A Time-Domain Current-Mode MAC Engine for Analogue Neural Networks in Flexible Electronics

M. Douthwaite, F. García-Redondo, P. Georgiou, Shidhartha Das
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引用次数: 7

Abstract

Flexible electronics is becoming more prevalent in a wide range of applications, particularly wearable biomedical devices. These devices would greatly benefit from in-built intelligence allowing them to process data and identify features, in order to reduce transmission and power requirements. In this work, we present a novel time-domain multiply-accumulate (MAC) engine architecture that can act as the basic block of an artificial analogue neural network. The design does not require analogue voltage buffers, making them easier to realise in flexible technologies and consumes less power than conventional methods. The research could be used in future to construct a low power classifier for a low cost, flexible wearable biomedical sensor.
柔性电子中模拟神经网络的时域电流模式MAC引擎
柔性电子产品在广泛的应用中变得越来越普遍,特别是可穿戴生物医学设备。这些设备将极大地受益于内置的智能,使它们能够处理数据和识别特征,以减少传输和电力需求。在这项工作中,我们提出了一种新的时域乘法累积(MAC)引擎架构,它可以作为人工模拟神经网络的基本块。该设计不需要模拟电压缓冲器,使其更容易在灵活的技术中实现,并且比传统方法消耗更少的功率。该研究可用于未来构建低功耗分类器,用于低成本,柔性可穿戴生物医学传感器。
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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