几何相位
材料科学
相(物质)
浆果
人工神经网络
凝聚态物理
计算机科学
物理
人工智能
量子力学
植物
生物
作者
Yuming Ning,Qian Ma,Qiang Xiao,Rui Li,Qian Wen Wu,Ze Gu,Long Chen,Jian Wei You,Tie Jun Cui
标识
DOI:10.1002/adfm.202512689
摘要
Abstract A mechanically programmable diffractive neural network based on Pancharatnam‐Berry (PB) phase metasurfaces, consisting of rotatable PB phase meta‐atoms as fundamental building blocks is presented. By precisely controlling the rotation angle of each programmable meta‐atom in a mechanical way, modulations of the PB phase distribution are achieved, and flexible programmability of the network to adapt to diverse tasks is enabled. The system seamlessly integrates the low‐power consumption advantage of passive networks with the flexibility of programmable networks, achieving orders‐of‐magnitude reduction in energy consumption while maintaining optimal performance balance. Experimental results demonstrate the system's mechanical programmability with high‐precision classification ability (100% test accuracy) in multi‐task operations, including zodiac sign recognition and handwritten digit classification. The proposed MP‐DNN operates without an external energy supply during the matrix computations and consumes only minimal power during task switching, thus offering an energy‐efficient and low‐power solution for reconfigurable diffractive neural networks.
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