Single Electron Stochastic Neural Network(<Special Section>Nonlinear Theory and its Applications)
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概要
- 論文の詳細を見る
Single electron devices are ultra low power and extremely small devices, and suitable for implementation of large scale integrated circuits. Artificial neural networks (ANNs), which require a large number of transistors for being to be applied to practical use, is one of the possible applications of single electron devices. In order to simplify a single electron circuit configuration, we apply stochastic logic in which various complex operations can be done with basic logic gates. We design basic subcircuits of a single electron stochastic neural network, and confirm that backgate bias control and a redundant configuration are necessary for a feedback loop configuration by computer simulation based on Monte Carlo method. The proposed single electron circuit is well-suited for hardware implementation of a stochastic neural network because we can save circuit area and power consumption by using a single electron random number generator (RNG) instead of a conventional complementary metal oxide semiconductor (CMOS) RNG.
- 社団法人電子情報通信学会の論文
- 2004-09-01
著者
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NAKAJIMA Koji
Laboratory for Brainware Systems, Laboratory for Nanoelectronics and Spintronics, Research Institute
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Sato S
Laboratory For Electronic Intelligent Systems Research Institute Of Electronical Communication Tohok
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SATO Shigeo
Laboratory for Electronic Intelligent Systems, Research Institute of Electrical Communication, Tohok
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Nakajima K
Faculty Of Science And Technology Hirosaki University
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AKIMA Hisanao
Laboratory for Electronic Intelligent Systems, Research Institute of Electronical Communication, Toh
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YAMADA Saiboku
Laboratory for Electronic Intelligent Systems, Research Institute of Electronical Communication, Toh
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Yamada Saiboku
Laboratory For Electronic Intelligent Systems Research Institute Of Electronical Communication Tohok
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Akima Hisanao
Laboratory For Electronic Intelligent Systems Research Institute Of Electronical Communication Tohok
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Nakajima Koji
Laboratory For Brainware Reseach Institute Of Electrical Comunication Tohoku University:laboratory F
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Sato Shigeo
Laboratory For Brainware Systems/nanoelectronics And Spintronics Research Institute Of Electrical Co
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Sato Shigeo
Laboratory For Brainware Systems Laboratory For Nanoelectronics And Spintronics Research Institute O
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Sato Shigeo
Laboratory for Brainware System, Laboratory for Nanoelectronics and Spintronics, Research Institute of Electrical Communication, Tohoku University, Sendai 980-8577 Japan
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