Optimisation of Energy Consumption of Soft Real-Time Applications by Workload Prediction

Florian Kluge, S. Uhrig, Jörg Mische, B. Satzger, T. Ungerer
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引用次数: 7

Abstract

Embedded real-time systems often operate under energy constraints due to a limited battery lifetime. Modern processors provide techniques for dynamic voltage and frequency scaling to reduce energy consumption. However, while the processor possibly operates at a lower clock frequency, the running applications should still meet their deadlines and thus set some limits to the use of scaling techniques. In this paper, we propose auto correlation clustering (ACC) as a technique to predict the workload of single iterations of a periodic soft real-time application. Based on this prediction we adjust the processor performance such that deadlines are exactly met. We compare our technique to the broadly implemented race-to-idle (RTI) and identify situations where ACC can gain higher energy savings than RTI. Additionally, ACC can help saving energy in multithreaded processors where RTI can be applied only with a high overhead if at all.
基于工作负载预测的软实时应用能耗优化
由于电池寿命有限,嵌入式实时系统经常在能量限制下运行。现代处理器提供动态电压和频率缩放技术,以减少能源消耗。然而,当处理器可能以较低的时钟频率运行时,运行的应用程序仍然应该满足它们的最后期限,从而为缩放技术的使用设置了一些限制。本文提出了一种自动相关聚类(ACC)技术,用于预测周期性软实时应用程序的单次迭代工作量。基于这一预测,我们调整处理器性能,使其完全满足最后期限。我们将我们的技术与广泛实施的从竞争到空闲(RTI)技术进行了比较,并确定了ACC可以比RTI获得更高节能的情况。此外,ACC可以帮助在多线程处理器中节省能源,在多线程处理器中,RTI只能在高开销的情况下应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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