Searched for: subject%3A%22Data%255C%252Bassimilation%22
(1 - 2 of 2)
document
Pang, Mijie (author), Jin, J. (author), Segers, Arjo (author), Jiang, Huiya (author), Fang, Li (author), Lin, H.X. (author), Liao, Hong (author)
Super dust storms re-occurred over East Asia in 2021 spring and casted great health damages and property losses. It is essential to achieve an accurate dust forecast to reduce the damage for early warning. The forecasting system fundamentally relies on a numerical model which can forecast the full evolution of dust storms. However, large...
journal article 2023
document
Nino-Ruiz, Elias David (author), Mancilla-Herrera, Alfonso (author), Lopez Restrepo, S. (author), Quintero-Montoya, Olga (author)
This paper proposes an efficient and practical implementation of the Maximum Likelihood Ensemble Filter via a Modified Cholesky decomposition (MLEF-MC). The method works as follows: via an ensemble of model realizations, a well-conditioned and full-rank square-root approximation of the background error covariance matrix is obtained. This...
journal article 2020