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基本情報 |
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氏名 |
荒井 伸太郎 |
氏名(カナ) |
アライ シンタロウ |
氏名(英語) |
Arai Shintaro |
所属 |
工学部 電気電子システム学科 |
職名 |
准教授 |
researchmap研究者コード |
B000232542 |
researchmap機関 |
岡山理科大学 |
Enhancing a BPSK receiver by employing a practical parallel network with Stochastic resonance
Yukihiro Tadokoro, Hiroya Tanaka, Yasuo Nakashima, Takaya Yamazato, and Shintaro Arai
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Stochastic resonance (SR), parallel network, bit error rate (BER)
Stochastic resonance (SR) is a noise-enhancement phenomenon that enables the detection of sub-threshold signals by adding noise and using nonlinear systems. This paper explores the applicability of SR in a BPSK receiver with sub-threshold signals. Although received signals are amplified as a result of the nonlinear behavior of the receiver, they are somewhat distorted. This results in the lower performance of SR receivers in comparison with linear receivers. Employing a parallel network of SR systems is expected to solve this problem. The present theoretical analysis demonstrates that in a certain noise intensity range, the output of the network can fully describe an input sub-threshold signal, and hence, the performance close to that of the linear receivers can be obtained. The effectiveness of the SR receiver was also demonstrated through a numerical example of the bit error rate (BER). However, achieving good BER performance requires an infinite number of arrayed SR systems, which is not realistic in practical systems. A design framework for an SR network with a finite number of elements and an appropriate noise intensity that can realize BER performance close to that in linear systems is also provided.
Enhancing a BPSK receiver by employing a practical parallel network with Stochastic resonance
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