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Weather and Climate

Applications of Machine Learning and Artificial Intelligence

  • 1st Edition, Volume 13 - August 1, 2026
  • Latest edition
  • Authors: Simon Driscoll, Kieran M.R. Hunt, Laura Mansfield, Ranjini Swaminathan, Hong Wei, Eviatar Bach, Alison Peard
  • Language: English

Weather and Climate: Applications of Machine Learning and Artificial Intelligence, Volume 13 provides a comprehensive exploration of machine learning in the context of weathe… Read more

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Description

Weather and Climate: Applications of Machine Learning and Artificial Intelligence, Volume 13 provides a comprehensive exploration of machine learning in the context of weather forecasting and climate research. Sections begin with an introduction to the fundamentals and statistical tools of machine learning and an overview of various machine learning models. Emulation and machine learning of sub-grid scale parametrizations are discussed, along with the application of AI/ML in weather forecasting and climate models. Next, the book delves into the concept of explainable AI (XAI) methods for understanding ML and AI models, as well as the use of generative AI in climate research.

The book explores the interface of data assimilation and machine learning for weather forecasting, showcasing case studies of machine learning applied to environmental monitoring data. Final sections look ahead to the future of ML and AI in climate and weather-related research, providing references for further reading. This comprehensive guide offers valuable insights into the intersection of machine learning, artificial intelligence, and atmospheric science, highlighting the potential for innovation and advancement in weather and climate research.

Members of the Royal Meteorological Society are eligible for a 35% discount on all Developments in Weather and Climate Science series titles. See the RMetS member dashboard for the discount code.

Key features

  • Provides a concise, singular resource for understanding machine learning and fundamental statistical tools relevant to weather and climate modeling
  • Examines state-of-the-art AI and ML approaches and their implementation in weather and climate, with extensive Python and Jupyter Notebooks for readers
  • Discusses future directions and the latest, most cutting-edge developments and applications of AI and ML to weather and climate science

Readership

Graduate students, faculty, researchers, computer scientists, software engineers, and practitioners in Climate Science, Meteorology, Atmospheric Science, Geophysics, and Planetary Science

Table of contents

1. Introduction to Machine Learning - Fundamentals and Statistical Tools

2. Introduction to Machine Learning Models

3. Emulation and machine learning of sub-grid scale parametrisations

4. AI/ML in weather forecasting and climate models

5. XAI – explainable AI methods for understanding ML and AI models

6. Generative AI in weather and climate research

7. The interface of Data Assimilation and Machine Learning for Weather Forecasting

8. Case studies of Machine Learning applied to Environmental Monitoring Data

9. Future of ML and AI in climate and weather-related research

10. References/Further Reading

Product details

  • Edition: 1
  • Latest edition
  • Volume: 13
  • Published: August 1, 2026
  • Language: English

About the authors

SD

Simon Driscoll

Dr. Simon Driscoll has a background training in pure and applied mathematics, and a DPhil from the University of Oxford. Initially specialising in volcanic eruptions, stratospheric dynamics and geoengineering, he was part of the UK's Stratospheric Particle for Climate Engineering project. Accordingly he has extensive experience in atmospheric physics and climate modelling. His research has been covered in various newspapers and books around the world and he has featured in a documentary on geoengineering for VRT (Belgian national TV). Excited by the power and revolutionary potential of machine learning and AI techniques he refocused his research on machine learning methods as part of the Schmidt Sciences funded Scale Aware Sea Ice project. Based at the University of Cambridge he primarily focuses on building emulators of sub-grid scale parametrisations as well as conducting research into the AI weather forecasting models and other applications of ML and AI in weather and climate.

Affiliations and expertise
University of Reading, UK

KH

Kieran M.R. Hunt

Dr. Kieran Hunt is a NERC independent research fellow in tropical meteorology and AI at the University of Reading and National Centre for Atmospheric Science. His career has largely focused on developing and using methods to understand how extreme weather events develop over South Asia and the Himalaya, with implications for weather forecasting, water security, and energy systems. In recent years, he has shifted his focus to tackling these problems with explainable machine learning. This has led to a diverse range of applications, including: new dynamical understanding of monsoon systems, developing the first operational machine learning hydrology forecasts, vast improvements to paleoclimate modelling, and a state-of-the-art energy demand model for India. He has taught extensively and supervised numerous research projects on the applications of machine learning in weather.

Affiliations and expertise
University of Reading, UK

LM

Laura Mansfield

Dr. Laura Mansfield is a postdoctoral researcher with an interest in how machine learning and Bayesian statistics can improve climate prediction. Currently based at Stanford University, she uses machine learning to enhance the representation of subgrid-scale atmospheric gravity waves and the resulting stratospheric circulation in climate models. She develops machine learning approaches to both replace physics-based parametrisations and to aid calibration of physics-based parametrisations. She is passionate about uncertainty quantification and will soon be a Schmidt AI in Science research fellow at the University of Oxford, where she will be developing machine learning stochastic parametrisations, with the goal of estimating model uncertainty. She has a PhD from the University of Reading, where she focused on machine learning emulators of climate models to predict the climate response changing emissions.

Affiliations and expertise
Stanford University, UK

RS

Ranjini Swaminathan

Dr Ranjini Swaminathan is a Senior Research Scientist at the Department of Meteorology and the National Centre for Earth Observation at the University of Reading. She has a Ph.D. in Computer Science from the University of Arizona and has previously been a postdoctoral research scientist at the University of Auckland and Texas Tech University. Her research expertise is in AI, focused on pattern recognition for computer vision and natural language processing applications. She is a core development team member of the UK’s flagship climate model, the UK Earth System Model (UKESM) and her research interests are in designing AI algorithms for climate model development and evaluation using observational data.

Affiliations and expertise
Senior Research Scientist, Department of Meteorology and the National Centre for Earth Observation, University of Reading, UK

HW

Hong Wei

Dr. Hong Wei is an Associate Professor in Computer Science. She received her first and master's degrees from Tianjin University, China, and a PhD degree from the University of Birmingham, UK. She is the author/co-author of over 100 papers and 3 textbooks. Since 2000, she has been at the University of Reading. Her research has been primarily focused on computer vision, image analysis, pattern classification, and applying machine learning to an extensive range of subjects, such as remotely sensed image interpretation, environmental monitoring, and precision agriculture.

Affiliations and expertise
University of Reading, UK

EB

Eviatar Bach

Dr. Eviatar Bach is a Lecturer (Assistant Professor) in Mathematics of Environmental Data Science at the University of Reading, after previously holding postdoctoral positions at the California Institute of Technology and École Normale Supérieure, and receiving a PhD at the University of Maryland. Eviatar's research interests include data assimilation and machine learning, predictability, and understanding climate through dynamical systems theory.

Affiliations and expertise
Assistant Professor, Mathematics of Environmental Data Science, University of Reading, UK

AP

Alison Peard

Alison Peard is a nearly completed doctoral candidate at the University of Oxford’s Environmental Change Institute. Following training in Mathematical Sciences (University College Cork) and an MSc in Mathematical Modelling and Scientific Computing (University of Oxford), her research focuses on using generative AI and extreme value theory on climate reanalysis data to generate multivariate storm event sets to improve the accuracy and efficiency of large-scale coastal climate risk assessments. She has exhibited generative AI work at NeurIPS, peer-reviewed for ICLR, and her publications include work in Nature Sustainability. She has additionally worked on several national-scale climate risk assessments with UNOPS, the World Bank Group, and Oxford Infrastructure Analytics.
Affiliations and expertise
University of Oxford, UK