
Uncertainty, Modeling, and Decision Making in Geotechnics
CRC Press
1st Edition
Published on 28. September 2025
Book
Paperback/Softback
502 pages
978-1-032-36750-7 (ISBN)
Description
Uncertainty, Modeling, and Decision Making in Geotechnics shows how uncertainty quantification and numerical modeling can complement each other to enhance decision-making in geotechnical practice, filling a critical gap in guiding practitioners to address uncertainties directly.
The book helps practitioners acquire a working knowledge of geotechnical risk and reliability methods and guides them to use these methods wisely in conjunction with data and numerical modeling. In particular, it provides guidance on the selection of realistic statistics and a cost-effective, accessible method to address different design objectives, and for different problem settings, and illustrates the value of this to decision-making using realistic examples.
Bringing together statistical characterization, reliability analysis, reliability-based design, probabilistic inverse analysis, and physical insights drawn from case studies, this reference guide from an international team of experts offers an excellent resource for state-of-the-practice uncertainty-informed geotechnical design for specialist practitioners and the research community.
The book helps practitioners acquire a working knowledge of geotechnical risk and reliability methods and guides them to use these methods wisely in conjunction with data and numerical modeling. In particular, it provides guidance on the selection of realistic statistics and a cost-effective, accessible method to address different design objectives, and for different problem settings, and illustrates the value of this to decision-making using realistic examples.
Bringing together statistical characterization, reliability analysis, reliability-based design, probabilistic inverse analysis, and physical insights drawn from case studies, this reference guide from an international team of experts offers an excellent resource for state-of-the-practice uncertainty-informed geotechnical design for specialist practitioners and the research community.
Reviews / Votes
'All chapters of this book collectively highlight the growing importance of probabilistic and advanced computational methods in geotechnical engineering, focusing on the necessity to account for soil variability and construction uncertainties. Techniques like the Random Finite Element Method, Monte Carlo simulations, and reduced-order models are emphasised for their role in improving design accuracy and reliability. For practicing engineers, this signifies a shift towards more informed decision-making, allowing for safer, more efficient, and sustainable solutions. The inclusion of practical case studies makes the book a valuable guide for engineers to implement these methods in real-world scenarios.'Behzad Fatahi in Georisk
'A strength of the book is its large scope in terms of probabilistic methods and applications, facilitated by the combined expertise of the contributing authors. You will find practical examples of piling, tunnels, footings, ground improvement, and slopes in both layered soil and jointed rock, to mention just a few... The premise is that the engineer's decision-making can be enhanced by performing uncertainty quantification and numerical modelling in combination.'
Johan Spross in Structural Safety
'This book is a valuable resource to the practice of geotechnical engineering as problems become more challenging due to rapid urbanization, aging infrastructure, and climate change... This is a much-needed book to fill a gap in the literature regarding data-driven approaches that capitalize on digital transformation and vast advancements in computing power.'
Anand Govindasamy in ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems
More details
Series
Language
English
Place of publication
London
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Professional and scholarly
Postgraduate, Professional, and Professional Reference
Illustrations
252 s/w Zeichnungen, 85 s/w Tabellen, 276 s/w Abbildungen, 24 s/w Photographien bzw. Rasterbilder
85 Tables, black and white; 252 Line drawings, black and white; 24 Halftones, black and white; 276 Illustrations, black and white
Dimensions
Height: 254 mm
Width: 178 mm
Thickness: 28 mm
Weight
971 gr
ISBN-13
978-1-032-36750-7 (9781032367507)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Kok-Kwang Phoon | Takayuki Shuku | Jianye Ching
Uncertainty, Modeling, and Decision Making in Geotechnics
E-Book
12/2023
1st Edition
Taylor & Francis
€97.49
Available for download

Kok-Kwang Phoon | Takayuki Shuku | Jianye Ching
Uncertainty, Modeling, and Decision Making in Geotechnics
E-Book
12/2023
1st Edition
Taylor & Francis
€97.49
Available for download

Kok-Kwang Phoon | Takayuki Shuku | Jianye Ching
Uncertainty, Modeling, and Decision Making in Geotechnics
Book
12/2023
1st Edition
CRC Press
€245.80
Shipment within 10-20 days
Persons
Kok-Kwang Phoon
is Cheng Tsang Man Chair Professor and Provost at the Singapore University of Technology and Design. He has edited three books and authored one book: Model Uncertainties in Foundation Design (CRC Press, 2021). He was awarded the ASCE Norman Medal twice, in 2005 and in 2020, and the Humboldt Research Award in 2017. He is the Founding Editor of Georisk and appointed a Board Member of ISSMGE and elected as a Fellow of the Academy of Engineering Singapore.
Takayuki Shuku
is Associate Professor of Okayama University in Japan. He received the Best Paper Award from Japan Society of Civil Engineering in 2020, and the ISSMGE Bright Spark Lecture Award in 2019.
Jianye Ching
is Distinguished Professor at National Taiwan University and Convener of the Civil & Hydraulic Engineering Program of the Ministry of Science and Technology of Taiwan. He served as Chair of ISSMGE's TC304 (risk) and Chair of Geotechnical Safety Network (GEOSNet). He is Managing Editor of the journal Georisk.
is Cheng Tsang Man Chair Professor and Provost at the Singapore University of Technology and Design. He has edited three books and authored one book: Model Uncertainties in Foundation Design (CRC Press, 2021). He was awarded the ASCE Norman Medal twice, in 2005 and in 2020, and the Humboldt Research Award in 2017. He is the Founding Editor of Georisk and appointed a Board Member of ISSMGE and elected as a Fellow of the Academy of Engineering Singapore.
Takayuki Shuku
is Associate Professor of Okayama University in Japan. He received the Best Paper Award from Japan Society of Civil Engineering in 2020, and the ISSMGE Bright Spark Lecture Award in 2019.
Jianye Ching
is Distinguished Professor at National Taiwan University and Convener of the Civil & Hydraulic Engineering Program of the Ministry of Science and Technology of Taiwan. He served as Chair of ISSMGE's TC304 (risk) and Chair of Geotechnical Safety Network (GEOSNet). He is Managing Editor of the journal Georisk.
Editor
Singapore University of Technology and Design, Singapore
Okayama University, Japan
National Taiwan University, Taipei
Content
1. Uncertainty-informed decision making in Burland Triangle. 2. Soil and rock parametric uncertainties. 3. Uncertainty in constitutive models. 4. Uncertainty in data-driven site characterization. 5. Variability of predictions in geotechnics. 6. Geotechnical reliability analysis for practice. 7. Reliability analysis with reduced order model. 8. Stochastic finite element methods for slope stability analysis and risk assessment. 9. Reliability-based design with numerical models. 10. Probabilistic inverse analysis for geotechnics. 11. Use of geotechnical software for probabilistic analysis and design. 12. Reliability-based decision-making with FE models for real-life case studies. 13. Soil-structure interaction in spatially variable ground. 14. Reduction of uncertainty through piling data within the same site in the press-in piling method. 15. Slope reliability assessments for linear infrastructures. 16. Uncertainty, modelling, and decision making for ground improvement.