Machine learning and Big Data in deep underground engineering

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作者
Asoke KNandi [1 ]
Ru Zhang [2 ]
Tao Zhao [3 ]
Tao Lei [4 ]
机构
[1] Department of Electronic and Electrical Engineering,Brunel University of London
[2] College of Water Resource and Hydropower,Sichuan University
[3] Institute of Rock and Soil Mechanics,Chinese Academy of Sciences
[4] School of Electronic Information and Artificial Intelligence,Shaanxi University of Science and
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<正>This special issue of Deep Underground Science and Engineering (DUSE) showcases pioneering research on the transformative role of machine learning (ML) and Big Data in deep underground engineering. Edited by guest editors Prof. Asoke Nandi (Brunel University of London, UK), Prof. Ru Zhang (Sichuan University,China), Prof. Tao Zhao (Chinese Academy of Sciences,China), and Prof. Tao Lei (Shaanxi University of Science and Technology, China), this issue highlights the innovative applications of ML technique in reshaping structural safety, tunneling operations, and geotechnical investigations.
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