CondensNet: enabling stable long-term climate simulations via hybrid deep learning models with adaptive physical constraints

  • Xin Wang
  • , Jianda Chen
  • , Juntao Yang
  • , Jeff Adie
  • , Simon See
  • , Kalli Furtado
  • , Chen Chen
  • , Troy Arcomano
  • , Romit Maulik
  • , Wei Xue
  • , Gianmarco Mengaldo

Research output: Contribution to journalArticlepeer-review

Abstract

Accurate and efficient climate simulations are crucial for understanding Earth’s evolving climate. However, current general circulation models (GCMs) face challenges in capturing unresolved physical processes, such as cloud and convection. A common solution is to adopt cloud-resolving models, which provide more accurate results than the standard subgrid parametrization schemes typically used in GCMs. However, cloud-resolving models, also referred to as super parametrizations, remain computationally prohibitive. Hybrid modeling, which integrates deep learning with equation-based GCMs, offers a promising alternative but often struggles with long-term stability and accuracy issues. In this work, we find that water vapor oversaturation during condensation is a key factor compromising the stability of hybrid models. To address this, we introduce CondensNet, a novel neural network architecture that embeds a self-adaptive physical constraint to correct unphysical condensation processes. CondensNet effectively mitigates water vapor oversaturation, enhancing simulation stability while maintaining accuracy and improving computational efficiency compared to super-parametrization schemes. We integrate CondensNet into a GCM to form PCNN-GCM (Physics-Constrained Neural Network GCM), a hybrid deep learning framework designed for long-term stable climate simulations in real-world conditions, including ocean and land. PCNN-GCM represents a significant milestone in hybrid climate modeling, as it shows a novel way to incorporate physical constraints adaptively, paving the way for accurate, lightweight, and stable long-term climate simulations.

Original languageEnglish (US)
Article number7
Journalnpj Climate and Atmospheric Science
Volume9
Issue number1
DOIs
StatePublished - Dec 2026

All Science Journal Classification (ASJC) codes

  • Global and Planetary Change
  • Environmental Chemistry
  • Atmospheric Science

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