Machine Learning in tunnelling – Capabilities and challenges

被引:21
|
作者
Marcher T. [1 ]
Erharter G.H. [1 ]
Winkler M. [1 ]
机构
[1] Graz University of Technology, Institute of Rock Mechanics and Tunnelling, Rechbauerstraße 12, Graz
来源
Geomechanik und Tunnelbau | 2020年 / 13卷 / 02期
关键词
Automatic classification; Big Data; Classification in Tunneling; Digitalization in Tunneling; Machine learning; Machine Learning; NATM; TBM tunnelling;
D O I
10.1002/geot.202000001
中图分类号
学科分类号
摘要
Digitalization will change the way of gathering geological data, methods of rock classification, application of design analyses in the field of tunnelling as well as tunnel construction and maintenance processes. In recent years, a rapid increase in the successful application of digital techniques (Building Information Modelling and Machine Learning (ML)) for a variety of challenging tasks has been observed. Driven by the increasing overall amount of data combined with the easy availability of more computing power, a sharp increase in the successful deployment of techniques of ML has been seen for different tasks. ML has been introduced in many sciences and technologies and it has finally arrived in the fields of geotechnical engineering, tunnelling and engineering geology, although still not as far developed as in other disciplines. This paper focuses on the potential of ML methods for geotechnical purposes in general and tunnelling in particular. Applications such as automatic rock mass behaviour classification using data from tunnel boring machines (TBM), updating of the geological prognosis ahead of the tunnel face, data driven interpretation of 3D displacement data or fully automatic tunnel inspection will be discussed. © 2020, Ernst und Sohn. All rights reserved.
引用
收藏
页码:191 / 198
页数:7
相关论文
共 50 条
  • [21] Challenges and Opportunities in Machine Learning for Geometry
    Magdalena-Benedicto, Rafael
    Perez-Diaz, Sonia
    Costa-Roig, Adria
    MATHEMATICS, 2023, 11 (11)
  • [22] Open Challenges in Federated Machine Learning
    Baresi, Luciano
    Quattrocchi, Giovanni
    Rasi, Nicholas
    IEEE INTERNET COMPUTING, 2023, 27 (02) : 20 - 27
  • [23] Machine learning in pharmacometrics: Opportunities and challenges
    McComb, Mason
    Bies, Robert
    Ramanathan, Murali
    BRITISH JOURNAL OF CLINICAL PHARMACOLOGY, 2022, 88 (04) : 1482 - 1499
  • [24] Machine Learning in EDA: Opportunities and Challenges
    Fallon, Elias
    PROCEEDINGS OF THE 2020 ACM/IEEE 2ND WORKSHOP ON MACHINE LEARNING FOR CAD (MLCAD '20), 2020, : 103 - 103
  • [25] Meta-learning and the new challenges of machine learning
    Monteiro, Jose Pedro
    Ramos, Diogo
    Carneiro, Davide
    Duarte, Francisco
    Fernandes, Joao M.
    Novais, Paulo
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2021, 36 (11) : 6240 - 6272
  • [26] Machine learning in smart production logistics: a review of technological capabilities
    Flores-Garcia, Erik
    Kwak, Dong Hoon
    Jeong, Yongkuk
    Wiktorsson, Magnus
    INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 2025, 63 (05) : 1898 - 1932
  • [27] Machine learning in the identification, prediction and exploration of environmental toxicology: Challenges and perspectives
    Wu, Xiaotong
    Zhou, Qixing
    Mu, Li
    Hu, Xiangang
    JOURNAL OF HAZARDOUS MATERIALS, 2022, 438
  • [28] Using Big Data and Machine Learning in Personality Measurement: Opportunities and Challenges
    Alexander, Leo, III
    Mulfinger, Evan
    Oswald, Frederick L.
    EUROPEAN JOURNAL OF PERSONALITY, 2020, 34 (05) : 632 - 648
  • [29] A Survey of Using Machine Learning in IoT Security and the Challenges Faced by Researchers
    Harahsheh K.
    Chen C.-H.
    Informatica (Slovenia), 2023, 47 (06): : 1 - 54
  • [30] The Machine Learning Life Cycle in Chemical Operations - Status and Open Challenges
    Gaertler, Marco
    Khaydarov, Valentin
    Klopper, Benjamin
    Urbas, Leon
    CHEMIE INGENIEUR TECHNIK, 2021, 93 (12) : 2063 - 2080