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Power macromodeling technique and its application to SoC-based design

机译:功耗宏建模技术及其在基于SoC的设计中的应用

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摘要

Low power is becoming a more crucial performance metrics in system-on-chip (SoC) design. Power function is largely determined by input patterns. The characteristics of these patterns have a major influence on power dissipation. This paper demonstrates power estimation technique using input patterns with the predefined statistical characteristics that helps to analyze the average power consumption of the different intellectual property (IP) cores and the interconnects/buses in SoC design. Genetic algorithm is implemented for the generation of sequences of input signals during the power estimation procedure. The genetic algorithm concurrently optimizes the input signal characteristics that influence the final solution of the pattern. Then, a Monte Carlo zero-delay simulation is performed for individual IP core and bus at a high level. By the simple addition of these cores/buses, power is predicted by a novel macromodel function. The metamodeling technique is adopted to improve accuracy of the samples of realistic data for the quality of results. In the experiments with the IP-based SoC system, the average error is estimated at 11.42%.
机译:低功耗正成为片上系统(SoC)设计中更为关键的性能指标。幂函数在很大程度上取决于输入模式。这些模式的特性对功耗具有重大影响。本文演示了使用具有预定义统计特征的输入模式进行功耗估算的技术,该技术有助于分析SoC设计中不同知识产权(IP)内核和互连/总线的平均功耗。实施遗传算法以在功率估计过程中生成输入信号序列。遗传算法同时优化了影响模式最终解决方案的输入信号特性。然后,对单个IP内核和总线进行高级Monte Carlo零延迟仿真。通过简单地添加这些内核/总线,可以通过新颖的宏模型功能预测功率。采用元建模技术可以提高实际数据样本的准确性,从而提高结果的质量。在基于IP的SoC系统的实验中,平均误差估计为11.42%。

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