利用光致变色材料后处理技术构建可扩展硅微环谐振器神经形态光子电路

IF 8 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Lei Xu, Jiawei Zhang, Eli A. Doris, Simon Bilodeau, Jesse A. Wisch, Manting Gui, Yusuf O. Jimoh, Bhavin Shastri, Barry P. Rand, Paul R. Prucnal
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引用次数: 0

摘要

与数字电子学相比,神经形态光子学具有低延迟信号处理和显著降低能耗的潜力,已成为光子学领域的研究前沿之一。随着人工智能(AI)计算加速器的需求越来越大,构建可扩展的神经形态光子集成电路以高能效加速人工智能模型的计算是一个重要的研究目标。一个完整的神经形态光子计算系统包括七个堆栈:材料、器件、电路、微架构、系统架构、算法和应用。本文考虑了基于微环谐振器(MRR)的网络设计,以构建可扩展的硅集成光子神经网络(PNN),以及制造过程中MRR共振波长的变化及其对PNN可扩展性的影响。此外,在硅平台上使用有机光致变色层的后期加工被证明可以有效地修剪MRR共振波长变化,这可以显着降低基于MRR的PNN配置的能量消耗。利用光致变色材料进行后期加工以补偿MRR制造中的变化,将允许在不牺牲当前性能指标的情况下在芯片上实现可扩展的硅系统,这对于大规模硅光子电路的商业可行性和批量生产至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Building Scalable Silicon Microring Resonator-Based Neuromorphic Photonic Circuits Using Post-Fabrication Processing with Photochromic Material

Building Scalable Silicon Microring Resonator-Based Neuromorphic Photonic Circuits Using Post-Fabrication Processing with Photochromic Material

Neuromorphic photonics has become one of the research forefronts in photonics, with its benefits in low-latency signal processing and potential in significant energy consumption reduction when compared with digital electronics. With artificial intelligence (AI) computing accelerators in high demand, one of the high-impact research goals is to build scalable neuromorphic photonic integrated circuits which can accelerate the computing of AI models at high energy efficiency. A complete neuromorphic photonic computing system comprises seven stacks: materials, devices, circuits, microarchitecture, system architecture, algorithms, and applications. Here, we consider microring resonator (MRR)-based network designs toward building scalable silicon integrated photonic neural networks (PNN), and variations of MRR resonance wavelength from the fabrication process and their impact on PNN scalability. Further, post-fabrication processing using organic photochromic layers over the silicon platform is shown to be effective for trimming MRR resonance wavelength variation, which can significantly reduce energy consumption from the MRR-based PNN configuration. Post-fabrication processing with photochromic materials to compensate for the variation in MRR fabrication will allow a scalable silicon system on a chip without sacrificing today's performance metrics, which will be critical for the commercial viability and volume production of large-scale silicon photonic circuits.

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来源期刊
Advanced Optical Materials
Advanced Optical Materials MATERIALS SCIENCE, MULTIDISCIPLINARY-OPTICS
CiteScore
13.70
自引率
6.70%
发文量
883
审稿时长
1.5 months
期刊介绍: Advanced Optical Materials, part of the esteemed Advanced portfolio, is a unique materials science journal concentrating on all facets of light-matter interactions. For over a decade, it has been the preferred optical materials journal for significant discoveries in photonics, plasmonics, metamaterials, and more. The Advanced portfolio from Wiley is a collection of globally respected, high-impact journals that disseminate the best science from established and emerging researchers, aiding them in fulfilling their mission and amplifying the reach of their scientific discoveries.
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