Array-based analog computation: principles, advantages and limitations

A. Kramer
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引用次数: 24

Abstract

Analog implementations of neural networks and other computing architectures have gained increasing interest over the last decade. The field is at a critical juncture: continued interest will depend on the ability to demonstrate a clear advantage over digital solutions to problems of commercial interest. The neural network design group at SGS-Thomson Microelectronics has been working to explore the advantages and limitations of analog computation and implementations of neural network architectures. We are investigating 3 large-scale analog VLSI chips, all of which work on problems in image processing. The use of analog computing arrays, because of their efficiency and regularity, have formed the basis of most of our designs, while several different computing modes, including current, charge, and conductance have been explored. Another area in which we have focused is on the use of floating-gate flash-EEPROM devices for both non-volatile analog storage and computation. This paper will share insights into the lessons we have learned, the results we have achieved, and the limitations we have encountered. Particular emphasis will be made on two subjects: computational efficiency and equivalent precision of array-based analog computing circuits.
基于阵列的模拟计算:原理、优点和局限性
神经网络和其他计算架构的模拟实现在过去十年中获得了越来越多的兴趣。该领域正处于关键时刻:持续的兴趣将取决于是否有能力在商业利益问题的数字解决方案上展示出明显的优势。sgs -汤姆逊微电子公司的神经网络设计小组一直致力于探索模拟计算和神经网络架构实现的优势和局限性。我们正在研究3个大规模模拟VLSI芯片,所有这些芯片都用于图像处理问题。使用模拟计算阵列,因为它们的效率和规律性,已经形成了我们大多数设计的基础,而几种不同的计算模式,包括电流,电荷和电导已经被探索。我们关注的另一个领域是使用浮栅闪存eeprom器件进行非易失性模拟存储和计算。本文将分享我们所学到的教训、取得的成果以及遇到的限制。特别强调两个主题:基于阵列的模拟计算电路的计算效率和等效精度。
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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