Programmable neural logic

V. Bohossian, P. Hasler, Jehoshua Bruck
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引用次数: 14

Abstract

Circuits of threshold elements (Boolean input, Boolean output neurons) have been shown to be surprisingly powerful. Useful functions such as XOR, ADD and MULTIPLY can be implemented by such circuits more efficiently than by traditional AND/OR circuits. In view of that, we have designed and built a programmable threshold element. The weights are stored on polysilicon floating gates, providing long-term retention without refresh. The weight value is increased using tunneling and decreased via hot electron injection. A weight is stored on a single transistor allowing the development of dense arrays of threshold elements. A 16-input programmable neuron was fabricated in the standard 2 /spl mu/m double-poly analog process available from MOSIS. A long term goal of this research is to incorporate programmable threshold elements, as building blocks in Field Programmable Gate Arrays.
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可编程神经逻辑
阈值单元(布尔输入、布尔输出神经元)的电路已经显示出惊人的强大。与传统的and /OR电路相比,这种电路可以更有效地实现XOR、ADD和MULTIPLY等有用的功能。鉴于此,我们设计并构建了一个可编程的阈值元件。重量存储在多晶硅浮栅上,提供长期保留而无需刷新。通过隧穿提高了重量值,通过热电子注入降低了重量值。重量存储在单个晶体管上,允许开发密集的阈值元件阵列。采用MOSIS提供的标准2 /spl mu/m双聚模拟工艺制作了一个16输入可编程神经元。本研究的长期目标是将可编程阈值元素作为现场可编程门阵列的构建模块。
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