Adaptive least mean square behavioral power modeling

A. Bogliolo, L. Benini, G. Micheli
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引用次数: 37

Abstract

In this work we propose an effective solution to the main challenges of behavioral power modeling: the generation of models for the power dissipation of technology-independent soft macros and the strong dependence of power from input pattern statistics. Our methodology is based on a fast characterization performed by simulating the gate-level implementation of instances of soft macros within the behavioral description of the complete design. Once characterization has been completed, the backannotated behavioral model replaces the gate-level representation, thus allowing fast but accurate power estimates in a fully behavioral context. Our power characterization procedure is a very efficient process that can be easily embedded in synthesis-based design flows. No additional effort is required from the designer, since power characterization merges seamlessly with a natural top-down design methodology with iterative improvement. After characterization, the behavioral power simulation produces accurate average and instantaneous pourer estimates (with errors around 7% and 25%, respectively, from accurate gate-level power simulation).
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自适应最小均方行为功率模型
在这项工作中,我们提出了一个有效的解决方案,以解决行为功率建模的主要挑战:技术无关的软宏功耗模型的生成以及功率对输入模式统计的强烈依赖。我们的方法是基于通过在完整设计的行为描述中模拟软宏实例的门级实现来执行的快速表征。一旦表征完成,反向注释的行为模型将取代门级表示,从而允许在完全行为上下文中快速而准确地估计功率。我们的功率表征程序是一个非常有效的过程,可以很容易地嵌入到基于合成的设计流程中。由于功率特性与自然的自上而下的设计方法无缝地结合在一起,并进行了迭代改进,因此无需设计师额外的努力。在表征之后,行为功率模拟产生准确的平均和瞬时功率估计(准确的门级功率模拟的误差分别约为7%和25%)。
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