TY - JOUR
T1 - Physical reservoir computing system fully implemented using a single flash memory device via tailored decay pulse modulation
AU - Ryu, Donghyun
AU - Park, Suyong
AU - Kim, Seongmin
AU - Lee, Hyeon Ho
AU - Kim, Sungjun
AU - Choi, Woo Young
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/12/15
Y1 - 2025/12/15
N2 - With the rapid expansion of artificial intelligence (AI) applications, developing energy-efficient hardware capable of processing temporal data has become increasingly critical. In this work, we present a physical reservoir computing (RC) system fully implemented using a single TiN/Al2O3/Si3N4/SiO2/poly-Si (TANOS) flash memory device. Unlike prior approaches that rely on multiple or heterogeneous devices, our system uniquely realizes both the reservoir and readout functionalities within a single device platform. By applying a tailored decay pulse scheme, we induce short-term memory (STM)-like dynamics in a device traditionally known for long-term memory (LTM), enabling dynamic reservoir state evolution essential for temporal signal encoding. The TANOS device demonstrates excellent endurance (>105 cycles), low gate leakage (∼10.06 nA), and high device uniformity, supporting reliable and low-power operation, with the operation possessing the highest energy consumption (erase) consuming only 513.1 pJ per pulse at room temperature. When integrated into a CNN-based RC framework, the system achieves a high classification accuracy of 88.38 % on the Fashion MNIST dataset and maintains strong performance in a fully hardware-oriented MNIST simulation. These results highlight the potential of standard silicon memory technology for building compact, energy-efficient, and fully self-contained neuromorphic computing systems, paving the way for scalable and CMOS-compatible AI hardware using a single memory device.
AB - With the rapid expansion of artificial intelligence (AI) applications, developing energy-efficient hardware capable of processing temporal data has become increasingly critical. In this work, we present a physical reservoir computing (RC) system fully implemented using a single TiN/Al2O3/Si3N4/SiO2/poly-Si (TANOS) flash memory device. Unlike prior approaches that rely on multiple or heterogeneous devices, our system uniquely realizes both the reservoir and readout functionalities within a single device platform. By applying a tailored decay pulse scheme, we induce short-term memory (STM)-like dynamics in a device traditionally known for long-term memory (LTM), enabling dynamic reservoir state evolution essential for temporal signal encoding. The TANOS device demonstrates excellent endurance (>105 cycles), low gate leakage (∼10.06 nA), and high device uniformity, supporting reliable and low-power operation, with the operation possessing the highest energy consumption (erase) consuming only 513.1 pJ per pulse at room temperature. When integrated into a CNN-based RC framework, the system achieves a high classification accuracy of 88.38 % on the Fashion MNIST dataset and maintains strong performance in a fully hardware-oriented MNIST simulation. These results highlight the potential of standard silicon memory technology for building compact, energy-efficient, and fully self-contained neuromorphic computing systems, paving the way for scalable and CMOS-compatible AI hardware using a single memory device.
KW - Artificial neural networks
KW - Decay pulse scheme
KW - Long-term memory
KW - Reservoir computing
UR - https://www.scopus.com/pages/publications/105018661907
U2 - 10.1016/j.nanoen.2025.111525
DO - 10.1016/j.nanoen.2025.111525
M3 - Article
AN - SCOPUS:105018661907
SN - 2211-2855
VL - 146
JO - Nano Energy
JF - Nano Energy
M1 - 111525
ER -