An artificial synapse based on oxygen-ion-driven electrochemical
random-access memory (O-ECRAM) devices is a promising candidate for
building neural networks embodied in neuromorphic hardware. However,
achieving commercial-level learning accuracy in O-ECRAM synapses,
analog conductance tuning at fast speed, and multibit storage capacity
is challenging because of the lack of Joule heating, which restricts
O2– ionic transport. Here, we propose the use of
an atomically thin heater of monolayer graphene as a low-power heating
source for O-ECRAM to increase thermally activated O2– migration within channel-electrolyte layers. Heating from graphene
manipulates the electrolyte activation energy to establish and maintain
discrete analog states in the O-ECRAM channel. Benefiting from the
integrated graphene heater, the O-ECRAM features long retention (>104 s), good stability (switching accuracy <98% for >103 training pulses), multilevel analog states for 6-bit analog
weight storage with near-ideal linear switching, and 95% pattern-identification
accuracy. The findings demonstrate the usefulness of 2D materials
as integrated heating elements in artificial synapse chips to accelerate
neuromorphic computation.