Brain-inspired nanophotonic spike computing: challenges and prospects

B. Romeira, R. Adão, J. Nieder, Q. Al-Taai, Weikang Zhang, R. Hadfield, E. Wasige, M. Hejda, Antonio Hurtado, Ekaterina Malysheva, V. Calzadilla, J. Lourenço, David Marreiros de Castro Alves, J. Figueiredo, I. Ortega-Piwonka, J. Javaloyes, S. Edwards, J. I. Davies, F. Horst, B. Offrein
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引用次数: 3

Abstract

Nanophotonic spiking neural networks (SNNs) based on neuron-like excitable subwavelength (submicrometre) devices are of key importance for realizing brain-inspired, power-efficient artificial intelligence (AI) systems with high degree of parallelism and energy efficiency. Despite significant advances in neuromorphic photonics, compact and efficient nanophotonic elements for spiking signal emission and detection, as required for spike-based computation, remain largely unexplored. In this invited perspective, we outline the main challenges, early achievements, and opportunities toward a key-enabling photonic neuro-architecture using III–V/Si integrated spiking nodes based on nanoscale resonant tunnelling diodes (nanoRTDs) with folded negative differential resistance. We utilize nanoRTDs as nonlinear artificial neurons capable of spiking at high-speeds. We discuss the prospects for monolithic integration of nanoRTDs with nanoscale light-emitting diodes and nanolaser diodes, and nanophotodetectors to realize neuron emitter and receiver spiking nodes, respectively. Such layout would have a small footprint, fast operation, and low power consumption, all key requirements for efficient nano-optoelectronic spiking operation. We discuss how silicon photonics interconnects, integrated photorefractive interconnects, and 3D waveguide polymeric interconnections can be used for interconnecting the emitter-receiver spiking photonic neural nodes. Finally, using numerical simulations of artificial neuron models, we present spike-based spatio-temporal learning methods for applications in relevant AI-based functional tasks, such as image pattern recognition, edge detection, and SNNs for inference and learning. Future developments in neuromorphic spiking photonic nanocircuits, as outlined here, will significantly boost the processing and transmission capabilities of next-generation nanophotonic spike-based neuromorphic architectures for energy-efficient AI applications. This perspective paper is a result of the European Union funded research project ChipAI in the frame of the Horizon 2020 Future and Emerging Technologies Open programme.
受大脑启发的纳米光子脉冲计算:挑战与前景
基于类神经元可激发亚微米(sub -微米)器件的纳米光子脉冲神经网络(SNNs)对于实现具有高度并行性和高能效的脑启发、节能的人工智能(AI)系统至关重要。尽管神经形态光子学取得了重大进展,但用于尖峰信号发射和检测的紧凑高效的纳米光子元件,作为基于尖峰计算的需要,在很大程度上仍未被探索。在这个受邀的视角中,我们概述了使用基于折叠负差分电阻的纳米级共振隧道二极管(nanortd)的III-V /Si集成尖峰节点实现键控光子神经架构的主要挑战,早期成就和机遇。我们利用纳米ortd作为非线性人工神经元,能够高速放电。我们讨论了纳米ortd与纳米发光二极管和纳米激光二极管以及纳米光电探测器的单片集成的前景,以分别实现神经元发射器和接收器的尖峰节点。这种布局将具有占地面积小、运行速度快、功耗低的特点,这些都是高效纳米光电尖峰操作的关键要求。我们讨论了如何使用硅光子互连、集成光折变互连和三维波导聚合物互连来互连发射-接收尖峰光子神经节点。最后,利用人工神经元模型的数值模拟,我们提出了基于峰值的时空学习方法,用于相关的基于人工智能的功能任务,如图像模式识别、边缘检测和snn的推理和学习。如本文所述,神经形态尖峰光子纳米电路的未来发展将显著提高下一代基于纳米光子尖峰的神经形态架构的处理和传输能力,用于节能人工智能应用。这篇前瞻性论文是欧盟资助的研究项目ChipAI在地平线2020未来和新兴技术开放计划框架下的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.90
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0.00%
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