Skip to main content

Machine Learning in Geohazard Risk Prediction and Assessment

From Microscale Analysis to Regional Mapping

  • 1st Edition - July 2, 2025
  • Latest edition
  • Editors: Biswajeet Pradhan, Daichao Sheng, Xuzhen He
  • Language: English

Machine Learning in Geohazard Risk Prediction and Assessment: From Microscale Analysis to Regional Mapping presents an overview of the most recent developments in machine learni… Read more

World Book Day celebration

Where learning shapes lives

Up to 25% off trusted resources that support research, study, and discovery.

Description

Machine Learning in Geohazard Risk Prediction and Assessment: From Microscale Analysis to Regional Mapping presents an overview of the most recent developments in machine learning techniques that have reshaped our understanding of geo-materials and management protocols of geo-risk. The book covers a broad category of research on machine-learning techniques that can be applied, from microscopic modeling to constitutive modeling, to physics-based numerical modeling, to regional susceptibility mapping. This is a good reference for researchers, academicians, graduate and undergraduate students, professionals, and practitioners in the field of geotechnical engineering and applied geology.

Key features

  • Introduces machine-learning techniques in the risk management of geo-hazards, particularly recent developments
  • Covers a broader category of research and machine-learning techniques that can be applied, from microscopic modeling to constitutive modeling, to physics-based numerical modeling, to regional susceptibility mapping
  • Contains contributions from top researchers around the world, including authors from the UK, USA, Australia, Austria, China, and India

Readership

Researchers, academicians, graduate and undergraduate students, professionals, and practitioners in the field of geotechnical engineering and applied geologypopular science authors, primary/high school teachers, government officers for infrastructure, policymakers for regions with geo-risks

Table of contents

Part 1: Machine learning methods and connections between different parts.

1. Machine learning methods

2. Connections between studies across different scales

3. Summary and outlook

Part 2: Machine learning in microscopic modelling of geo-materials.

4. Machine-learning-enabled discrete element method

5. Machine learning in micromechanics based virtual laboratory testing

6. Integrating X-ray CT and machine learning for better understanding of granular materials

7. Summary and outlook

Part 3: Machine learning in constitutive modelling of geo-materials.

8. Thermodynamics-driven deep neural network as constitutive equations

9. Deep active learning for constitutive modelling of granular materials

10. Summary and outlook

Part 4: Machine learning in design of geo-structures.

11. Deep learning for surrogate modelling for geotechnical risk analysis

12. Deep learning for geotechnical optimization of designs

13. Deep learning for time series forecasting in geotechnical engineering

14. Summary and outlook

Part 5: Machine learning in geo-risk susceptibility mapping for regions of various sizes.

15. Deep learning and ensemble modeling of debris flows, mud flows and rockfalls.

16. Integrating machine learning and physical-based models in landslide susceptibility and hazard mapping.

17. Explainable AI (XAI) in landslide susceptibility, hazard, vulnerability and risk assessment.

18. New approaches for data collection for susceptibility mapping

19. Summary and outlook

Product details

  • Edition: 1
  • Latest edition
  • Published: July 3, 2025
  • Language: English

About the editors

BP

Biswajeet Pradhan

Professor Pradhan is a globally recognized expert in geospatial analytics and artificial intelligence applications in Earth and environmental sciences. Currently a Distinguished Professor at the University of Technology Sydney (UTS), Australia, he also leads the Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS). With a PhD in GIS-based modeling, Prof. Pradhan has over two decades of experience in spatial data science, remote sensing, natural hazard modeling, and environmental monitoring. He has been listed among the world's top 2% scientists by Stanford University and received numerous international awards, including from IEEE and Elsevier. A Fellow of the Royal Geographical Society (FRGS), he also serves on editorial boards of several top-tier journals. His research integrates geospatial AI and deep learning for disaster risk reduction, land use planning, and sustainability.

Affiliations and expertise
Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), Faculty of Engineering and IT, University of Technology Sydney, Sydney, NSW, Australia

DS

Daichao Sheng

Daichao Sheng is a distinguished professor and the head of School of Civil and Environmental Engineering. He has developed an internationally recognized profile in computational geomechanics including soft computing, unsaturated soils, geo-risk analysis and transport geotechnics. He has published 300+ peer-reviewed papers and two books, including 200+ papers in top geotechnical and computational mechanics journals. These publications now attract 1400+ citations per annum, with an H-Index of 48 in Scopus. His track record places him easily within the top handful of geomechanics professionals of his age worldwide. He has collaborated widely with Australian and international researchers in his field
Affiliations and expertise
Distinguished Professor and Head of School of Civil and Environmental Engineering, Ultimo, New South Wales, Australia

XH

Xuzhen He

Xuzhen He is a senior lecturer at UTS School of Civil and Environmental Engineering. He is an early career researcher and completed his undergraduate and PhD training at the world’s top universities (Tsinghua for his BSc and Cambridge for his PhD) and was awarded the John Winbolt Prize and the Raymond and Helen Kwok Scholarship from Cambridge University. He was awarded the Australian Research Council Discovery Early Career Researcher Award in 2021. His research interest lies mainly in computational geomechanics, and he has published 30+ high-quality journal papers in these areas.
Affiliations and expertise
Senior Lecturer, UTS School of Civil and Environmental Engineering, Ultimo, New South Wales, Australia

View book on ScienceDirect

Read Machine Learning in Geohazard Risk Prediction and Assessment on ScienceDirect