Fully hardware-oriented physical reservoir computing using 3D vertical resistive switching memory with different bottom electrodes
- Authors
- Park, Jihee; Kim, Gimun; Kim, Sungjun
- Issue Date
- Jul-2025
- Publisher
- Royal Society of Chemistry
- Keywords
- Nonvolatile Storage; Physical Addresses; Static Random Access Storage; Storage Allocation (computer); Bottom Electrodes; Learning Paradigms; Machine-learning; Memory Structure; Multiple Devices; Process Inputs; Random Access Memory; Random Network; Reservoir Computing; Resistive Switching Memory; Dynamic Random Access Storage; Article; Conductance; Controlled Study; Electric Potential; Electrode; Forecasting; Long Term Memory; Machine Learning; Memory; Nonlinear System; Pattern Recognition; Pharmaceutics; Prediction; Short Term Memory; Simulation; Waveform
- Citation
- Materials Horizons, v.12, no.14, pp 5259 - 5276
- Pages
- 18
- Indexed
- SCIE
SCOPUS
- Journal Title
- Materials Horizons
- Volume
- 12
- Number
- 14
- Start Page
- 5259
- End Page
- 5276
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/58287
- DOI
- 10.1039/d5mh00275c
- ISSN
- 2051-6347
2051-6355
- Abstract
- Reservoir computing (RC) is a promising machine learning paradigm that processes input data using a fixed random network. However, implementing both reservoir and readout layers typically requires multiple devices and additional fabrication steps. To overcome this, we introduce a fully integrated RC system based on a vertically stacked Ta/Ta2O5/HfO2/W and TiN vertical-resistive random-access memory (VRRAM) structure, which can select short-term and long-term memory in VRRAM structure with different bottom electrodes. The volatile VRRAM serves as a physical reservoir, utilizing its fading memory and nonlinearity to capture temporal dependencies, while the nonvolatile VRRAM functions as a readout network with multi-level storage capability and high linearity. Neuromorphic simulations show that using conductance variations as synaptic weights enables pattern recognition accuracy above 93.14%, successfully replicating biological synaptic behaviors. Finally, the proposed Cyclic RC structure effectively processes temporal patterns, achieving strong performance with an NRMSE of 0.2123 for waveform classification and 0.2377 for H & eacute;non map prediction. These findings underscore the potential of hardware-efficient, short-term memory-based architectures for forecasting nonlinear dynamical systems and advancing neuromorphic computing applications.
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Collections - College of Engineering > Department of Electronics and Electrical Engineering > 1. Journal Articles

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