surface temperature
- Southern Ocean (0.04)
- Pacific Ocean (0.04)
- North America > United States > California > San Diego County > San Diego (0.04)
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- Energy (0.46)
- Health & Medicine (0.46)
- Information Technology (0.46)
- Government > Regional Government (0.46)
Forecasting the Future with Yesterday's Climate: Temperature Bias in AI Weather and Climate Models
Landsberg, Jacob B., Barnes, Elizabeth A.
AI-based climate and weather models have rapidly gained popularity, providing faster forecasts with skill that can match or even surpass that of traditional dynamical models. Despite this success, these models face a key challenge: predicting future climates while being trained only with historical data. In this study, we investigate this issue by analyzing boreal winter land temperature biases in AI weather and climate models. We examine two weather models, FourCastNet V2 Small (FourCastNet) and Pangu Weather (Pangu), evaluating their predictions for 2020-2025 and Ai2 Climate Emulator version 2 (ACE2) for 1996-2010. These time periods lie outside of the respective models' training sets and are significantly more recent than the bulk of their training data, allowing us to assess how well the models generalize to new, i.e. more modern, conditions. We find that all three models produce cold-biased mean temperatures, resembling climates from 15-20 years earlier than the period they are predicting. In some regions, like the Eastern U.S., the predictions resemble climates from as much as 20-30 years earlier. Further analysis shows that FourCastNet's and Pangu's cold bias is strongest in the hottest predicted temperatures, indicating limited training exposure to modern extreme heat events. In contrast, ACE2's bias is more evenly distributed but largest in regions, seasons, and parts of the temperature distribution where climate change has been most pronounced. These findings underscore the challenge of training AI models exclusively on historical data and highlight the need to account for such biases when applying them to future climate prediction.
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
- Europe > Russia (0.04)
- Asia > Russia (0.04)
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- North America > United States > Texas > Brazos County > College Station (0.04)
- North America > United States > Indiana (0.04)
- North America > United States > Illinois > Champaign County > Urbana (0.04)
- (11 more...)
Deep Learning Atmospheric Models Reliably Simulate Out-of-Sample Land Heat and Cold Wave Frequencies
Meng, Zilu, Hakim, Gregory J., Yang, Wenchang, Vecchi, Gabriel A.
Deep learning (DL)-based general circulation models (GCMs) are emerging as fast simulators, yet their ability to replicate extreme events outside their training range remains unknown. Here, we evaluate two such models -- the hybrid Neural General Circulation Model (NGCM) and purely data-driven Deep Learning Earth System Model (DL\textit{ESy}M) -- against a conventional high-resolution land-atmosphere model (HiRAM) in simulating land heatwaves and coldwaves. All models are forced with observed sea surface temperatures and sea ice over 1900-2020, focusing on the out-of-sample early-20th-century period (1900-1960). Both DL models generalize successfully to unseen climate conditions, broadly reproducing the frequency and spatial patterns of heatwave and cold wave events during 1900-1960 with skill comparable to HiRAM. An exception is over portions of North Asia and North America, where all models perform poorly during 1940-1960. Due to excessive temperature autocorrelation, DL\textit{ESy}M tends to overestimate heatwave and cold wave frequencies, whereas the physics-DL hybrid NGCM exhibits persistence more similar to HiRAM.
- North America > United States > District of Columbia > Washington (0.04)
- North America > Mexico > Mexico City > Mexico City (0.04)
- North America > Greenland (0.04)
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Learning Coupled Earth System Dynamics with GraphDOP
Boucher, Eulalie, Alexe, Mihai, Lean, Peter, Pinnington, Ewan, Lang, Simon, Laloyaux, Patrick, Zampieri, Lorenzo, de Rosnay, Patricia, Bormann, Niels, McNally, Anthony
Interactions between different components of the Earth System (e.g. ocean, atmosphere, land and cryosphere) are a crucial driver of global weather patterns. Modern Numerical Weather Prediction (NWP) systems typically run separate models of the different components, explicitly coupled across their interfaces to additionally model exchanges between the different components. Accurately representing these coupled interactions remains a major scientific and technical challenge of weather forecasting. GraphDOP is a graph-based machine learning model that learns to forecast weather directly from raw satellite and in-situ observations, without reliance on reanalysis products or traditional physics-based NWP models. GraphDOP simultaneously embeds information from diverse observation sources spanning the full Earth system into a shared latent space. This enables predictions that implicitly capture cross-domain interactions in a single model without the need for any explicit coupling. Here we present a selection of case studies which illustrate the capability of GraphDOP to forecast events where coupled processes play a particularly key role. These include rapid sea-ice freezing in the Arctic, mixing-induced ocean surface cooling during Hurricane Ian and the severe European heat wave of 2022. The results suggest that learning directly from Earth System observations can successfully characterise and propagate cross-component interactions, offering a promising path towards physically consistent end-to-end data-driven Earth System prediction with a single model.
