Shao Guocheng, Zhou Tiankuang, Yan Tao, Guo Yanchen, Zhao Yun, Huang Ruqi, Fang Lu
Shenzhen International Graduate School, Tsinghua University, Shenzhen 518071, China.
Department of Automation, Tsinghua University, Beijing 100084, China.
Nanophotonics. 2025 Jan 27;14(16):2799-2810. doi: 10.1515/nanoph-2024-0504. eCollection 2025 Aug.
On-chip computing metasystems composed of multilayer metamaterials have the potential to become the next-generation computing hardware endowed with light-speed processing ability and low power consumption but are hindered by current design paradigms. To date, neither numerical nor analytical methods can balance efficiency and accuracy of the design process. To address the issue, a physics-inspired deep learning architecture termed electromagnetic neural network (EMNN) is proposed to enable an efficient, reliable, and flexible paradigm of inverse design. EMNN consists of two parts: EMNN Netlet serves as a local electromagnetic field solver; Huygens-Fresnel Stitch is used for concatenating local predictions. It can make direct, rapid, and accurate predictions of full-wave field based on input fields of arbitrary variations and structures of nonfixed size. With the aid of EMNN, we design computing metasystems that can perform handwritten digit recognition and speech command recognition. EMNN increases the design speed by 17,000 times than that of the analytical model and reduces the modeling error by two orders of magnitude compared to the numerical model. By integrating deep learning techniques with fundamental physical principle, EMNN manifests great interpretability and generalization ability beyond conventional networks. Additionally, it innovates a design paradigm that guarantees both high efficiency and high fidelity. Furthermore, the flexible paradigm can be applicable to the unprecedentedly challenging design of large-scale, high-degree-of-freedom, and functionally complex devices embodied by on-chip optical diffractive networks, so as to further promote the development of computing metasystems.
由多层超材料组成的片上计算元系统有潜力成为具备光速处理能力和低功耗的下一代计算硬件,但目前受到设计范式的阻碍。迄今为止,数值方法和解析方法都无法在设计过程的效率和准确性之间取得平衡。为了解决这个问题,提出了一种受物理启发的深度学习架构——电磁神经网络(EMNN),以实现高效、可靠且灵活的逆向设计范式。EMNN由两部分组成:EMNN Netlet用作局部电磁场求解器;惠更斯 - 菲涅耳拼接用于拼接局部预测结果。它能够基于任意变化的输入场和非固定尺寸的结构,直接、快速且准确地预测全波场。借助EMNN,我们设计了能够执行手写数字识别和语音命令识别的计算元系统。与解析模型相比,EMNN将设计速度提高了17000倍,与数值模型相比,将建模误差降低了两个数量级。通过将深度学习技术与基本物理原理相结合,EMNN展现出超越传统网络的强大可解释性和泛化能力。此外,它创新了一种设计范式,既能保证高效率又能保证高保真度。而且,这种灵活的范式可应用于片上光学衍射网络所体现的大规模、高自由度和功能复杂器件的前所未有的挑战性设计,从而进一步推动计算元系统的发展。