基于神经形态CMOS电路的容错逻辑门

N. Joye, A. Schmid, Y. Leblebici, T. Asai, Y. Amemiya
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引用次数: 7

摘要

VLSI电路的容错设计方法,传统上是在系统级解决的,将不适合未来的极深亚微米CMOS器件,因为它们的可靠性预计会严重下降。因此,为了在这些设备中实现鲁棒性和容错性,在低抽象层次上考虑了一种新的设计方法。此外,还证明了多层前馈人工神经网络的容错特性。因此,我们已经在电路层面实现了这个概念,使用尖峰神经元。利用这种方法,在AMS 0.35 mum CMOS技术上开发了NOT, NAND和NOR布尔门。神经权重值与电路物理参数之间的非常直接的映射也已实现。此外,还使用SPICE角分析对逻辑门进行了仿真,该分析模拟了可能导致电路故障的制造变化。使用这种方法,可以证明可以构建按期望函数运行的故障吸收神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault-tolerant logic gates using neuromorphic CMOS Circuits
Fault-tolerant design methods for VLSI circuits, which have traditionally been addressed at system level, will not be adequate for future very-deep submicron CMOS devices where serious degradation of reliability is expected. Therefore, a new design approach has been considered at low level of abstraction in order to implement robustness and fault-tolerance into these devices. Moreover, fault tolerant properties of multi-layer feed-forward artificial neural networks have been demonstrated. Thus, we have implemented this concept at circuit-level, using spiking neurons. Using this approach, the NOT, NAND and NOR Boolean gates have been developed in the AMS 0.35 mum CMOS technology. A very straightforward mapping between the value of a neural weight and one physical parameter of the circuit has also been achieved. Furthermore, the logic gates have been simulated using SPICE corners analysis which emulates manufacturing variations which may cause circuit faults. Using this approach, it can be shown that fault-absorbing neural networks that operate as the desired function can be built.
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