SenseBench:对传感器网络处理器进行准确评估

L. Nazhandali, M. Minuth, T. Austin
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引用次数: 81

摘要

传感器网络处理器引入了前所未有的紧凑和便携式计算水平。这些小型处理系统驻留在它们所监视的环境中,将传感、计算、存储、通信和电源集成到小型设备中。传感器处理器在医疗监测、环境传感、工业检查和军事监视中具有广泛的应用。尽管努力为这些系统设计合适的处理器(Ekanayake et al., 2004;Hempstead et al., 2005;Nazhandali et al., 2005;Wameke和Pister, 2004),没有明确的方法来评估它们的性能和能耗。历史上使用的MIPS(每秒数百万条指令)和EPI(每条指令能量)指标不能提供准确的比较,因为它们依赖于指令的性质,这在指令集架构中是不同的。另一方面,目前定义明确的基准(1989;Guthaus et al., 2001;Lee et al., 1997)不代表传感器网络系统的典型工作负载,因此不适合比较传感器处理器。本文定义了一组代表传感器处理器典型实时工作负载的流应用程序。此外,引入了三个新的指标,EPB(每束能量),xRT(实时次数)和CFP(成分足迹)来评估和比较这些系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SenseBench: toward an accurate evaluation of sensor network processors
Sensor network processors introduce an unprecedented level of compact and portable computing. These small processing systems reside in the environment which they monitor, combining sensing, computation, storage, communication, and power supplies into small form factors. Sensor processors have a wide variety of applications in medical monitoring, environmental sensing, industrial inspection, and military surveillance. Despite efforts to design suitable processors for these systems (Ekanayake et al., 2004; Hempstead et al., 2005; Nazhandali et al., 2005; Wameke and Pister, 2004), there is no well-defined method to evaluate their performance and energy consumption. The historically used MIPS (millions of instructions per second) and EPI (energy per instruction) metrics cannot provide an accurate comparison because of their dependence on the nature of instructions, which differ across instruction set architectures. On the other hand, the current well-defined benchmarks (1989; Guthaus et al., 2001; Lee et al., 1997) do not represent typical workloads of sensor network systems, and hence, are not suitable to compare sensor processors. This paper defines a set of stream applications representing the typical real-time workload of a sensor processor. Furthermore, three new metrics, EPB (energy per bundle), xRT (times real-time), and CFP (composition foot print) are introduced to evaluate and compare such systems.
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