Keawmuang Harit, Hu Shiqi, Badloe Trevon, So Sunae, Rho Junsuk
Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH), Pohang 37673, Republic of Korea.
Department of Electronics and Information Engineering, Korea University, Sejong 30019, Republic of Korea.
ACS Appl Mater Interfaces. 2025 Jun 11;17(23):33259-33270. doi: 10.1021/acsami.5c03196. Epub 2025 May 30.
Artificial intelligence (AI) has emerged as a transformative tool in nanophotonics, revolutionizing the field of inverse design of nanoscale devices. This perspective delves into the advancing trend of AI-driven approaches in the field with a particular focus on hybrid frameworks. These hybrid models synergistically combine deep learning with classical optimization techniques, such as adjoint methods and evolutionary-based algorithms, effectively addressing the limitations of standalone approaches. By leveraging the computational efficiency and generalization capabilities of deep learning alongside the robustness of classical optimization, hybrid frameworks enable faster convergence, higher design efficiency, and the exploration of diverse, fabrication-feasible solutions. Additionally, methods such as a physics-informed neural network are also discussed for their significant role by embedding governing physical laws into the learning process to reduce data dependency and enhance interpretability. These advancements, demonstrated in applications such as metasurfaces and other nanophotonic devices, are driving scalable and practical innovations, paving the way for the next generation of nanophotonic technologies and advancements in functional material engineering.
人工智能(AI)已成为纳米光子学中的一种变革性工具,彻底改变了纳米级器件的逆向设计领域。本文深入探讨了该领域中人工智能驱动方法的发展趋势,特别关注混合框架。这些混合模型将深度学习与经典优化技术(如伴随方法和基于进化的算法)协同结合,有效解决了单一方法的局限性。通过利用深度学习的计算效率和泛化能力以及经典优化的稳健性,混合框架实现了更快的收敛、更高的设计效率,并能够探索各种可行的制造解决方案。此外,还讨论了诸如物理信息神经网络等方法,它们通过将支配物理定律嵌入学习过程以减少数据依赖性并增强可解释性,从而发挥了重要作用。这些进展在超表面和其他纳米光子器件等应用中得到了体现,正在推动可扩展的实际创新,为下一代纳米光子技术和功能材料工程的进步铺平道路。