面向机器学习应用的电子-光子集成电路硬件加速器的分析与代码设计

IF 2.2 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Computational Electronics Pub Date : 2024-01-18 DOI:10.1007/s10825-023-02123-8
A. Mosses, P. M. Joe Prathap
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引用次数: 0

摘要

最近,深度学习技术的创新主要集中在作为计算媒介的光子技术上。这项工作的重点是将电子和光子方法结合起来,将各种光子架构用于机器学习应用。这些光子硬件加速器(HA)速度快、功耗低、占用空间小,有望大大提高推理能力。在这项工作中,我们提出了一种电子和光子集成电路(EPIC)硬件加速器(EPICHA)的混合设计,这是一种电子-光子框架,利用架构级集成实现更好的性能。所提出的 EPICHA 具有可重构定向耦合器 (RDC) 的系统结构,可为推理应用构建可扩展的高效机器学习加速器。在仿真框架中,全集成光子神经网络的输入层和输出层使用相同的集成光电探测器和 RDC 技术作为激活函数。由于光电转换过程以及电子和光子领域之间的交接,我们的系统仅在延迟方面有所妥协。在使用更多深度学习阶段时,光子元件的插入损耗对精度的负面影响较小。我们提出的 EPICHA 采用相干操作,因此使用单一波长 λ = 1550 nm。我们利用 Ansys Lumerical MODE、DEVICE 和 INTERCONNECT 工具的互操作性功能进行光子和电气领域的组件建模,并利用 MATLAB 的 S 参数进行电路级仿真。电子元件充当控制器,为光子处理引擎中的每个 RDC 生成所需的模拟电压控制信号。我们使用 MathWorks MATLAB 2022b 对 MNIST 数据库中的手写数字进行分类;所提出的相干 EPICHA 的准确率达到 94%。
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Analysis and codesign of electronic–photonic integrated circuit hardware accelerator for machine learning application

Innovations in deep learning technology have recently focused on photonics as a computing medium. Integrating an electronic and photonic approach is the main focus of this work utilizing various photonic architectures for machine learning applications. The speed, power, and reduced footprint of these photonic hardware accelerators (HA) are expected to greatly enhance inference. In this work, we propose a hybrid design of an electronic and photonic integrated circuit (EPIC) hardware accelerator (EPICHA), an electronic–photonic framework that uses architecture-level integrations for better performance. The proposed EPICHA has a systematic structure of reconfigurable directional couplers (RDCs) to build a scalable, efficient machine learning accelerator for inference applications. In the simulation framework, the input and output layers of a fully integrated photonic neural network use the same integrated photodetector and RDC technology as the activation function. Our system only compromises on latency because of the electro–optical conversion process and the hand-off between the electronic and photonic domains. Insertion losses in photonic components have a small negative impact on accuracy when using more deep learning stages. Our proposed EPICHA utilizes coherent operation, and hence uses a single wavelength of λ = 1550 nm. We used the interoperability feature of the Ansys Lumerical MODE, DEVICE, and INTERCONNECT tools for component modeling in the photonic and electrical domain, and circuit-level simulation using S-parameters with MATLAB. The electronic component acts as the controller, which generates the required analog voltage control signals for each RDC present in the photonic processing engine. We employed MathWorks MATLAB 2022b for the classification of handwritten digits from the MNIST database; the proposed coherent EPICHA achieved accuracy of 94%.

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来源期刊
Journal of Computational Electronics
Journal of Computational Electronics ENGINEERING, ELECTRICAL & ELECTRONIC-PHYSICS, APPLIED
CiteScore
4.50
自引率
4.80%
发文量
142
审稿时长
>12 weeks
期刊介绍: he Journal of Computational Electronics brings together research on all aspects of modeling and simulation of modern electronics. This includes optical, electronic, mechanical, and quantum mechanical aspects, as well as research on the underlying mathematical algorithms and computational details. The related areas of energy conversion/storage and of molecular and biological systems, in which the thrust is on the charge transport, electronic, mechanical, and optical properties, are also covered. In particular, we encourage manuscripts dealing with device simulation; with optical and optoelectronic systems and photonics; with energy storage (e.g. batteries, fuel cells) and harvesting (e.g. photovoltaic), with simulation of circuits, VLSI layout, logic and architecture (based on, for example, CMOS devices, quantum-cellular automata, QBITs, or single-electron transistors); with electromagnetic simulations (such as microwave electronics and components); or with molecular and biological systems. However, in all these cases, the submitted manuscripts should explicitly address the electronic properties of the relevant systems, materials, or devices and/or present novel contributions to the physical models, computational strategies, or numerical algorithms.
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