posted on 2024-10-24, 14:35authored byHyerin Jo, Jiseong Jang, Hyeon Jung Park, Huigu Lee, Sung Jin An, Jin Pyo Hong, Mun Seok Jeong, Hongseok Oh
We report tellurium (Te) thin-film-based artificial photonic
synapses
and their application to physical reservoir computing (PRC). The Te-based
artificial photonic synapses were fabricated by using sputtered Te
thin films and spray-coated MXene (Ti3C2) electrodes.
A thorough investigation of the field-dependent persistent photoconductivity
(PPC) of the Te channel revealed that the relaxation speed of the
transient photocurrent depended on the gate bias. Utilizing the PPC
property, the Te device served as an excellent photonic synapse under
light pulse stimulus, exhibiting multiple synaptic characteristics
such as excitatory postsynaptic current and paired-pulse facilitation,
as well as highly linear potentiation-depression characteristics;
a simulation-based study further confirmed the effectiveness of the
device. Most importantly, by exploiting the nonlinear and fading memory
characteristics of the Te photonic synapse, we demonstrate two advanced
examples of PRC. In classifying handwritten digits, our system carried
out successful digit recognition without binarization or another simplification
process with reduced computational cost compared to conventional systems.
To solve second-order nonlinear equations, we introduce the strategy
of utilizing historical nodes. The combination of historical nodes
and the gate-tunable responses of the photonic synapses, which provide
an enriched reservoir state, yielded excellent prediction accuracy.
Overall, this work will offer an understanding of Te-based optoelectronic
devices and their synergetic integration with neuromorphic devices
and PRC.