- North America > United States (0.68)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Atlantic Ocean > North Atlantic Ocean > Baffin Bay (0.04)
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- Government > Regional Government > North America Government > United States Government (0.47)
- Energy (0.46)
Google Earth Gets an AI Chatbot to Help Chart the Climate Crisis
New AI features in Google Earth let users ask chatbot-style questions to find changes in the climate. The system could eventually predict disasters and identify the communities likely to be affected. Google has come up with a way to better map Earth's disasters, predict them, and be able to track which communities and ecosystems are going to be wrought by their destruction. If you want to find out what's straining the environment in your neck of the woods, all you have to do is ask. Google Earth AI, a fusion of Google's Earth and Gemini AI systems, was introduced in July .
- North America > United States > California (0.15)
- Europe (0.15)
- Information Technology > Security & Privacy (0.48)
- Semiconductors & Electronics (0.30)
- North America > United States > Texas > Brazos County > College Station (0.04)
- North America > United States > Indiana (0.04)
- North America > United States > Illinois > Champaign County > Urbana (0.04)
- (11 more...)
- Southern Ocean (0.04)
- Pacific Ocean (0.04)
- North America > United States > California > San Diego County > San Diego (0.04)
- (5 more...)
- Energy (0.46)
- Health & Medicine (0.46)
- Information Technology (0.46)
- Government > Regional Government (0.46)
Uncertainty-Aware Hourly Air Temperature Mapping at 2 km Resolution via Physics-Guided Deep Learning
Liu, Shengjie Kris, Wang, Siqin, Zhang, Lu
Near-surface air temperature is a key physical property of the Earth's surface. Although weather stations offer continuous monitoring and satellites provide broad spatial coverage, no single data source offers seamless data in a spatiotemporal fashion. Here, we propose a data-driven, physics-guided deep learning approach to generate hourly air temperature data at 2 km resolution over the contiguous United States. The approach, called Amplifier Air-Transformer, first reconstructs GOES-16 surface temperature data obscured by clouds. It does so through a neural network encoded with the annual temperature cycle, incorporating a linear term to amplify ERA5 temperature values at finer scales and convolutional layers to capture spatiotemporal variations. Then, another neural network transforms the reconstructed surface temperature into air temperature by leveraging its latent relationship with key Earth surface properties. The approach is further enhanced with predictive uncertainty estimation through deep ensemble learning to improve reliability. The proposed approach is built and tested on 77.7 billion surface temperature pixels and 155 million air temperature records from weather stations across the contiguous United States (2018-2024), achieving hourly air temperature mapping accuracy of 1.93 C in station-based validation. The proposed approach streamlines surface temperature reconstruction and air temperature prediction, and it can be extended to other satellite sources for seamless air temperature monitoring at high spatiotemporal resolution. The generated data of this study can be downloaded at https://doi.org/10.5281/zenodo.15252812, and the project webpage can be found at https://skrisliu.com/HourlyAirTemp2kmUSA/.
- North America > United States > California > Los Angeles County > Los Angeles (0.28)
- South America > Peru > Loreto Department (0.14)
- North America > United States > Rocky Mountains (0.04)
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SamudrACE: Fast and Accurate Coupled Climate Modeling with 3D Ocean and Atmosphere Emulators
Duncan, James P. C., Wu, Elynn, Dheeshjith, Surya, Subel, Adam, Arcomano, Troy, Clark, Spencer K., Henn, Brian, Kwa, Anna, McGibbon, Jeremy, Perkins, W. Andre, Gregory, William, Fernandez-Granda, Carlos, Busecke, Julius, Watt-Meyer, Oliver, Hurlin, William J., Adcroft, Alistair, Zanna, Laure, Bretherton, Christopher
Traditional numerical global climate models simulate the full Earth system by exchanging boundary conditions between separate simulators of the atmosphere, ocean, sea ice, land surface, and other geophysical processes. This paradigm allows for distributed development of individual components within a common framework, unified by a coupler that handles translation between realms via spatial or temporal alignment and flux exchange. Following a similar approach adapted for machine learning-based emulators, we present SamudrACE: a coupled global climate model emulator which produces centuries-long simulations at 1-degree horizontal, 6-hourly atmospheric, and 5-daily oceanic resolution, with 145 2D fields spanning 8 atmospheric and 19 oceanic vertical levels, plus sea ice, surface, and top-of-atmosphere variables. SamudrACE is highly stable and has low climate biases comparable to those of its components with prescribed boundary forcing, with realistic variability in coupled climate phenomena such as ENSO that is not possible to simulate in uncoupled mode.
- North America > United States > New York (0.05)
- Pacific Ocean (0.04)
- Southern Ocean (0.04)
- (4 more...)