Data Assimilation with Python: a Package for Experimental Research
-
Updated
Nov 5, 2024 - Python
Data Assimilation with Python: a Package for Experimental Research
Tutorials on data assimilation (DA) and the EnKF
Kalman filter sanctuary - including continuous-discrete extended Kalman filter. Bring additional filters here for a bigger collection.
EnKF code for DA with large-scale layered geophysical models.
Ert has been split into three repositories, libecl, libres, and ert, and now lives at Equinor's GitHub organization — https://github.com/equinor/libecl | https://github.com/equinor/libres | https://github.com/equinor/ert
Ensemble-based history matching method with latent-space proxy model for nonlinear forward model and non-Gaussian models.
EnKF analysis routines in Fortran 90. Stochastich and SQRT formulations with subspace inversion.
A Python interface to parallel data assimilation framework - pyPDAF
A companion repository to "A low-rank ensemble Kalman filter for elliptic observations" by Le Provost et al. (2022)
Code used for the paper "A Method for Imaging Energetic Particle Precipitation with Subionospheric VLF Signals"
A collection of time-efficient state estimation algorithms for the medium-fidelity WindFarmSimulator (WFSim) control model
⌨️ Nino-Ruiz, E.D., & Consuegra Ortega (2023) AMLCS-DA: A data assimilation package in Python for Atmospheric General Circulation Models. SoftwareX, Elsevier, 1– 10. Available from: https://doi.org/10.1016/j.softx.2023.101374
Data Assimilation Project with the Lorenz63 Model
the hub for all the computational projects related to NWP, DA, and predictability
This repo is work done for fun on trying to apply the parametric Kalman Filter (Pannekoucke et al. 2016) on the sphere for a transport equation.
Real time multi-dimensional data modeling with new observations
5 types of Kalman Filters and examples.
Add a description, image, and links to the enkf topic page so that developers can more easily learn about it.
To associate your repository with the enkf topic, visit your repo's landing page and select "manage topics."