Ren He, Zhou Shuai, Feng Yuxiang, Wang Di, Yang Xu, Chen Shouqian
Opt Lett. 2025 Mar 15;50(6):1997-2000. doi: 10.1364/OL.555533.
Diffractive neural networks (DNNs) have garnered significant attention in recent years as a physical computing framework, combining high computational speed, parallelism, and low-power consumption. However, the non-reconfigurability of cascaded diffraction layers limits the ability of DNNs to perform multitasking, and methods such as replacing diffraction layers or light sources, while theoretically feasible, are difficult to implement in practice. This Letter introduces a flippable diffractive neural network (F-DNN) in which the diffraction layer is an integrated structure processed on both sides of the substrate. This design allows rapid task switching by flipping diffraction layers and overcomes alignment challenges that arise when replacing layers. Classification-based simulation results demonstrate that F-DNN addresses the limitations of traditional multitask DNN architectures, offering both superior performance and scalability, which provides a new approach for realizing high-speed, low-power, and multitask artificial intelligence systems.
近年来,衍射神经网络(DNNs)作为一种物理计算框架,因其具有高计算速度、并行性和低功耗等特点而备受关注。然而,级联衍射层的不可重构性限制了DNNs执行多任务的能力,并且诸如替换衍射层或光源等方法虽然在理论上可行,但在实践中却难以实现。本文介绍了一种可翻转衍射神经网络(F-DNN),其中衍射层是在基板两侧加工的集成结构。这种设计允许通过翻转衍射层来快速进行任务切换,并克服了更换层时出现的对准挑战。基于分类的仿真结果表明,F-DNN解决了传统多任务DNN架构的局限性,具有卓越的性能和可扩展性,为实现高速、低功耗和多任务人工智能系统提供了一种新方法。