Ultra Low Power Magnetic Flip-Flop Based on Checkpointing/Power Gating and Self-Enable Mechanisms

Circuits and Systems I: Regular Papers, IEEE Transactions(2014)

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摘要
Advanced computing systems suffer from high static power due to the rapidly rising leakage currents in deep sub-micron MOS technologies. Fast access non-volatile memories (NVM) are under intense investigation to be integrated in Flip-Flops or computing memories to allow system power-off in standby state and save power. Spin Transfer Torque MRAM (STT-MRAM) is considered the most promising NVM to address this issue thanks to its high speed, low power, and infinite endurance. However, one of the disadvantages of STT-MRAM for the computing purpose is its relatively high write energy to build up Magnetic Flip-Flop (MFF). In this paper, we propose a power-efficient MFF design architecture to address this challenge based on the combination of checkpointing operation, power gating and self-enable mechanisms. Multi non-volatile storages can be integrated locally in a conventional FF without significant area overhead benefiting from the 3-D implementation of STT-MRAM. We performed electrical simulations (i.e. transient and statistical) to validate its functional behaviors and evaluate its performance by using an accurate spice model of STT-MRAM and an industrial 40 nm CMOS design kit. The simulation results confirm its lower power consumption compared to conventional CMOS FF and the other structures.
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CMOS integrated circuits,checkpointing,flip-flops,power aware computing,CMOS design,NVM,SPICE model,STT-MRAM,checkpointing mechanism,complimentary metal oxide semiconductors,metal oxide semiconductor,nonvolatile memories,power gating mechanism,power-efficient MFF design architecture,self-enable mechanisms,size 40 nm,spin transfer torque MRAM,submicron MOS technologies,ultra low power magnetic flip-flop,Checkpointing,STT-MRAM,flip-flop,low power,non-volatile,register,rollback,stochastic switching
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