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Highly Integrated Alloptical Nonlinear Deep Neural Network For Multithread Processing Jialong Zhang

  • SKU: BELL-239003442
Highly Integrated Alloptical Nonlinear Deep Neural Network For Multithread Processing Jialong Zhang
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Highly Integrated Alloptical Nonlinear Deep Neural Network For Multithread Processing Jialong Zhang instant download after payment.

Publisher: x
File Extension: PDF
File size: 3.82 MB
Pages: 10
Author: Jialong Zhang, Bo Wu, Shiji Zhang, inliang Zhanga
ISBN: 10.1117/1.AP.7.4.046003
Language: English
Year: 2025

Product desciption

Highly Integrated Alloptical Nonlinear Deep Neural Network For Multithread Processing Jialong Zhang by Jialong Zhang, Bo Wu, Shiji Zhang, Inliang Zhanga 10.1117/1.AP.7.4.046003 instant download after payment.

Optical neural networks have emerged as feasible alternatives to their electronic counterparts,offering significant benefits such as low power consumption, low latency, and high parallelism. However,the realization of ultra-compact nonlinear deep neural networks and multi-thread processing remain crucial challenges for optical computing. We present a monolithically integrated all-optical nonlinear diffractive deep neural network (AON-D2NN) chip for the first time. The all-optical nonlinear activation function is implemented using germanium microstructures, which provide low loss and are compatible with the standard silicon photonics fabrication process. Assisted by the germanium activation function, the classification accuracy is improved by 9.1% for four-classification tasks. In addition, the chip’s reconfigurability enables multi-task learning in situ via an innovative cross-training algorithm, yielding two task-specific inference results with accuracies of 95% and 96%, respectively. Furthermore, leveraging the wavelength-dependent response of the chip, the multi-thread nonlinear optical neural network is implemented for the first time, capable of handling two different tasks in parallel. The proposed AON-D2NN contains three hidden layers with a footprint of only 0.73 mm2. It can achieve ultra-low latency (172 ps), paving the path for realizing high-performance optical neural networks.

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