CMOS temporal associative memory

H. H. Ali, M. Zaghloul
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引用次数: 1

Abstract

In this paper we present a mixed digital analog approach for VLSI implementation of an associative memory model using temporal relations. The proposed model is based on the biological model of the cortex. There are two motivations for this research. First, the analog and the parallel nature of the neural network approach may provide an efficient technique to achieve the high speed requirement for real time coding systems with less hardware than both digital techniques and adaptive neural techniques. Second, the model proposed based on the biological neural network may be useful as a model of the information processing in human brain. The proposed model overcomes the drawbacks of the linear associative memory. The proposed circuit realizing such a theory is faster, smaller in area, and more efficient than the current systems.
CMOS时间联想存储器
在本文中,我们提出了一种混合数字模拟方法,用于VLSI实现使用时间关系的联想记忆模型。提出的模型是基于大脑皮层的生物学模型。这项研究有两个动机。首先,与数字技术和自适应神经技术相比,神经网络方法的模拟和并行特性可以提供一种有效的技术,以更少的硬件实现实时编码系统的高速要求。其次,基于生物神经网络的模型可以作为人脑信息处理的模型。该模型克服了线性联想记忆的缺点。实现这种理论的电路比目前的系统更快,面积更小,效率更高。
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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