2023
DOI: 10.1002/cta.3573
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A low‐power charge‐based integrate‐and‐fire circuit for binarized‐spiking neural network

Abstract: Summary This paper presents a charge‐based integrate‐and‐fire (IF) circuit for in‐memory binary spiking neural networks (BSNNs). The proposed IF circuit can mimic both addition and subtraction operations that permit better incorporation with in‐memory XNOR‐based synapses to implement the BSNN processing core. To evaluate the proposed design, we have developed a framework that incorporates the circuit's imperfections effects into the system‐level simulation. The array circuits use 2T‐2J Spin‐Transfer‐Torque Mag… Show more

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