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Yuming Chen, Daniel Sanz-Alonso & Rebecca Willett. (2022) Autodifferentiable Ensemble Kalman Filters. SIAM Journal on Mathematics of Data Science 4:2, pages 801-833.
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Punpim Puttaraksa Mapiam, Monton Methaprayun, Thom Bogaard, Gerrit Schoups & Marie-Claire Ten Veldhuis. (2022) Citizen rain gauges improve hourly radar rainfall bias correction using a two-step Kalman filter. Hydrology and Earth System Sciences 26:3, pages 775-794.
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Lauri Tuppi, Pirkka Ollinaho, Madeleine Ekblom, Vladimir Shemyakin & Heikki Järvinen. (2020) Necessary conditions for algorithmic tuning of weather prediction models using OpenIFS as an example. Geoscientific Model Development 13:11, pages 5799-5812.
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C. E. J. Watt, H. J. Allison, N. P. Meredith, R. L. Thompson, S. N. Bentley, I. J. Rae, S. A. Glauert & R. B. Horne. (2019) Variability of Quasilinear Diffusion Coefficients for Plasmaspheric Hiss. Journal of Geophysical Research: Space Physics 124:11, pages 8488-8506.
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Marc Bocquet, Julien Brajard, Alberto Carrassi & Laurent Bertino. (2019) Data assimilation as a learning tool to infer ordinary differential equation representations of dynamical models. Nonlinear Processes in Geophysics 26:3, pages 143-162.
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