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Improving snow water equivalent modelling: a comparative study of hybrid machine learning techniques

Title: Improving snow water equivalent modelling: a comparative study of hybrid machine learning techniques
Authors: Pomarol Moya, Oriol; Nussbaum, Madlene; Mehrkanoon, Siamak; Kraaijenbrink, Philip D.A.; Gouttevin, Isabelle; Karssenberg, Derek; Immerzeel, Walter W.; Computational Geography; Sub Algorithmic Data Analysis; Mountain Hydrology
Publication Year: 2026
Subject Terms: Water Science and Technology; Earth-Surface Processes
Description: Accurate characterization of snow water equivalent (SWE) is important for water resource management in large parts of the Northern Hemisphere, but its large spatio-temporal variability and limited observational data make it difficult to quantify. Complex physically-based models have been developed that allow long-term SWE simulation, but those still suffer from biases in their predictions, have long run times and provide challenges for integrating observational data. There have been recent attempts at using machine learning (ML) to improve SWE predictions from meteorological data with promising results, but the data scarcity issue and concerns about the ability to extrapolate in time and space remain. In this study, we evaluated two hybrid setups that integrate physically-based simulations and ML. The first setup, referred to as post-processing, follows a common approach in which the simulated outputs from a numerical snow model, Crocus, are used as predictors to the ML component in addition to the meteorological data. The second setup, named data-augmentation, involves an ML model trained not only on measured SWE but also on Crocus-simulated SWE at additional locations. These approaches were deployed using in-situ meteorological and SWE measurements available at ten stations throughout the Northern Hemisphere, and compared to Crocus and an ML setup using measured data only. The post processing setup outperformed all other approaches when predicting on left-out years in the training stations, but performed poorly when extrapolating to other locations compared to Crocus. The addition of a large set of Crocus-simulated variables besides SWE in this setup resulted in similar performance for left-out years but exacerbated the spatial extrapolation issue. On the other hand, the data-augmentation setup performed slightly worse on the left-out years, but showed much better transferability to new locations, improving the other ML-based setups greatly and reducing the RMSE in Crocus by more than 10 %. The feature ...
Document Type: article in journal/newspaper
File Description: application/pdf
Language: English
ISSN: 1994-0416
Relation: https://dspace.library.uu.nl/handle/1874/481041
Availability: https://dspace.library.uu.nl/handle/1874/481041
Rights: info:eu-repo/semantics/OpenAccess
Accession Number: edsbas.A2EEB554
Database: BASE