Jin Yabin, He Liangshu, Wen Zhihui, Mortazavi Bohayra, Guo Hongwei, Torrent Daniel, Djafari-Rouhani Bahram, Rabczuk Timon, Zhuang Xiaoying, Li Yan
School of Aerospace Engineering and Applied Mechanics, Tongji University, 200092, Shanghai, China.
Department of Mathematics and Physics, Institute of Photonics, Leibniz University Hannover, Hannover, Germany.
Nanophotonics. 2022 Jan 4;11(3):439-460. doi: 10.1515/nanoph-2021-0639. eCollection 2022 Jan.
With the growing interest in the field of artificial materials, more advanced and sophisticated functionalities are required from phononic crystals and acoustic metamaterials. This implies a high computational effort and cost, and still the efficiency of the designs may be not sufficient. With the help of third-wave artificial intelligence technologies, the design schemes of these materials are undergoing a new revolution. As an important branch of artificial intelligence, machine learning paves the way to new technological innovations by stimulating the exploration of structural design. Machine learning provides a powerful means of achieving an efficient and accurate design process by exploring nonlinear physical patterns in high-dimensional space, based on data sets of candidate structures. Many advanced machine learning algorithms, such as deep neural networks, unsupervised manifold clustering, reinforcement learning and so forth, have been widely and deeply investigated for structural design. In this review, we summarize the recent works on the combination of phononic metamaterials and machine learning. We provide an overview of machine learning on structural design. Then discuss machine learning driven on-demand design of phononic metamaterials for acoustic and elastic waves functions, topological phases and atomic-scale phonon properties. Finally, we summarize the current state of the art and provide a prospective of the future development directions.
随着人们对人工材料领域的兴趣日益浓厚,对声子晶体和声学超材料提出了更先进、更复杂的功能要求。这意味着需要大量的计算工作和成本,而且设计的效率可能仍然不够高。在第三代人工智能技术的帮助下,这些材料的设计方案正在经历一场新的革命。作为人工智能的一个重要分支,机器学习通过激发对结构设计的探索,为新的技术创新铺平了道路。机器学习基于候选结构的数据集,通过探索高维空间中的非线性物理模式,提供了一种实现高效、准确设计过程的强大手段。许多先进的机器学习算法,如深度神经网络、无监督流形聚类、强化学习等,已被广泛而深入地研究用于结构设计。在这篇综述中,我们总结了声子超材料与机器学习相结合的最新研究成果。我们概述了机器学习在结构设计方面的应用。然后讨论了机器学习驱动的声子超材料在声波和弹性波功能、拓扑相和原子尺度声子特性方面的按需设计。最后,我们总结了当前的技术现状,并对未来的发展方向进行了展望。