Title :
Bio-Inspired Stochastic Computing Using Binary CBRAM Synapses
Author :
Suri, Manan ; Querlioz, Damien ; Bichler, Olivier ; Palma, G. ; Vianello, E. ; Vuillaume, Dominique ; Gamrat, Christian ; DeSalvo, B.
Author_Institution :
LETI, CEA, Grenoble, France
Abstract :
In this paper, we present an alternative approach to neuromorphic systems based on multilevel resistive memory synapses and deterministic learning rules. We demonstrate an original methodology to use conductive-bridge RAM (CBRAM) devices as, easy to program and low-power, binary synapses with stochastic learning rules. New circuit architecture, programming strategy, and probabilistic spike-timing dependent plasticity (STDP) learning rule for two different CBRAM configurations with-selector (1T-1R) and without-selector (1R) are proposed. We show two methods (intrinsic and extrinsic) for implementing probabilistic STDP rules. Fully unsupervised learning with binary synapses is illustrated through two example applications: 1) real-time auditory pattern extraction (inspired from a 64-channel silicon cochlea emulator); and 2) visual pattern extraction (inspired from the processing inside visual cortex). High accuracy (audio pattern sensitivity > 2, video detection rate > 95%) and low synaptic-power dissipation (audio 0.55 μW, video 74.2 μW) are shown. The robustness and impact of synaptic parameter variability on system performance are also analyzed.
Keywords :
learning (artificial intelligence); random-access storage; STDP learning rule; binary CBRAM synapses; bio-inspired stochastic computing; circuit architecture; conductive-bridge RAM; deterministic learning rules; multilevel resistive memory synapses; neuromorphic systems; probabilistic spike-timing dependent plasticity; Auditory learning; CBRAM synapse; spike-timing dependent plasticity (STDP); stochastic neuromorphic system; visual pattern extraction;
Journal_Title :
Electron Devices, IEEE Transactions on
DOI :
10.1109/TED.2013.2263000