Probabilistic error modeling for sequential logic

K. Lingasubramanian, S. Bhanja
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引用次数: 3

Abstract

Reliability is a crucial issue in nanoscale devices including both CMOS (beyond 22 nm) and non-CMOS. Devices in this regime tend to be more prone to errors due to thermal effects creating uncertainty in device characteristics. The transient nature of these errors commands the need for a probabilistic model that can represent the inherent circuit logic and can measure the errors. In sequential logic the error occurred in a particular time frame will be propagated to consecutive time frames thereby making the device more volatile. Any model that can represent a sequential logic should handle both spatial dependencies between nodes in a single time slice and temporal dependencies between nodes of different time slices. While modeling error in sequential logic the complexity arises in handling the temporal dependencies due to the feedback. Essentially, the feedback makes the system non-causal where outputs depend not only on inputs but also its own previous values. Depending on the circuit structure and the nature of feedback, various circuits would offer different degree of temporal dependence. In this work we propose a probabilistic error model for sequential logic that can measure the average output error probability that account for the spatio-temporal nature of the inherent dependencies using an temporally evolving causal Bayesian Networks also called Dynamic Bayesian Networks.
序列逻辑的概率误差建模
可靠性是包括CMOS(超过22 nm)和非CMOS在内的纳米级器件的关键问题。在这种情况下,由于热效应在器件特性中产生不确定性,器件往往更容易出错。由于这些误差的瞬态特性,需要一个概率模型来表示固有的电路逻辑并测量误差。在顺序逻辑中,在特定时间框架中发生的错误将传播到连续时间框架,从而使器件更加不稳定。任何可以表示顺序逻辑的模型都应该处理单个时间片中节点之间的空间依赖关系和不同时间片中节点之间的时间依赖关系。当在顺序逻辑中建模错误时,由于反馈而产生的处理时间依赖性的复杂性就会增加。从本质上讲,反馈使系统非因果,其中输出不仅依赖于输入,还依赖于它自己先前的值。根据电路结构和反馈性质的不同,各种电路会提供不同程度的时间依赖性。在这项工作中,我们提出了一个序列逻辑的概率误差模型,该模型可以使用时间进化的因果贝叶斯网络(也称为动态贝叶斯网络)来测量考虑固有依赖关系的时空性质的平均输出误差概率。
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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