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Runtime Adjustment of IoT System-on-Chips for Minimum Energy Operation

机译:IOT系统的运行时调整,用于最小能量操作

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Energy-constrained Systems-on-Chips (SoC) are becoming major components of many emerging applications, especially in the Internet of Things (IoT) domain. Although the best energy efficiency is achieved when the SoC operates in the near-threshold region, the best operating point for maximum energy efficiency could vary depending on operating temperature, workload, and the powergating state (power modes) of various SoC components at runtime. This paper presents a lightweight machine-learning based scheme to predict and tune the SoC to the most energy efficient supply voltage at the firmware level during runtime, considering the impacts of temperature variation and power-gating of SoC components while meeting the performance and reliability requirements. Simulation results indicate that the proposed method can determine the most energy efficient supply voltage of a circuit with high-accuracy (RMSE = 7mV), while considering the runtime performance and reliability constraints.
机译:能量受限系统的芯片(SoC)正在成为许多新兴应用程序的主要组成部分,尤其是在物联网(物联网)域中。尽管当SOC在近阈值区域中操作时,实现最佳能量效率,但是最大能效的最佳操作点可能根据运行时在各种SOC组件的操作温度,工作量和动力状态(电源模式)而变化。本文介绍了一种基于轻量级机器学习的方案,可以在运行时在固件级别预测和将SOC到最能节奏的电源电压,考虑到SOC组件的温度变化和电源电流的影响,同时满足性能和可靠性要求。仿真结果表明,该方法可以通过高精度(RMSE = 7mV)来确定电路最能力的电源电压,同时考虑运行时性能和可靠性约束。

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