English

CERBERUS: A Three-Headed Decoder for Vertical Cloud Profiles

Atmospheric and Oceanic Physics 2026-04-13 v1 Machine Learning

Abstract

Atmospheric clouds exhibit complex three-dimensional structure and microphysical details that are poorly constrained by the predominantly two-dimensional satellite observations available at global scales. This mismatch complicates data-driven learning and evaluation of cloud processes in weather and climate models, contributing to ongoing uncertainty in atmospheric physics. We introduce CERBERUS, a probabilistic inference framework for generating vertical radar reflectivity profiles from geostationary satellite brightness temperatures, near-surface meteorological variables, and temporal context. CERBERUS employs a three-headed encoder-decoder architecture to predict a zero-inflated (ZI) vertically-resolved distribution of radar reflectivity. Trained and evaluated using ground-based Ka-band radar observations at the ARM Southern Great Plains site, CERBERUS recovers coherent structures across cloud regimes, generalizes to withheld test periods, and provides uncertainty estimates that reflect physical ambiguity, particularly in multilayer and dynamically complex clouds. These results demonstrate the value of distribution-based learning targets for bridging observational scales, introducing a path toward model-relevant synthetic observations of clouds.

Keywords

Cite

@article{arxiv.2604.08772,
  title  = {CERBERUS: A Three-Headed Decoder for Vertical Cloud Profiles},
  author = {Emily K. deJong and Nipun Gunawardena and Kevin Smalley and Hassan Beydoun and Peter Caldwell},
  journal= {arXiv preprint arXiv:2604.08772},
  year   = {2026}
}

Comments

Accepted for oral presentation at 2026 ICLR workshop on Machine Learning for Remote Sensing

R2 v1 2026-07-01T12:02:06.674Z