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Building Machine Learning Limited Area Models: Kilometer-Scale Weather Forecasting in Realistic Settings
Federal Office for Meteorology and Climatology MeteoSwiss; Institute of Atmospheric and Climate Science, Department of Environmental Science, ETH Zurich.
Linköping University, Department of Computer and Information Science, The Division of Statistics and Machine Learning. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0002-8201-0282
Danish Meteorological Institute.
Swedish Meteorological and Hydrological Institute.
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(English)Manuscript (preprint) (Other academic)
Abstract [en]

Machine learning is revolutionizing global weather forecasting, with models that efficiently produce highly accurate forecasts. Apart from global forecasting there is also a large value in high-resolution regional weather forecasts, focusing on accurate simulations of the atmosphere for a limited area. Initial attempts have been made to use machine learning for such limited area scenarios, but these experiments do not consider realistic forecasting settings and do not investigate the many design choices involved. We present a framework for building kilometer-scale machine learning limited area models with boundary conditions imposed through a flexible boundary forcing method. This enables boundary conditions defined either from reanalysis or operational forecast data. Our approach employs specialized graph constructions with rectangular and triangular meshes, along with multi-step rollout training strategies to improve temporal consistency. We perform systematic evaluation of different design choices, including the boundary width, graph construction and boundary forcing integration. Models are evaluated across both a Danish and a Swiss domain, two regions that exhibit different orographical characteristics. Verification is performed against both gridded analysis data and in-situ observations, including a case study for the storm Ciara in February 2020. Both models achieve skillful predictions across a wide range of variables, with our Swiss model outperforming the numerical weather prediction baseline for key surface variables. With their substantially lower computational cost, our findings demonstrate great potential for machine learning limited area models in the future of regional weather forecasting.

National Category
Meteorology and Atmospheric Sciences Computer Sciences
Identifiers
URN: urn:nbn:se:liu:diva-215667DOI: 10.48550/arXiv.2504.09340OAI: oai:DiVA.org:liu-215667DiVA, id: diva2:1977528
Available from: 2025-06-26 Created: 2025-06-26 Last updated: 2025-06-26
In thesis
1. Modeling Spatio-Temporal Systems with Graph-based Machine Learning
Open this publication in new window or tab >>Modeling Spatio-Temporal Systems with Graph-based Machine Learning
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Most systems in the physical world are spatio-temporal in nature. The clouds move over our heads, vehicles travel on the roads and electricity is transmitted through vast spatial networks. Machine learning offers many opportunities to understand and forecast the evolution of these systems by making use of large amounts of collected data. However, building useful models of such systems requires taking both spatial and temporal correlations into account. We can not accurately forecast the weather in Linköping without knowing if there is hot air blowing in from the south. Similarly, we can not predict if a vehicle is about to make a left turn without knowing its position and velocity relative to other vehicles on the road. This thesis proposes a set of methods for accurately capturing such spatio-temporal dependencies in machine learning models. 

At the core of the thesis is the idea of using graphs as a way to represent the spatial relationships in spatio-temporal systems. Graphs offer a highly flexible framework for this purpose, in particular for situations where observation locations do not lie on a regular spatial grid. Throughout the thesis, spatial graphs are constructed by letting nodes correspond to spatial locations and edges the relationships between them. These graphs are then used to construct different machine learning models, including graph neural networks and probabilistic graphical models. Combining such graph-based components with machine learning methods for time series modeling then allows for capturing the full spatio-temporal structure of the data. 

The main contribution of the thesis lies in exploring a number of methods using graph-based modeling for spatio-temporal data. This includes extending temporal graph neural networks to handle data observed irregularly over time. Temporal graph neural networks are also used to develop a model for vehicle trajectory forecasting, where the edges of the graph correspond to interactions between traffic agents. The thesis additionally includes work on Bayesian modeling, where a connection between Gaussian Markov random fields and graph neural networks allows for building scalable probabilistic models for data defined using graphs. 

A motivation for the methods developed in this thesis is the increasing use of machine learning in earth science. Capturing relevant spatio-temporal relationships is central for building useful models of the earth system. The thesis includes numerous experiments making use of weather and climate data, as well as application-driven work specifically targeting weather forecasting. Recent years have seen rapid progress in using machine learning models for weather forecasting, and the thesis makes multiple contributions in this direction. A probabilistic weather forecasting model is developed by combining graph-based methods with a latent variable formulation. Lastly, machine learning limited area models are also explored, where graph neural networks are used for regional weather forecasting.   

Place, publisher, year, edition, pages
Linköping: Linköping University Electronic Press, 2025. p. 97
Series
Linköping Studies in Science and Technology. Dissertations, ISSN 0345-7524 ; 2453
National Category
Computer Sciences Meteorology and Atmospheric Sciences
Identifiers
urn:nbn:se:liu:diva-215665 (URN)10.3384/9789181181173 (DOI)9789181181166 (ISBN)9789181181173 (ISBN)
Public defence
2025-08-22, Ada Lovelace, B-huset, Campus Valla, Linköping, 13:15
Opponent
Supervisors
Funder
Swedish Research Council, 2020-04122; 2024-05011Wallenberg AI, Autonomous Systems and Software Program (WASP)ELLIIT - The Linköping‐Lund Initiative on IT and Mobile Communications
Available from: 2025-06-26 Created: 2025-06-26 Last updated: 2025-06-26Bibliographically approved

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Oskarsson, JoelLindsten, Fredrik

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