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Mathematical Modelling
Two-stage parametric identification procedure for a satellite motion model based on adaptive unscented Kalman filters
O. S. Chernikovaa, A. K. Grechkoseevb, I. G. Danchenkoa a Novosibirsk State Technical University, Novosibirsk, Russian Federation
b JSC Academician M.F. Reshetnev “Information Satellite System”, Zheleznogorsk, Russian Federation
Abstract:
The paper presents a new two-stage parametric identification procedure for constructing a navigation satellite motion model. At the first stage of the procedure, the parameters of the radiation pressure model are estimated using the maximum likelihood method and the multiple adaptive unscented Kalman filter. At the second stage, the parameters of the unaccounted perturbations model are estimated based on the results of residual differences measurements. The obtained results lead to significant improvement of prediction quality of the satellite trajectory.
Keywords:
nonlinear stochastic continuous-discrete system, multiple adaptive unscented Kalman filter, parametric identification, ML method, satellite orbital motion model.
Received: 04.12.2021
Citation:
O. S. Chernikova, A. K. Grechkoseev, I. G. Danchenko, “Two-stage parametric identification procedure for a satellite motion model based on adaptive unscented Kalman filters”, Vestnik YuUrGU. Ser. Mat. Model. Progr., 15:4 (2022), 32–43
Linking options:
https://www.mathnet.ru/eng/vyuru659 https://www.mathnet.ru/eng/vyuru/v15/i4/p32
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Abstract page: | 83 | Full-text PDF : | 47 | References: | 23 |
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