Sungtae Lee, Suhwan Lim, Nagyong Choi, J. Bae, Chul-Heung Kim, Soochang Lee, Dong Hwan Lee, Tackhwi Lee, Sungyong Chung, Byung-Gook Park, Jong-Ho Lee
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Neuromorphic Technology Based on Charge Storage Memory Devices
Four synaptic devices are introduced for spiking neural networks (SNNs) and deep neural networks (DNNs). Unsupervised learning is successfully demonstrated by applying the STDP learning rule reflecting the LTP/LTD characteristics of the fabricated TFT-type NOR flash memory cells. Gated Schottky diode (GSD) and vertical NAND flash cell are proposed as synaptic device for DNNs. Using matched simulation, we obtained higher learning accuracy with GSD and NAND synaptic devices compared to that with a memristor-based synapse. Measured synaptic properties of the vertical NAND cells are reported for the first time.