Dynamic Power and Energy Management for Energy Harvesting Nonvolatile Processor Systems

Author:

Ma Kaisheng1,Li Xueqing1,Liu Huichu2,Sheng Xiao3,Wang Yiqun3,Swaminathan Karthik4,Liu Yongpan3,Xie Yuan5,Sampson John1,Narayanan Vijaykrishnan1

Affiliation:

1. Dept. of Computer Science and Engineering, The Pennsylvania State University

2. Intel Labs, Intel Corporation

3. Dept. of Electronic Engineering, Tsinghua University

4. IBM T.J Watson Research Center

5. Dept. of Electrical and Computer Engineering, University of California at Santa Barbara

Abstract

Self-powered systems running on scavenged energy will be a key enabler for pervasive computing across the Internet of Things. The variability of input power in energy-harvesting systems limits the effectiveness of static optimizations aimed at maximizing the input-energy-to-computation ratio. We show that the resultant gap between available and exploitable energy is significant, and that energy storage optimizations alone do not significantly close the gap. We characterize these effects on a real, fabricated energy-harvesting system based on a nonvolatile processor. We introduce a unified energy-oriented approach to first optimize the number of backups, by more aggressively using the stored energy available when power failure occurs, and then optimize forward progress via improving the rate of input energy to computation via dynamic voltage and frequency scaling and self-learning techniques. We evaluate combining these schemes and show capture of up to 75.5% of all input energy toward processor computation, an average of 1.54 × increase over the best static “Forward Progress” baseline system. Notably, our energy-optimizing policy combinations simultaneously improve both the rate of forward progress and the rate of backup events (by up to 60.7% and 79.2% for RF power, respectively, and up to 231.2% and reduced to zero, respectively, for solar power). This contrasts with static frequency optimization approaches in which these two metrics are antagonistic.

Funder

NSF awards

the Center for Low Energy Systems Technology (LEAST), sponsored by MARCO and DARPA,

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Software

Cited by 16 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Write-Light Cache for Energy Harvesting Systems;Proceedings of the 50th Annual International Symposium on Computer Architecture;2023-06-17

2. Frequency Scaling Meets Intermittency: Optimizing Task Rate for RFID-Scale Computing Devices;IEEE Transactions on Mobile Computing;2023

3. Energy-efficient and Reliable Inference in Nonvolatile Memory under Extreme Operating Conditions;ACM Transactions on Embedded Computing Systems;2022-09-30

4. More Is Less: Model Augmentation for Intermittent Deep Inference;ACM Transactions on Embedded Computing Systems;2022-09-30

5. Deep Reinforcement-Learning-Guided Backup for Energy Harvesting Powered Systems;IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems;2022-02

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