AI-Enhanced Safety Evaluation for Tunnelling in Rock AI-Enhanced Safety Evaluation for Tunnelling in Rock
Challenges in Geotechnical and Rock Engineering

AI-Enhanced Safety Evaluation for Tunnelling in Rock

Principles, Methods and Algorithms

Jiayao Chen and Others
    • USD 219.99
    • USD 219.99

Publisher Description

Artificial intelligence (AI) techniques for rock tunnel construction offer innovative solutions for assessing rock mass quality and ensuring excavation safety in challenging geological conditions. Both cutting-edge contact methods and noncontact methods such as digital photography can provide continuous geological data during excavation. Then, advanced deep learning algorithms for precise characterization of rock face features, along with pioneering multisource 3D data fusion modelling, can enable refined rock mass classification and sophisticated safety evaluation techniques tailored to complex geological environments.

By integrating machine vision and intelligent algorithms with rigorous statistical analysis and machine learning models, this book provides practical and refined solutions for the construction industry. It offers improved safety, efficiency, and reliability for tunnel projects and serves as a valuable reference for graduate students and academics.

GENRE
Professional & Technical
RELEASED
2025
2 December
LANGUAGE
EN
English
LENGTH
298
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
38.9
MB
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