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The EKF-AUS-NL algorithm implemented without the linear tangent model and in presence of parametric model error
Author(s) -
Luigi Palatella,
Fabio Massimo Grasso
Publication year - 2018
Publication title -
softwarex
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.528
H-Index - 21
ISSN - 2352-7110
DOI - 10.1016/j.softx.2018.01.001
Subject(s) - extended kalman filter , jacobian matrix and determinant , data assimilation , computer science , algorithm , parametric statistics , software , kalman filter , nonlinear system , parametric model , linearization , mathematics , artificial intelligence , statistics , physics , quantum mechanics , meteorology , programming language
In this paper we propose a C++-software package implementing the algorithm EKF-AUS-NL (Extended Kalman Filter with Assimilation in the Unstable Space with NonLinear evolution) designed to perform data assimilation in the unstable space when the Jacobian of the differential equation cannot be calculated. We also propose a simple approach to take into account the presence of the model error in the framework of the EKF-AUS-NL. The software performs the data assimilation using the EKF-AUS-NL algorithm with a dynamical systems defined as a generic time evolution routine separately implemented. We present two illustrative examples based on the Lorenz96 and SLAM systems.

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