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IEICE TRANSACTIONS on Communications

  • Impact Factor

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Advance publication (published online immediately after acceptance)

Volume E107-B No.3  (Publication Date:2024/03/01)

    Regular Section
  • CMND: Consistent-Aware Multi-Server Network Design Model for Delay-Sensitive Applications

    Akio KAWABATA  Bijoy CHAND CHATTERJEE  Eiji OKI  

     
    PAPER-Network System

      Page(s):
    321-329

    This paper proposes a network design model, considering data consistency for a delay-sensitive distributed processing system. The data consistency is determined by collating the own state and the states of slave servers. If the state is mismatched with other servers, the rollback process is initiated to modify the state to guarantee data consistency. In the proposed model, the selected servers and the master-slave server pairs are determined to minimize the end-to-end delay and the delay for data consistency. We formulate the proposed model as an integer linear programming problem. We evaluate the delay performance and computation time. We evaluate the proposed model in two network models with two, three, and four slave servers. The proposed model reduces the delay for data consistency by up to 31 percent compared to that of a typical model that collates the status of all servers at one master server. The computation time is a few seconds, which is an acceptable time for network design before service launch. These results indicate that the proposed model is effective for delay-sensitive applications.

  • Precoder Optimization Using Data Correlation for Wireless Data Aggregation

    Ayano NAKAI-KASAI  Naoyuki HAYASHI  Tadashi WADAYAMA  

     
    PAPER-Wireless Communication Technologies

      Page(s):
    330-338

    In this paper, we consider precoder design for wireless data aggregation in sensor networks. The precoder optimization problem can be formulated as minimization of mean squared error under transmit power and block diagonal constraints. We include statistical correlation of data into the optimization problem, which is appeared in typical applications but is ignored in conventional designing methods. We propose precoder optimization algorithms based on projected gradient descent with projection onto the constraint sets. The proposed method can achieve better performance than the conventional methods that do not incorporate data correlation, especially when data are highly correlated. We also extend the proposed approach to the context of over-the-air computation.

  • Low Complexity Overloaded MIMO Non-Linear Detector with Iterative LLR Estimation

    Satoshi DENNO  Shuhei MAKABE  Yafei HOU  

     
    PAPER-Wireless Communication Technologies

      Page(s):
    339-348

    This paper proposes a non-linear overloaded MIMO detector that outperforms the conventional soft-input maximum likelihood detector (MLD) with less computational complexity. We propose iterative log-likelihood ratio (LLR) estimation and multi stage LLR estimation for the proposed detector to achieve such superior performance. While the iterative LLR estimation achieves better BER performance, the multi stage LLR estimation makes the detector less complex than the conventional soft-input maximum likelihood detector (MLD). The computer simulation reveals that the proposed detector achieves about 0.6dB better BER performance than the soft-input MLD with about half of the soft-input MLD's complexity in a 6×3 overloaded MIMO OFDM system.