Memristors have been rediscovered recently and then gained increasing attentions. Their unique properties, such as high density, nonvolatility, and recording historic behavior of current (or voltage) profile, have inspired the creation of memristor-based neuromorphic computing architecture. Rather than the existing crossbar-based neuron network designs, we focus on memristor-based synapse and the corresponding training circuit to mimic the real biological system. In this paper, first, the basic synapse design is presented. On top of it, we will discuss the training sharing scheme and explore design implication on multi-synapse neuron system. Energy saving method such as self-training is also investigated.
Beiye LiuYiran ChenBryant WysockiTingwen Huang
Xiaozhe ChengZhitao QinHongen GuoZhitao DouHong LianJianfeng FanYongquan QuQingchen Dong
Beiye LiuYiran ChenBryant WysockiTingwen Huang
Hritom DasRocco FebboCharles P. RizzoNishith N. ChakrabortyJames S. PlankGarrett S. Rose
Wenlong LiuChi ZhangDi LiQibin YuanGuoqiang TanAo XiaBai SunHaibo YangDinghan Liu