2022年第83回応用物理学会秋季学術講演会

講演情報

一般セッション(口頭講演)

9 応用物性 » 9.5 新機能材料・新物性

[20p-C102-1~16] 9.5 新機能材料・新物性

2022年9月20日(火) 13:30 〜 17:45 C102 (C102)

高瀬 浩一(日大)、福村 知昭(東北大)

14:00 〜 14:15

[20p-C102-3] In-materio demonstration of reservoir computing using a random network of single-walled carbon nanotube/Ag-Ag2S nanoparticle device

〇(P)Deep Banerjee1,2、Yuki Usami1,2、Hirofumi Tanaka1,2 (1.KYUTECH、2.Neuromorphic AI Research Center)

キーワード:in-materio, reservoir computing, single walled carbon nanotube, Ag-Ag2S

In-materio reservoir computing is gaining popularity for next generation AI hardware as their neural network architecture is highly brain inspired with fast trainability of only output weights. Many such in-materio RC hardware have been proposed, but one with nanomaterials come close to brain like computing framework. In this regard we fabricate an in-materio RC device with single-walled carbon nanotube (SWNT)/Ag-Ag2S nanoparticle random network and utilizing the non-linear spatio-temporal information processing emergent from the redox behavior; we proceeded to carry out future time-series task of non-linear autoregressive moving average (NARMA). By a simple regression training of high dimensional outputs obtained from SWNT/Ag-Ag2S we successfully predicted NARMA-2 with a high accuracy of 85%, while a higher time step prediction of NARMA-10 was also achieved with a relatively lower accuracy of 65%. These results indicate that the random non-linear networks of SWNT/Ag-Ag2S hold the potential for future power efficient RC based AI applications.