Presentation 2013-10-28
Performance evaluation of the weak signal detection of the Stochastic Resonance Receiver using Schmitt Trigger
Keita CHIGA, Hiroya TANAKA, Takaya YAMAZATO, Yukihiro TADOKORO, Shintaro ARAI,
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Abstract(in English) Stochastic Resonance(SR) is a nonlinear phenomena in which the Signal-to-Noise Ratio(SNR) is enhanced by an increase of the noise. By using SR, we can detect the weak signal which cannot detect by the conventional receiver. In this paper, we consider the application of SR to the communication systems. we implement the Stochastic Resonance Receiver using Schmitt Trigger as the Stochastic Resonance system. We evaluate the performance of the weak signal responce and we discuss about the weak signal detection.
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Keyword(in English) Stochastic Resonance / Schmitt Trigger / Weak Signal Detection
Paper # NLP2013-73
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Conference Information
Committee NLP
Conference Date 2013/10/21(1days)
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Paper Information
Registration To Nonlinear Problems (NLP)
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Performance evaluation of the weak signal detection of the Stochastic Resonance Receiver using Schmitt Trigger
Sub Title (in English)
Keyword(1) Stochastic Resonance
Keyword(2) Schmitt Trigger
Keyword(3) Weak Signal Detection
1st Author's Name Keita CHIGA
1st Author's Affiliation Nagoya University()
2nd Author's Name Hiroya TANAKA
2nd Author's Affiliation Nagoya University
3rd Author's Name Takaya YAMAZATO
3rd Author's Affiliation Nagoya University
4th Author's Name Yukihiro TADOKORO
4th Author's Affiliation TOYOTA Central R&D Labs., Inc.,
5th Author's Name Shintaro ARAI
5th Author's Affiliation Kagawa National College of Technology
Date 2013-10-28
Paper # NLP2013-73
Volume (vol) vol.113
Number (no) 271
Page pp.pp.-
#Pages 5
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