纳米团簇的智能结构搜索和设计:原子制造中的有效单元

IF 6.8 Q1 AUTOMATION & CONTROL SYSTEMS
Junfeng Gao, Luneng Zhao, Yuan Chang, Yanxue Zhang, Shi Qiu, Yuanyuan Zhao, Hongsheng Liu, Jijun Zhao
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引用次数: 0

摘要

原子团簇是由数个至数千个原子、分子或离子聚集而成的,是原子制造新型功能材料的基石,在催化、量子信息和纳米医学方面有着卓越的应用。多年来,人们一直在研究团簇结构的演变。目前已开发出许多有效的结构搜索方法,如遗传算法、跳盆法等。然而,这些方法的有效执行有赖于精确的能量计算器,如密度泛函理论(DFT)计算。迄今为止,受限于计算方法和能力,研究主要集中在独立的集群上,这与实际应用中的集群有所不同。近年来,大数据驱动的机器学习发展迅速,有望取代 DFT 实现高精度大规模计算。本综述总结了目前的集群搜索方法和面临的挑战。文章提出,人工智能的发展有可能解决一些实际问题,包括复杂环境中团簇的结构和性质演化,从而在基于团簇的催化、量子信息和纳米医学等领域带来革命性的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intelligent Structure Searching and Designs for Nanoclusters: Effective Units in Atomic Manufacturing

Intelligent Structure Searching and Designs for Nanoclusters: Effective Units in Atomic Manufacturing

Clusters, an aggregation of several to thousands of atoms, molecules, or ions, are the building blocks of novel functional materials by atomic manufacturing and exhibit excellent applications in catalysis, quantum information, and nanomedicine. The evolution of cluster structures has been studied for many years. Many effective structural search methods, such as genetic algorithm, basin-hopping, and so on, have been developed. However, the efficient execution of these methods relies on precise energy calculators, such as density functional theory (DFT) calculations. Up to now, limited by computational methods and capabilities, the researches mainly focus on free-standing clusters, which are different from clusters in practical applications. Recently, the rapid development of big data-driven machine learning is expected to replace DFT for high-precision large-scale computing. In this review, the present cluster search methods and challenges currently faced have been summarized. It is proposed that the development of artificial intelligence has the potential to solve some practical problems including the structural and properties evolution of clusters in complex environment, causing revolutionary developments in the fields of catalysis, quantum information, and nanomedicine based on clusters.

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