A power modeling and characterization method for macrocells using structure information

Jiing-Yuan Lin, W. Shen, Jing-Yang Jou
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引用次数: 11

Abstract

To characterize a macrocell, a general method is to store the power consumption of all possible transition events at primary inputs in the lookup tables. Though this approach is very accurate, the lookup tables could be huge for the macrocells with many inputs. In this paper, we present a new power modeling method which takes advantage of the structure information of macrocells and selects minimum number of primary inputs or internal nodes in a macrocell as state variables to build a state transition graph (STG). Those state variables can completely model the transitions of all internal nodes and the primary outputs. By carefully deleting some state variables, we further introduce an incomplete power modeling technique which can simplify the STG without losing much accuracy. In addition, we exploit the property of the compatible patterns of a macrocell to further reduce the number of edges in the corresponding STG. Experimental results show that our modeling techniques can provide SPICE-like accuracy and can reduce the size of the lookup table significantly comparing to the general approach.
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基于结构信息的巨细胞功率建模与表征方法
为了描述宏单元格的特征,一般的方法是在查找表中存储主输入处所有可能的转换事件的功耗。尽管这种方法非常准确,但是对于具有许多输入的宏单元格,查找表可能非常庞大。本文提出了一种新的能量建模方法,该方法利用宏单元的结构信息,选取最小的主输入数或宏单元内部节点数作为状态变量,构建状态转移图(STG)。这些状态变量可以完全模拟所有内部节点和主要输出的转换。通过仔细地删除一些状态变量,我们进一步引入了一种不完全功率建模技术,该技术可以简化STG而不会损失太多精度。此外,我们利用宏单元格兼容模式的特性,进一步减少相应STG中的边数。实验结果表明,与一般方法相比,我们的建模技术可以提供类似spice的精度,并且可以显着减少查找表的大小。
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