Reshaping Geotechnical Engineering with Machine Learning: Theory, Applications, and Innovations
Editat de Divesh Ranjan Kumar, Pijush Samui, Pradeep Thangavel, Warit Wipulanusaten Limba Engleză Paperback – oct 2026
In addition, it also addresses the integration of ML with finite element modeling to improve the analysis of tunnel and underground stability. The applications of machine learning in understanding geotechnical materials further showcase the versatility of these techniques. It also covers experimental investigations, including laboratory and field studies, which provide essential data for model training and validation. Through detailed case studies, the book illustrates practical implementations of machine learning, bridging theory and real-world problem-solving.
- Examines advanced machine learning techniques for a variety of geotechnical engineering applications
- Details practical, real-world case studies that highlight machine learning in geotechnical engineering
- Provides cross-disciplinary insights, bridging geotechnical engineering and data science
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Specificații
ISBN-13: 9780443452765
ISBN-10: 0443452768
Pagini: 325
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443452768
Pagini: 325
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Cuprins
1. Applications of Machine Learning in Geotechnical Engineering, Foundation Engineering, Slope Stability
2. Data Acquisition and Preprocessing in Geotechnical Engineering
3. Machine Learning for Soil Behaviour Prediction
4. Geotechnical Risk Assessment and Management with Machine Learning
5. Tunnel and underground stability using Finite Element Modelling and Machine Learning
6. Geotechnical Material and Machine Learning Applications
7. Case Studies in Machine Learning for Geotechnical Engineering
8. Experimental Investigations: Laboratory and Field Studies
9. Failure Diagnosis of Rock Slopes Using Discontinuity Analysis and Numerical Modeling
2. Data Acquisition and Preprocessing in Geotechnical Engineering
3. Machine Learning for Soil Behaviour Prediction
4. Geotechnical Risk Assessment and Management with Machine Learning
5. Tunnel and underground stability using Finite Element Modelling and Machine Learning
6. Geotechnical Material and Machine Learning Applications
7. Case Studies in Machine Learning for Geotechnical Engineering
8. Experimental Investigations: Laboratory and Field Studies
9. Failure Diagnosis of Rock Slopes Using Discontinuity Analysis and Numerical Modeling