TY - JOUR
T1 - CondensNet
T2 - enabling stable long-term climate simulations via hybrid deep learning models with adaptive physical constraints
AU - Wang, Xin
AU - Chen, Jianda
AU - Yang, Juntao
AU - Adie, Jeff
AU - See, Simon
AU - Furtado, Kalli
AU - Chen, Chen
AU - Arcomano, Troy
AU - Maulik, Romit
AU - Xue, Wei
AU - Mengaldo, Gianmarco
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2026/12
Y1 - 2026/12
N2 - 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.
AB - 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.
UR - https://www.scopus.com/pages/publications/105027790791
UR - https://www.scopus.com/pages/publications/105027790791#tab=citedBy
U2 - 10.1038/s41612-025-01269-5
DO - 10.1038/s41612-025-01269-5
M3 - Article
AN - SCOPUS:105027790791
SN - 2397-3722
VL - 9
JO - npj Climate and Atmospheric Science
JF - npj Climate and Atmospheric Science
IS - 1
M1 - 7
ER -