Reconfigurable MoS2 Memtransistors for
Continuous Learning in Spiking Neural Networks
Posted on 2021-07-20 - 18:12
Artificial
intelligence and machine learning are growing computing
paradigms, but current algorithms incur undesirable energy costs on
conventional hardware platforms, thus motivating the exploration of
more efficient neuromorphic architectures. Toward this end, we introduce
here a memtransistor with gate-tunable dynamic learning behavior.
By fabricating memtransistors from monolayer MoS2 grown
on sapphire, the relative importance of the vertical field effect
from the gate is enhanced, thereby heightening reconfigurability of
the device response. Inspired by biological systems, gate pulses are
used to modulate potentiation and depression, resulting in diverse
learning curves and simplified spike-timing-dependent plasticity that
facilitate unsupervised learning in simulated spiking neural networks.
This capability also enables continuous learning, which is a previously
underexplored cognitive concept in neuromorphic computing. Overall,
this work demonstrates that the reconfigurability of memtransistors
provides unique hardware accelerator opportunities for energy efficient
artificial intelligence and machine learning.
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Yuan, Jiangtan; Liu, Stephanie E.; Shylendra, Ahish; Gaviria Rojas, William A.; Guo, Silu; Bergeron, Hadallia; et al. (2021). Reconfigurable MoS2 Memtransistors for
Continuous Learning in Spiking Neural Networks. ACS Publications. Collection. https://doi.org/10.1021/acs.nanolett.1c00982Â