IEICE Transactions on Communications
Online ISSN : 1745-1345
Print ISSN : 0916-8516
E106.B 巻, 1 号
選択された号の論文の6件中1~6を表示しています
Regular Section
  • Xiang BI, Huang HUANG, Benhong ZHANG, Xing WEI
    原稿種別: PAPER
    専門分野: Network
    2023 年 E106.B 巻 1 号 p. 1-17
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/05/31
    ジャーナル 認証あり

    It is of great significance to design a stable and reliable routing protocol for Vehicular Ad Hoc Networks (VANETs) that adopt Vehicle to Vehicle (V2V) communications in the face of frequent network topology changes. In this paper, we propose a hybrid routing algorithm, RCRIQ, based on improved Q-learning. For an established cluster structure, the cluster head is used to select the gateway vehicle according to the gateway utility function to expand the communication range of the cluster further. During the link construction stage, an improved Q-learning algorithm is adopted. The corresponding neighbor vehicle is chosen according to the maximum Q value in the neighbor list. The heuristic algorithm selects the next-hop by the maximum heuristic function value when selecting the next-hop neighbor node. The above two strategies are comprehensively evaluated to determine the next hop. This way ensures the optimal selection of the next hop in terms of reachability and other communication parameters. Simulation experiments show that the algorithm proposed in this article has better performance in terms of routing stability, throughput, and communication delay in the urban traffic scene.

  • Mitsuki ITO, Fujun HE, Kento YOKOUCHI, Eiji OKI
    原稿種別: PAPER
    専門分野: Network
    2023 年 E106.B 巻 1 号 p. 18-34
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/07/05
    ジャーナル 認証あり

    This paper proposes a robust optimization model for probabilistic protection under uncertain capacity demands to minimize the total required capacity against multiple simultaneous failures of physical machines. The proposed model determines both primary and backup virtual machine allocations simultaneously under the probabilistic protection guarantee. To express the uncertainty of capacity demands, we introduce an uncertainty set that considers the upper bound of the total demand and the upper and lower bounds of each demand. The robust optimization technique is applied to the optimization model to deal with two uncertainties: failure event and capacity demand. With this technique, the model is formulated as a mixed integer linear programming (MILP) problem. To solve larger sized problems, a simulated annealing (SA) heuristic is introduced. In SA, we obtain the capacity demands by solving maximum flow problems. Numerical results show that our proposed model reduces the total required capacity compared with the conventional model by determining both primary and backup virtual machine allocations simultaneously. We also compare the results of MILP, SA, and a baseline greedy algorithm. For a larger sized problem, we obtain approximate solutions in a practical time by using SA and the greedy algorithm.

  • Toshiro NUNOME, Akira NAGAHARA
    原稿種別: PAPER
    専門分野: Network
    2023 年 E106.B 巻 1 号 p. 35-43
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/07/01
    ジャーナル 認証あり

    In this paper, we propose a combined method of GCR Block Ack and Unsolicited Retry for binary data lossless groupcast over wireless LANs. The two mechanisms are standardized as IEEE 802.11aa GCR for audiovisual transmission. In the proposed method, the sender transmits each frame twice without acknowledgment as Unsolicited Retry under lossy wireless link conditions. After transmitting twice, the sender enters the Block Ack sequence. In addition, we apply TXOP-Bursting, which allows a terminal to send frames sequentially with high priority during the TXOP limit, to the combined method. To show the proposal's effectiveness, we carry out a computer simulation. We assume binary data transmission of about 40MB and assess the time of complete reception at all the receivers. From the result, we find that the proposed method can shorten the received time against the conventional Block Ack method.

  • Souhei YANASE, Fujun HE, Haruto TAKA, Akio KAWABATA, Eiji OKI
    原稿種別: PAPER
    専門分野: Network Management/Operation
    2023 年 E106.B 巻 1 号 p. 44-56
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/07/05
    ジャーナル 認証あり

    This paper proposes a migration model for distributed server allocation. In distributed server allocation, each user is assigned to a server to minimize the communication delay. In the conventional model, a user cannot migrate to another server to avoid instability. We develop a model where each user can migrate to another server while receiving services. We formulate the proposed model as an integer linear programming problem. We prove that the considered problem is NP-complete. We introduce a heuristic algorithm. Numerical result shows that the proposed model reduces the average communication delay by 59% compared to the conventional model at most.

  • Purevtseren BAYARSAIKHAN, Ryuji KUSE, Takeshi FUKUSAKO, Kazuma TOMIMOT ...
    原稿種別: PAPER
    専門分野: Antennas and Propagation
    2023 年 E106.B 巻 1 号 p. 57-64
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/06/29
    ジャーナル 認証あり

    An aperture-shared multi-port waveguide antenna with multiple feeds is presented in this paper. The antenna consists of sequentially rotated four traditional WR-28 waveguides at 28GHz so as to create a multi-polarized function with decoupling between the ports. In addition, a rectangular DR (Dielectric resonator) is mounted at the center of the four apertures to obtain lower mutual coupling over a wide band and to suppress the cross-polarization in the antenna boresight direction. The proposed antenna achieves high gain of 14.4dBi, low mutual coupling of ≤-20dB on average, sufficient cross-polarization discrimination level at ≃20dB in the 27-29GHz frequency band.

  • Daiki TODA, Ren ANZAI, Koichi ICHIGE, Ryo SAITO, Daichi UEKI
    原稿種別: PAPER
    専門分野: Sensing
    2023 年 E106.B 巻 1 号 p. 65-73
    発行日: 2023/01/01
    公開日: 2023/01/01
    [早期公開] 公開日: 2022/06/29
    ジャーナル 認証あり

    A method of radar-based contactless vital-sign sensing and electrocardiogram (ECG) signal reconstruction using deep learning is proposed. A radar system is an effective tool for contactless vital-sign sensing because it can measure a small displacement of the body surface without contact. However, most of the conventional methods have limited evaluation indices and measurement conditions. A method of measuring body-surface-displacement signals by using frequency-modulated continuous-wave (FMCW) radar and reconstructing ECG signals using a convolutional neural network (CNN) is proposed. This study conducted two experiments. First, we trained a model using the data obtained from six subjects breathing in a seated condition. Second, we added sine wave noise to the data and trained the model again. The proposed model is evaluated with a correlation coefficient between the reconstructed and actual ECG signal. The results of first experiment show that their ECG signals are successfully reconstructed by using the proposed method. That of second experiment show that the proposed method can reconstruct signal waveforms even in an environment with low signal-to-noise ratio (SNR).

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