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Instruction-Level Power Estimator for Sensor Networks

机译:传感器网络的指令级功率估算器

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In sensor networks, analyzing power consumption before actual deployment is crucial for maximizing service lifetime. This paper proposes an instruction-level power estimator (IPEN) for sensor networks. IPEN is an accurate and fine grain power estimation tool, using an instruction-level simulator. It is independent of the operating system, so many different kinds of sensor node software can be simulated for estimation. We have developed the power model of a Micaz-compatible mote. The power consumption of the ATmega128L microcontroller is modeled with the base energy cost and the instruction overheads. The CC2420 communication component and other peripherals are modeled according to their operation states. The energy consumption estimation module profiles peripheral accesses and function calls while an application is running. IPEN has shown excellent power estimation accuracy, with less than 5% estimation error compared to real sensor network implementation. With IPEN’s high precision instruction-level energy prediction, users can accurately estimate a sensor network’s energy consumption and achieve fine-grained optimization of their software.
机译:在传感器网络中,在实际部署之前分析功耗对于最大化使用寿命至关重要。本文提出了一种用于传感器网络的指令级功率估计器(IPEN)。 IPEN是使用指令级模拟器的准确而细粒度的功率估算工具。它独立于操作系统,因此可以模拟许多不同种类的传感器节点软件进行估算。我们已经开发了与Micaz兼容的微粒的功率模型。 ATmega128L微控制器的功耗以基本能源成本和指令开销为模型。 CC2420通信组件和其他外围设备根据其工作状态建模。能耗估算模块在应用程序运行时对外围设备访问和功能调用进行配置。 IPEN已显示出出色的功率估计精度,与实际传感器网络实施相比,估计误差不到5%。借助IPEN的高精度指令级能耗预测,用户可以准确估算传感器网络的能耗,并实现软件的细粒度优化。

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