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InGaZnO Optoelectronic Synaptic Transistor for Reservoir Computing and LSTM-Based Prediction Model

Authors
Park, SuyongKim, SeongminKim, SungjoonPark, KyungchulRyu, DonghyunKim, Sungjun
Issue Date
Jul-2025
Publisher
WILEY-V C H VERLAG GMBH
Keywords
long-short-term memory; neuromorphic computing; nociceptor; optoelectronic synaptic transistor; reservoir computing
Citation
Advanced Optical Materials, v.13, no.21
Indexed
SCIE
SCOPUS
Journal Title
Advanced Optical Materials
Volume
13
Number
21
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/58412
DOI
10.1002/adom.202500634
ISSN
2195-1071
2195-1071
Abstract
This study presents a reservoir computing (RC) system utilizing an indium gallium zinc oxide (IGZO)-based optoelectronic synaptic transistor (OST) for neuromorphic computing applications. The proposed IGZO-based OST harnesses the effects of persistent photoconductivity in the IGZO channel and charge trapping at the IGZO/tantalum oxide interface to emulate the short-term synaptic behavior. By optical stimuli, the device achieves dynamic reservoir states with nonlinear and time-dependent characteristics, enhancing its capability for temporal data processing. Moreover, the system effectively performs pattern recognition tasks, attaining high classification accuracies of 95.75% and 85.02% on the MNIST and Fashion MNIST datasets, respectively. Additionally, the device replicates nociceptive behaviors, such as allodynia and hyperalgesia, under optical stimulation, showcasing its potential for bio-inspired sensory applications. An LSTM-based prediction model is developed using Jena climate data, incorporating a method that mimics synaptic weight variation to assess its impact on performance. This approach demonstrates the feasibility of hardware-friendly neural networks via biologically inspired weight adjustments, outperforming conventional forecasting models. Notably, the model achieves a normalized root mean square error (NRMSE) as low as 0.0145, highlighting its high prediction accuracy.
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