Programmable Energy-Efficient Analog Multilayer Perceptron Architecture Suitable for Future Expansion to Hardware Accelerators

IF 1.6 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Jeffery M. Dix, J. Holleman, B. Blalock
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引用次数: 1

Abstract

A programmable, energy-efficient analog hardware implementation of a multilayer perceptron (MLP) is presented featuring a highly programmable system that offers the user the capability to create an MLP neural network hardware design within the available framework. In addition to programmability, this implementation provides energy-efficient operation via analog/mixed-signal design. The configurable system is made up of 12 neurons and is fabricated in a standard 130 nm CMOS process occupying approximately 1 mm2 of on-chip area. The system architecture is analyzed in several different configurations with each achieving a power efficiency of greater than 1 tera-operations per watt. This work offers an energy-efficient and scalable alternative to digital configurable neural networks that can be built upon to create larger networks capable of standard machine learning applications, such as image and text classification. This research details a programmable hardware implementation of an MLP that achieves a peak power efficiency of 5.23 tera-operations per watt while consuming considerably less power than comparable digital and analog designs. This paper describes circuit elements that can readily be scaled up at the system level to create a larger neural network architecture capable of improved energy efficiency.
可编程的节能模拟多层感知器架构,适合将来扩展到硬件加速器
提出了一种多层感知器(MLP)的可编程、节能模拟硬件实现,其特点是具有高度可编程的系统,该系统为用户提供了在可用框架内创建MLP神经网络硬件设计的能力。除了可编程性之外,该实现还通过模拟/混合信号设计提供了节能操作。可配置系统由12个神经元组成,并采用标准130nm CMOS工艺制造,占用约1mm2的片上面积。在几种不同的配置中对系统架构进行了分析,每种配置的功率效率都大于每瓦1 tera操作。这项工作为数字可配置神经网络提供了一种节能且可扩展的替代方案,可以基于该网络创建能够进行标准机器学习应用(如图像和文本分类)的更大网络。这项研究详细介绍了MLP的可编程硬件实现,该实现的峰值功率效率为每瓦5.23 tera操作,同时消耗的功率远低于可比的数字和模拟设计。本文描述了可以很容易地在系统级放大的电路元件,以创建能够提高能效的更大的神经网络架构。
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
Journal of Low Power Electronics and Applications
Journal of Low Power Electronics and Applications Engineering-Electrical and Electronic Engineering
CiteScore
3.60
自引率
14.30%
发文量
57
审稿时长
11 weeks
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