Research

 View Only

CISL Seminar: Introducing NEDAS: a Light-weight and Scalable Python Solution for Ensemble Data Assimilation 

06-18-2024 13:17

Speaker:Yue (Michael) Ying, Nansen Environmental and Remote Sensing Center (NERSC)

The Next-generation Ensemble Data Assimilation System (NEDAS) provides a light-weight Python solution for implementing ensemble data assimilation methods for geophysical models. Thanks to its modular and scalable design, a wide range of ensemble assimilation algorithms become feasible for large-dimensional models. NEDAS provides a collection of state-of-the-art algorithms from existing research software using two main strategies: (1) serial assimilation where observations are used one at a time to update the model state iteratively, (2) batch assimilation where observations are in a local analysis for each model state. One can test new algorithmic ideas in NEDAS and compare them with existing methods early-on before committing resources to full implementation in a real operational setting. In this talk, I’ll describe the architectural design of NEDAS, highlight some new algorithmic ideas, and show some computational benchmarks as a guidance for picking the right algorithm in different application scenarios.

Statistics
0 Favorited
2 Views
0 Files
0 Shares
0 Downloads

Related Entries and Links

No Related Resource entered.