Transactions of the Institute of Systems, Control and Information Engineers
Online ISSN : 2185-811X
Print ISSN : 1342-5668
ISSN-L : 1342-5668
Volume 36, Issue 12
Displaying 1-3 of 3 articles from this issue
Special Issue Paper
  • Yoshihiro Matsui, Hideki Ayano, Shiro Masuda, Kazushi Nakano
    Article type: Paper
    2023 Volume 36 Issue 12 Pages 401-409
    Published: December 15, 2023
    Released on J-STAGE: March 15, 2024
    JOURNAL FREE ACCESS

    This paper shows how to model linear plants using data obtained by simple experiments, such as those performed in data-driven controls. The method estimates the frequency response of the plant and uses it to estimate its transfer function with the prediction error method in the frequency domain. The frequency domain prediction error method allows the selection of the frequency components to be used for modeling easily and suppresses the effects of noise on the modeling results. Numerical experiments of open-loop modeling and actual experiments of closed-loop modeling with velocity control system for a two-inertia system demonstrate the effectiveness of the proposed method.

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  • Shigeru Yamamoto, Kyosuke Tsukada, Syota Matsubara, Yukihiro Yamasaki, ...
    Article type: Paper
    2023 Volume 36 Issue 12 Pages 410-417
    Published: December 15, 2023
    Released on J-STAGE: March 15, 2024
    JOURNAL FREE ACCESS

    Improving the initial setup accuracy of various hot strip mill actuators has been an issue for a long time. This study proposes new methods to enhance the accuracy if setup values based on the just-in-time method that uses a large amount of stored operational data. The key to the proposed methods is to extract the appropriate neighborhood data necessary for the setup calculations. The proposed method combines local regression, neighborhood data extracted via clustering based on linear regression, and the setup value calculated through the conventional method. We confirmed that the proposed method better improves the accuracy compared to the conventional method.

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Regular Issue Paper
  • Naoki Niiya, Toshiyuki Miyamoto, Daichi Inoue, Toyohiro Umeda, Shigema ...
    Article type: Paper
    2023 Volume 36 Issue 12 Pages 418-428
    Published: December 15, 2023
    Released on J-STAGE: March 15, 2024
    JOURNAL FREE ACCESS

    In recent years, the development of optimization methods in multi-agent systems has been remarkable. We have proposed a distributed scheduling method using the Alternating Direction Method of Multipliers (ADMM). However, in many cases, the scheduling process oscillates and does not converge. In this study, we present a theorem regarding the stability of distributed scheduling using ADMM. Additionally, we propose a modified ADMM algorithm to ensure that the algorithm reaches a stable state. The results of computer experiments demonstrate the effectiveness of the proposed method.

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