TY - JOUR
T1 - InGaZnO-based synaptic transistor with embedded ZnO charge-trapping layer for reservoir computing
AU - Jang, Junwon
AU - Lee, Jungwoo
AU - Bae, Jong Ho
AU - Cho, Seongjae
AU - Kim, Sungjun
N1 - Publisher Copyright:
© 2024 Elsevier B.V.
PY - 2024/8/1
Y1 - 2024/8/1
N2 - In this study, we design an IGZO/ZnO/IGZO-based synaptic transistor to implement robust reservoir computing. Short-term memory characteristics are achieved using the charge trapping and detrapping effects of the ZnO layer. We verify excellent cell-to-cell and cycle-to-cycle uniformity regarding the memory characteristics of the device. Moreover, various synaptic behaviors, including short-term potentiation, short-term depression (STD), excitatory postsynaptic currents (EPSC), and paired-pulse facilitation (PPF) are emulated to check the suitability of neuromorphic properties. Finally, reservoir computing trained on the modified National Institute of Standards and Technology database dataset is presented for temporal data learning. As a physical reservoir, the device can achieve 16 different using 4 bits depending on the applied pulse stream. The results include a confusion matrix covering all recognition scenarios, with an average recognition accuracy of 93.87%, closely approaching the theoretical recognition accuracy of 94.1%. This study sheds light on a computational framework for physical reservoir computing by reducing the training cost.
AB - In this study, we design an IGZO/ZnO/IGZO-based synaptic transistor to implement robust reservoir computing. Short-term memory characteristics are achieved using the charge trapping and detrapping effects of the ZnO layer. We verify excellent cell-to-cell and cycle-to-cycle uniformity regarding the memory characteristics of the device. Moreover, various synaptic behaviors, including short-term potentiation, short-term depression (STD), excitatory postsynaptic currents (EPSC), and paired-pulse facilitation (PPF) are emulated to check the suitability of neuromorphic properties. Finally, reservoir computing trained on the modified National Institute of Standards and Technology database dataset is presented for temporal data learning. As a physical reservoir, the device can achieve 16 different using 4 bits depending on the applied pulse stream. The results include a confusion matrix covering all recognition scenarios, with an average recognition accuracy of 93.87%, closely approaching the theoretical recognition accuracy of 94.1%. This study sheds light on a computational framework for physical reservoir computing by reducing the training cost.
KW - Charge trap layer
KW - Indium-gallium-zinc oxide
KW - Reservoir computing
KW - Short-term memory
KW - Synaptic transistor
UR - http://www.scopus.com/inward/record.url?scp=85191332297&partnerID=8YFLogxK
U2 - 10.1016/j.sna.2024.115405
DO - 10.1016/j.sna.2024.115405
M3 - Article
AN - SCOPUS:85191332297
SN - 0924-4247
VL - 373
JO - Sensors and Actuators, A: Physical
JF - Sensors and Actuators, A: Physical
M1 - 115405
ER -