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Cycle-accurate macro-models for RT-level power analysis

机译:用于RT级功率分析的周期精确的宏模型

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摘要

In this paper, we present a methodology and techniques for generating cycle-accurate macro-models for register transfer (RT)-level power analysis. The proposed macro-model predicts not only the cycle-by-cycle power consumption of a module, but also the moving average of power consumption and the power profile of the module over time. We propose an exact power function and approximation steps to generate our power macro-model. First-order temporal correlations and spatial correlations of up to order three are considered in order to improve the estimation accuracy. A variable reduction algorithm is designed to eliminate the "insignificant" variables using a statistical sensitivity test. Population stratification is employed to increase the model fidelity. Experimental results show our macro-models with 15 or fewer variables, exhibit >5% error for average power and >20% errors for cycle-by-cycle power estimation compared to circuit simulation results using Powermill.
机译:在本文中,我们提出了一种用于生成周期精确的宏模型的方法和技术,用于寄存器传输(RT)级功率分析。所提出的宏模型不仅可以预测模块的逐周期功耗,还可以预测功耗的移动平均值和模块随时间的功耗曲线。我们提出了精确的幂函数和近似步骤以生成我们的幂宏模型。考虑一阶时间相关性和最多三阶的空间相关性,以提高估计精度。设计了变量减少算法,以使用统计敏感性测试消除“无关紧要”的变量。总体分层用于提高模型保真度。实验结果表明,与使用Powermill进行的电路仿真结果相比,我们的宏模型具有15个或更少的变量,平均功率误差大于5%,逐周期功率估计误差大于20%。

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