Physics-Informed Neural Networks in Electromagnetic and Nanophotonic Design
Physics-Informed Neural Networks in Electromagnetic and Nanophotonic Design
The fusion of artificial intelligence (AI) with physics-guided frameworks has opened transformative avenues for advancing the design and optimization of electromagnetic and nanophotonic systems. Innovations in deep neural networks (DNNs) and physics-informed neural networks (PINNs) now provide robust tools to tackle longstanding challenges in light scattering engineering, meta-optics, and nonlinear photonics. This review outlines recent progress in leveraging these computational methodologies to enhance device performance across domains such as dynamic light modulation, antenna design, and nonlinear optical phenomena. We systematically survey advancements in AI-driven forward and inverse design strategies, which bypass conventional trial-and-error approaches by embedding physical laws directly into optimization workflows. Furthermore, the integration of AI accelerates electromagnetic simulations and enables precise modelling of complex optical effects, including topological photonic states and nonlinear interactions. A comparative evaluation of algorithmic frameworks highlights their strengths in balancing computational efficiency, multi-objective optimization, and fabrication feasibility. Challenges such as limited interpretability of AI models and data scarcity for unconventional optical modes are critically addressed. Finally, we emphasize future opportunities in scalable multi-physics modelling, adaptive architectures, and practical deployment of AI-optimized photonic devices. This work underscores the pivotal role of AI in transcending traditional design limitations, thereby propelling the development of next-generation photonic technologies with unprecedented functionality and efficiency.
Omar A. M. Abdelraouf、Abdulrahman M. A. Ahmed、Emadeldeen Eldele、Ahmed A. Omar
光电子技术
Omar A. M. Abdelraouf,Abdulrahman M. A. Ahmed,Emadeldeen Eldele,Ahmed A. Omar.Physics-Informed Neural Networks in Electromagnetic and Nanophotonic Design[EB/OL].(2025-05-06)[2025-05-19].https://arxiv.org/abs/2505.03354.点此复制
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