Equivariant Inductive Biases for Weather Prediction with PEAR - Investigating the exploitation of rotational symmetries for accurate transformer-based weather forecasting over the HEALPix discretisation

dc.contributor.authorRosso, Pietro
dc.contributor.departmentChalmers tekniska högskola / Institutionen för data och informationstekniksv
dc.contributor.departmentChalmers University of Technology / Department of Computer Science and Engineeringen
dc.contributor.examinerOlsson, Simon
dc.contributor.supervisorGerken, Jan
dc.date.accessioned2026-07-09T11:19:30Z
dc.date.issued2026
dc.date.submitted
dc.description.abstractWeather forecasting is a complex challenge due to its intrinsically complex physical dynamics that define the evolution of the system. In recent years, deep learning weather prediction has emerged as a promising alternative to classical numerical weather prediction, matching or outperforming it on several benchmarks at a fraction of the inference time. This thesis contributes to this direction by analysing the symmetries of this system in relation to the group SO(2): the rotation of the Earth around its own axis. The study builds on Pangu Equal ARea (PEAR), a transformer-based model operating on the Hierarchical Equal Area isoLatitude Pixelization (HEALPix) discretisation of the sphere, and examines whether the symmetry awareness of this architecture can be increased from two complementary perspectives: the data on which the model is trained, and the architecture itself. In the first part, starting from ERA5, the reanalysis dataset that provides global estimates of the surface and atmospheric variables, we introduce a new 2-hourly sampling, which allows a comparison of PEAR’s equivariance behaviour across three configurations of dataset and forecast horizon. The analysis shows that the equivariance error is dominated by the architecture and the forecast horizon rather than by the sampling. The second part introduces two architectural modifications, an iso-latitude interspersed windowing scheme and a set of HEALPix-aware convolutions, designed to better align the model with the rotational symmetry of the sphere. These modifications successfully reduce the equivariance error at the surface level, but fail to improve it at the upper atmospheric levels, and do not translate into a forecasting advantage over the baseline. This outcome highlights the difficulty of embedding inductive biases in the case of domains that involve using high-dimensional samples, specifically in relation to window-based attention mechanisms.
dc.identifier.coursecodeDATX05
dc.identifier.urihttps://hdl.handle.net/20.500.12380/311971
dc.language.isoeng
dc.setspec.uppsokTechnology
dc.subjectWeather Forecasting, Symmetries, Deep Machine Learning, Equivari ance, ERA5, SWIN Transformers
dc.titleEquivariant Inductive Biases for Weather Prediction with PEAR - Investigating the exploitation of rotational symmetries for accurate transformer-based weather forecasting over the HEALPix discretisation
dc.type.degreeExamensarbete för masterexamensv
dc.type.degreeMaster's Thesisen
dc.type.uppsokH
local.programmeData science and AI (MPDSC), MSc

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