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基于深度强化学习的自控制片上光子网络。

Self-controlling photonic-on-chip networks with deep reinforcement learning.

机构信息

Posts and Telecommunications Institute of Technology, Hanoi, Vietnam.

Stony Brook University, Stony Brook, NY, USA.

出版信息

Sci Rep. 2021 Nov 30;11(1):23151. doi: 10.1038/s41598-021-02583-7.

DOI:10.1038/s41598-021-02583-7
PMID:34848774
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8632908/
Abstract

We present a novel photonic chip design for high bandwidth four-degree optical switches that support high-dimensional switching mechanisms with low insertion loss and low crosstalk in a low power consumption level and a short switching time. Such four-degree photonic chips can be used to build an integrated full-grid Photonic-on-Chip Network (PCN). With four distinct input/output directions, the proposed photonic chips are superior compared to the current bidirectional photonic switches, where a conventionally sizable PCN can only be constructed as a linear chain of bidirectional chips. Our four-directional photonic chips are more flexible and scalable for the design of modern optical switches, enabling the construction of multi-dimensional photonic chip networks that are widely applied for intra-chip communication networks and photonic data centers. More noticeably, our photonic networks can be self-controlling with our proposed Multi-Sample Discovery model, a deep reinforcement learning model based on Proximal Policy Optimization. On a PCN, we can optimize many criteria such as transmission loss, power consumption, and routing time, while preserving performance and scaling up the network with dynamic changes. Experiments on simulated data demonstrate the effectiveness and scalability of the proposed architectural design and optimization algorithm. Perceivable insights make the constructed architecture become the self-controlling photonic-on-chip networks.

摘要

我们提出了一种新颖的光子芯片设计,用于高带宽四度光开关,该开关在低功耗、短切换时间下支持具有低插入损耗和低串扰的高维切换机制。这种四度光子芯片可用于构建集成的全网格光子片上网络 (PCN)。与当前的双向光子开关相比,具有四个不同输入/输出方向的提议光子芯片具有优势,其中传统上较大的 PCN只能作为双向芯片的线性链来构建。我们的四向光子芯片在设计现代光学开关时更加灵活和可扩展,能够构建广泛应用于片内通信网络和光子数据中心的多维光子芯片网络。更值得注意的是,我们的光子网络可以通过我们提出的多样本发现模型(一种基于近端策略优化的深度强化学习模型)实现自我控制。在 PCN 上,我们可以优化许多标准,如传输损耗、功耗和路由时间,同时保持性能并根据动态变化扩展网络。模拟数据上的实验证明了所提出的体系结构设计和优化算法的有效性和可扩展性。可感知的见解使所构建的架构成为自控制的光子片上网络。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/202b/8632908/95de18a39161/41598_2021_2583_Fig14_HTML.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/202b/8632908/95de18a39161/41598_2021_2583_Fig14_HTML.jpg

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