Experimental Demonstration of STT-MRAM based Nonvolatile Instantly On/Off System for IoT Applications: Case Studies

ACM Transactions on Embedded Computing Systems(2022)

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摘要
Energy consumption has been a big challenge for electronic devices, particularly, for the battery-powered Internet of Things (IoT) equipment. To address such a challenge, on one hand, low-power electronic design methodologies and novel power management techniques have been proposed, such as nonvolatile memories and instantly on/off systems; on the other hand, the energy harvesting technology by collecting signals from human activity or the environment has attracted widespread attention in the IoT area. However, the system with self-powered energy harvesting may suffer frequent energy failures or fluctuating energy conditions, which degrade system reliability and user experience. Therefore, how to make the system under unreliable power inputs operate correctly and efficiently is one of the most critical issues for the energy harvesting technology. In this paper, we built an instantly on/off system based on nonvolatile STT-MRAM for IoT applications, which can instantly power on/off under different conditions of the harvested energy. The system powers on and operates normally when the harvested energy is enough (over the preset threshold); otherwise, the system powers off and stores the operational data back to the nonvolatile STT-MRAM. We described implementations of the hardware/software co-designed architecture (with image acquisition as an example) based on the commercialized 32MB STT-MRAM, and experimentally demonstrated the system functionality and efficiency under five typical energy harvesting scenarios, including radio-frequency (RF), thermal, solar, piezoelectric and WIFI. Our experimental results show that the power consumption and data restore time were reduced by 15.1 \(\% \) and 714 times respectively in comparison with the DRAM-based counterpart.
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关键词
Non-volatile memory,instantly on/off system,energy harvesting,STT-MRAM,IoT applications
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