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Nonlinear filtering for sequential spacecraft attitude estimation with real data: Cubature Kalman Filter,Unscented Kalman Filter and Extended Kalman Filter
Authors:RV Garcia  PCPM Pardal  HK Kuga  MC Zanardi
Institution:1. USP (University of São Paulo), EEL, Estrada Municipal do Campinho, s/n, CEP: 12602-810 Lorena, SP, Brazil;2. Technological Institute of Aeronautics, Praça Marechal Eduardo Gomes, 50, Vila das Acácias, CEP: 12228-900 São José dos Campos, SP, Brazil;3. Federal University of ABC, Av. dos Estados, 5001, Bangu, CEP: 09210-580 Santo André, SP, Brazil
Abstract:This article compares the attitude estimated by nonlinear estimator Cubature Kalman Filter with results obtained by the Extended Kalman Filter and Unscented Kalman Filter. Currently these estimators are the subject of great interest in attitude estimation problems, however, mostly the Extended Kalman Filter has been applied to real problems of this nature. In order to evaluate the behavior of the Extended Kalman Filter, Unscented Kalman Filter and Cubature Kalman Filter algorithms when submitted to realistic situations, this paper uses real data of sensors on-board the CBERS-2 remote sensing satellite (China Brazil Earth Resources Satellite). It is observed that, for the case studied in this article, the filters are very competitive and present advantages and disadvantages that should be dealt with according to the requirements of the problem.
Keywords:Attitude estimation  Real data  Euler angles  Cubature Kalman Filter  Extended Kalman Filter  Unscented Kalman Filter
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