additive manufacturing Nanostructured/nanoscale materials and nanodevices Bio-inspired, biomedical, and biological materials; nanomedicine, and novel technologies for clinical and medical applications Materials for energy and environment, next-generation photovoltaics, and green technologies Advanced structural materials, materials for extreme conditions.
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