Journal of Architectural Informatics Society
Online ISSN : 2436-3863
Volume 1, Issue 1
Displaying 1-1 of 1 articles from this issue
  • Tsukasa ISHIZAWA, Yasushi IKEDA
    2021 Volume 1 Issue 1 Pages a1-a21
    Published: 2021
    Released on J-STAGE: October 04, 2021
    JOURNAL OPEN ACCESS
    Extending the existing Building Information Modeling (BIM) log mining approach, the paper proposes a novel method for visual analytics on clustered logs collected from multiple organizations. Implementing multiple datasets as case study processes demonstrated that the analytics effectively visualized the structured BIM events in command, organization, and user layers. Identified four major cluster groups correspond to logs' commonality and level of contribution significantly helped decipher recorded BIM activities without requiring background knowledge. The proposed technique allows the intercomparison of BIM activity that enables data-driven skill design for individuals and organizations. Such monitoring allows BIM users and teams to respond to transient project situations dynamically, which is expected to mitigate the observed major BIM problems of skill and management. The method contributes to increasing the likelihood that the model will be used throughout the project duration, leading to enhanced BIM's expected value in projects.
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