Semiconductor lasers for photonic neuromorphic computing and photonic spiking neural networks: A perspective

IF 5.4 1区 物理与天体物理 Q1 OPTICS
APL Photonics Pub Date : 2024-07-23 DOI:10.1063/5.0217968
Shuiying Xiang, Yanan Han, Shuang Gao, Ziwei Song, Yahui Zhang, Dianzhuang Zheng, Chengyang Yu, Xingxing Guo, XinTao Zeng, Zhiquan Huang, Yue Hao
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引用次数: 0

Abstract

Photonic neuromorphic computing has emerged as a promising avenue toward building a high-speed, low-latency, and energy-efficient non-von-Neumann computing system. Photonic spiking neural network (PSNN) exploits brain-like spatiotemporal processing to realize high-performance neuromorphic computing. Linear weighting and nonlinear spiking activation are two fundamental functions of a SNN. However, the nonlinear computation of PSNN remains a significant challenge. Therefore, this perspective focuses on the nonlinear computation of photonic spiking neurons, including numerical simulation, device fabrication, and experimental demonstration. Different photonic spiking neurons are considered, such as vertical-cavity surface-emitting lasers, distributed feedback (DFB) lasers, Fabry–Pérot (FP) lasers, or semiconductor lasers embedded with saturable absorbers (SAs) (e.g., FP-SA and DFB-SA). PSNN architectures, including fully connected and convolutional structures, are developed, and supervised and unsupervised learning algorithms that take into account optical constraints are introduced to accomplish specific applications. This work covers devices, architectures, learning algorithms, and applications for photonic and optoelectronic neuromorphic computing and provides our perspective on the challenges and prospects of photonic neuromorphic computing based on semiconductor lasers.
用于光子神经形态计算和光子尖峰神经网络的半导体激光器:透视
光子神经形态计算已成为构建高速、低延迟和高能效非冯-诺伊曼计算系统的一条大有可为的途径。光子尖峰神经网络(PSNN)利用类脑时空处理来实现高性能神经形态计算。线性加权和非线性尖峰激活是光子尖峰神经网络的两个基本功能。然而,PSNN 的非线性计算仍然是一个重大挑战。因此,本视角侧重于光子尖峰神经元的非线性计算,包括数值模拟、器件制造和实验演示。本文考虑了不同的光子尖峰神经元,如垂直腔表面发射激光器、分布反馈(DFB)激光器、法布里-佩罗(FP)激光器或嵌入可饱和吸收体(SA)的半导体激光器(如 FP-SA 和 DFB-SA)。我们开发了 PSNN 架构,包括全连接和卷积结构,并引入了考虑到光学限制的监督和非监督学习算法,以完成特定应用。这项工作涵盖光子和光电神经形态计算的设备、架构、学习算法和应用,并提供了我们对基于半导体激光器的光子神经形态计算的挑战和前景的看法。
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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来源期刊
APL Photonics
APL Photonics Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
10.30
自引率
3.60%
发文量
107
审稿时长
19 weeks
期刊介绍: APL Photonics is the new dedicated home for open access multidisciplinary research from and for the photonics community. The journal publishes fundamental and applied results that significantly advance the knowledge in photonics across physics, chemistry, biology and materials science.
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