材料科学
微波食品加热
极化(电化学)
人工神经网络
实施
光子学
建筑
电子工程
超材料
微波成像
深层神经网络
微波工程
电气元件
深度学习
面子(社会学概念)
功率(物理)
网络体系结构
电磁辐射
电磁学
高效能源利用
并行处理
计算机体系结构
面部识别系统
信号处理
计算模型
电路设计
计算机科学
人工智能
作者
Zhicai Yu,Ze Gu,Long Chen,Jianlin Su,Shilong Qin,Zixuan Cai,Xinyi Yu,Qian Ma,Jian Wei You,Tie Jun Cui
标识
DOI:10.1002/adom.202501180
摘要
Abstract Recently, electromagnetic wave‐based computational architectures, such as photonic circuit neural networks and all‐optical diffractive deep neural networks (D 2 NNs), have attracted considerable attention due to their potential for high‐speed processing and low power consumption. However, many existing implementations face challenges related to functional limitations and system complexity, which hinder their broader applicability. In this work, a polarization‐multiplexed D 2 NN architecture operating in the microwave frequency range, capable of simultaneously recognizing handwritten letters and digits under orthogonal polarization states, is proposed. For each polarization channel, distinct sets of metallic input patterns are fabricated and tested, achieving 100% recognition accuracy in experimental validation. Furthermore, the potential of this architecture for parallel computing is investigated and its feasibility is demonstrated through numerical simulations. This study presents a new direction for implementing parallel computing in microwave D 2 NNs and offers a foundation for future exploration of multi‐dimensional multiplexing, with the potential to enhance computational speed and reduce energy consumption.
科研通智能强力驱动
Strongly Powered by AbleSci AI