Convolutional neural network for high-performance reservoir computing using dynamic memristors

Yongjin Byun, Hyojin So, Sungjun Kim

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

In the rapidly advancing field of neuromorphic computing, W/ZnO/TiN resistive random-access memory (RRAM) devices have emerged as a next-generation computational building block. Our findings reveal the significant role played by the thickness of the ZnO layer in determining the electrical properties essential for data storage and neuromorphic applications. The short-term memory (STM) capabilities, which are critical for processing temporal information, are closely examined alongside their potential to simulate biological synaptic functions through multilevel conductance states and synaptic behaviors such as paired-pulse facilitation. Integrating these devices into reservoir computing systems enhances pattern recognition and accelerates learning, which demonstrates their utility in sequential data processing. In addition, conductance modulation via pulse width adjustment is a novel strategy to optimize memory device performance. By showcasing the effectiveness of W/ZnO/TiN devices in neuromorphic computing through high-accuracy image recognition tasks, our study highlights their foundational role in advancing neuromorphic computing technologies. The adaptability, learning capabilities, and efficiency of these devices underscore their potential for developing hardware-based neuromorphic systems that are capable of complex data processing.

Original languageEnglish
Article number115536
JournalChaos, Solitons and Fractals
Volume188
DOIs
StatePublished - Nov 2024

Keywords

  • Convolutional neural network
  • Memristor
  • Neuromorphic system
  • Reservoir computing

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