4.7 Article

Face stability analysis of mechanized shield tunneling: An objective systems approach to the problem

期刊

ENGINEERING GEOLOGY
卷 262, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.enggeo.2019.105307

关键词

Tunnel face stability; Mechanized tunneling; Objective systems approach; Artificial neural networks (ANN); Machine learning; Deep learning

资金

  1. German Research Foundation (DFG) through the Collaborative Research Center [SFB 837]
  2. Integrated Graduate School (MGK) [SFB 837]

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The stability of the tunnel face is one of the most critical issues having to be secured for a successful tunneling practice. It becomes more crucial for the tunneling in an urban environment and even more when large diameters are contemplated, where catastrophic and costly consequences can happen due to the excessive settlements and ground deformations. In this research, an objective systems methodology is incorporated into this problem for the first time, and through the application of machine learning, a Face Vulnerability Index (FVI) is presented to assess the stability conditions of tunnels. To this end, seven parameters that are important for tunnel face stability in the subsoil - including engineering geological, geotechnical and environmental factors - are employed for the FVI definition, and a comprehensive worldwide database of mechanized tunneling case histories is developed. The interaction matrix in the framework of the systems approach is then objectively coded by using the database and a deep learning technique (deep Artificial Neural Networks- ANN) capabilities. The results (FVI predictions) are compared with a number of well-known analytical methods and the actual applied face-support pressures. A good agreement between predictions and observations has been found that proves the field applicability of the new index to a great extent, which has led to the suggestion of design graphs for future applications.

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