鹰眼:噪声传感器放置的近最佳统计框架

Tao Wang, Chun Zhang, Jinjun Xiong, Yiyu Shi
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引用次数: 19

摘要

不断扩大的技术规模大大降低了噪声裕度,使功能更加复杂。因此,设计时技术本身不太可能确保电源完整性,从而导致运行时电压紧急情况。为了缓解这个问题,最近的几项工作揭示了动态噪音管理系统的可能性。这些工作大多依靠片上噪声传感器来准确捕获电压紧急情况。然而,它们都假定(或隐式或显式)传感器的位置是给定的。如何在给定数量的噪声传感器的最优位置进行最佳电压应急检测仍然是一个悬而未决的问题。在本文中,我们正式定义了噪声传感器的放置问题以及一个新的感知质量度量(SQM)来最大化。在此基础上,提出了一种求解该问题的有效算法,并证明了该算法在多项式复杂度近似中是最优的。在一组工业电网设计上的实验结果表明,与简单的基于平均噪声的启发式算法和两种最先进的以恢复全图或始终捕获热点为目标的温度传感器放置算法相比,所提方法平均可将电压应急检测的缺陷率分别降低7.4倍、15倍和6.2倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eagle-Eye: A near-optimal statistical framework for noise sensor placement
The relentless technology scaling has led to significantly reduced noise margin and complicated functionalities. As such, design time techniques per se are less likely to ensure power integrity, resulting in runtime voltage emergencies. To alleviate the issue, recently several works have shed light on the possibilities of dynamic noise management systems. Most of these works rely on on-chip noise sensors to accurately capture voltage emergencies. However, they all assume, either implicitly or explicitly, that the placement of the sensors is given. It remains an open problem in the literature how to optimally place a given number of noise sensors for best voltage emergency detection. In this paper, we formally define the problem of noise sensor placement along with a novel sensing quality metric (SQM) to be maximized. We then put forward an efficient algorithm to solve it, which is proved to be optimal in the class of polynomial complexity approximations. Experimental results on a set of industrial power grid designs show that compared with a simple average-noise based heuristic and two state-of-the-art temperature sensor placement algorithms aiming at recovering the full map or capturing the hot spots at all times, the proposed method on average can reduce the miss rate of voltage emergency detections by 7.4x, 15x and 6.2x, respectively.
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