S. Sidler, Irem Boybat, et al.
ESSDERC 2016
Metal-oxide-based resistive memory devices (ReRAM) are being actively researched as synaptic elements of neuromorphic co-processors for training deep neural networks (DNNs). However, device-level non-idealities are posing significant challenges. In this work we present a multi-ReRAM-based synaptic architecture with a counter-based arbitration scheme that shows significant promise. We present a 32×2 crossbar array comprising Pt/HfO2/Ti/TiN-based ReRAM devices with multi-level storage capability and bidirectional conductance response. We study the device characteristics in detail and model the conductance response. We show through simulations that an in-situ trained DNN with a multi-ReRAM synaptic architecture can perform handwritten digit classification task with high accuracies, only 2% lower than software simulations using floating point precision, despite the stochasticity, nonlinearity and large conductance change granularity associated with the devices. Moreover, we show that a network can achieve accuracies > 80% even with just binary ReRAM devices with this architecture.
S. Sidler, Irem Boybat, et al.
ESSDERC 2016
Irem Boybat, Manuel Le Gallo, et al.
PRIME 2017
Stefano Ambrogio, Pritish Narayanan, et al.
Nature
Shubham Jain, Ching-Tzu Chen, et al.
ISCAS 2023