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Performance of Ag–Ag <sub>2</sub> S core–shell nanoparticle-based random network reservoir computing device

Hadiyawarman, Yuki Usami, Takumi Kotooka, Saman Azhari, Masanori Eguchi, Hirofumi Tanaka

2021Japanese Journal of Applied Physics29 citationsDOI

Abstract

Abstract Reservoir computing (RC), a low-power computational framework derived from recurrent neural networks, is suitable for temporal/sequential data processing. Here, we report the development of RC devices utilizing Ag–Ag 2 S core–shell nanoparticles (NPs), synthesized by a simple wet chemical protocol, as the reservoir layer. We examined the NP-based reservoir layer for the required properties of RC hardware, such as echo state property, and then performed the benchmark tasks. Our study on NP-based reservoirs highlighted the importance of the dynamics between the NPs as indicated by the rich high dimensionality due to the echo state property. These dynamics affected the accuracy (up to 99%) of the target waveforms that were generated with a low number of readout channels. Our study demonstrates the great potential of Ag–Ag 2 S NPs for the development of next-generation RC hardware.

Topics & Concepts

Reservoir computingBenchmark (surveying)NanoparticleEcho state networkComputer scienceShell (structure)Curse of dimensionalityMaterials scienceNanotechnologyLayer (electronics)Artificial neural networkWaveformState (computer science)Recurrent neural networkAlgorithmArtificial intelligenceTelecommunicationsGeologyGeodesyComposite materialRadarNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingNeural dynamics and brain function
Performance of Ag–Ag <sub>2</sub> S core–shell nanoparticle-based random network reservoir computing device | Litcius