Data Assimilation
Data assimilation integrates observational data with physical models to improve estimates of system states, primarily aiming to enhance prediction accuracy and uncertainty quantification. Current research emphasizes developing robust algorithms, such as ensemble Kalman filters and variational methods, often enhanced by deep learning architectures like neural networks, transformers, and diffusion models, to handle nonlinearity and high dimensionality in diverse applications. This field is crucial for advancing weather forecasting, climate modeling, and other scientific domains requiring accurate state estimation from incomplete or noisy data, leading to improved decision-making in areas like disaster preparedness and resource management.
Papers
A Scalable Real-Time Data Assimilation Framework for Predicting Turbulent Atmosphere Dynamics
Junqi Yin, Siming Liang, Siyan Liu, Feng Bao, Hristo G. Chipilski, Dan Lu, Guannan Zhang
Global atmospheric data assimilation with multi-modal masked autoencoders
Thomas J. Vandal, Kate Duffy, Daniel McDuff, Yoni Nachmany, Chris Hartshorn
Exponential time differencing for matrix-valued dynamical systems
Nayef Shkeir, Tobias Schäfer, Tobias Grafke
Generative Data Assimilation of Sparse Weather Station Observations at Kilometer Scales
Peter Manshausen, Yair Cohen, Jaideep Pathak, Mike Pritchard, Piyush Garg, Morteza Mardani, Karthik Kashinath, Simon Byrne, Noah Brenowitz