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首页> 外文期刊>Journal of Low Power Electronics >SCoPE: Statistical Regression Based Power Models for Co-Processors Power Estimation
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SCoPE: Statistical Regression Based Power Models for Co-Processors Power Estimation

机译:SCoPE:用于协处理器功率估计的基于统计回归的功率模型

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摘要

Simulation of a System-on-Chip (SoC) design at register transfer level (RTL) containing various co-processors and logic units is often too time consuming. This poses a problem for power estimation because the best available tools for power estimation today (e.g., PowerTheater) require RTL simulation. Therefore, it is important to obtain abstract power models of the various components that can be utilized at levels higher than the RTL. Availability of such power models can speed up power estimation of the entire chip without resorting to full-chip simulation of the RTL model. However, to be useful, power estimates obtained from such abstract models must be sufficiently accurate. In this paper, we present "Statistical regression based Co-processor Power Estimation (SCoPE)" methodology, which utilizes cycle accurate Finite State Machine with Datapath (FSMD) models for various co-processors to obtain accurate power estimation. We show through a number of experiments that hardware design implemented on 180 nm technology library show no more than 6% worst-case loss of accuracy, and 9% for 90 nm, with respect to the state-of-the-art RTL power estimation techniques.
机译:在包含各种协处理器和逻辑单元的寄存器传输级(RTL)上对片上系统(SoC)设计进行仿真通常很耗时。这给功率估计带来了问题,因为当今最好的可用功率估计工具(例如PowerTheater)需要RTL仿真。因此,重要的是获得可以在高于RTL的级别上使用的各种组件的抽象功率模型。这样的功率模型的可用性可以加快整个芯片的功率估计,而无需依靠RTL模型的全芯片仿真。然而,有用的是,从这种抽象模型获得的功率估计必须足够准确。在本文中,我们提出了“基于统计回归的协处理器功率估计(SCoPE)”方法,该方法利用周期精确的有限状态机和数据路径(FSMD)模型为各种协处理器获得准确的功率估计。我们通过大量实验表明,相对于最新的RTL功率估算,在180 nm技术库上实现的硬件设计显示最坏情况下的精度损失不超过6%,对于90 nm的情况则不超过9%。技术。

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