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[Author] Hua ZHANG(23hit)

21-23hit(23hit)

  • A New Memristive Chaotic System and the Generated Random Sequence

    Bo WANG  Yuanzheng LIU  Xiaohua ZHANG  Jun CHENG  

     
    LETTER-Nonlinear Problems

      Vol:
    E102-A No:4
      Page(s):
    665-667

    This paper concerned the research on a memristive chaotic system and the generated random sequence; by constructing a piecewise-linear memristor model, a kind of chaotic system is constructed, and corresponding numerical simulation and dynamical analysis are carried out to show the dynamics of the new memristive chaotic system. Finally the proposed memristive chaotic system is used to generate random sequence for the possible application in encryption field.

  • A Novel NBI Suppression Scheme in UWB Ranging Systems

    Weihua ZHANG  Hanbing SHEN  Zhiquan BAI  Kyung-sup KWAK  

     
    LETTER-UWB

      Vol:
    E90-A No:11
      Page(s):
    2439-2441

    Due to the ultra low power spectral desity of the ultra-wide band (UWB), narrow band interference (NBI) with high-level emission power will degrade the accuracy of UWB ranging system. We propose a novel waveform to suppress the accuracy degradation by NBI with a given frequency. In addition, we compare the ranging error ratio (RER) of the proposed scheme with the traditional one with Gaussian monocycle in this letter.

  • Device-Free Localization via Sparse Coding with a Generalized Thresholding Algorithm

    Qin CHENG  Linghua ZHANG  Bo XUE  Feng SHU  Yang YU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2021/08/05
      Vol:
    E105-B No:1
      Page(s):
    58-66

    As an emerging technology, device-free localization (DFL) using wireless sensor networks to detect targets not carrying any electronic devices, has spawned extensive applications, such as security safeguards and smart homes or hospitals. Previous studies formulate DFL as a classification problem, but there are still some challenges in terms of accuracy and robustness. In this paper, we exploit a generalized thresholding algorithm with parameter p as a penalty function to solve inverse problems with sparsity constraints for DFL. The function applies less bias to the large coefficients and penalizes small coefficients by reducing the value of p. By taking the distinctive capability of the p thresholding function to measure sparsity, the proposed approach can achieve accurate and robust localization performance in challenging environments. Extensive experiments show that the algorithm outperforms current alternatives.

21-23hit(23hit)