access icon free GNSS attitude estimation based on adaptive Kalman filtering using phase measurement

Attitude estimation using multi-antenna Global Navigation Satellite System (GNSS) has caught broad attention in recent years. The methods of indirectly calculating attitude parameters based on baseline vectors have been widely used. However, the accuracy of such methods needs to be further improved. An algorithm of directly estimating attitude parameters based on adaptive Kalman filtering (AKF) is proposed. The high-precision phase measurements are used and the system noise covariance matrix corresponding to Euler angles and angle rates is adaptively adjusted according to the maximum a posteriori estimation principle. To decrease the linearisation errors and speed the filtering convergence, a switching strategy is implemented. Namely, when the number of fixed ambiguities is equal to or more than three, the authors deem that the attitude estimate is sufficiently accurate, hence the initial state vector is constructed to start filtering. Otherwise, the attitude parameters are indirectly obtained. The static and simulation experiments are carried out. A comparative study is implemented with the two methods of indirectly calculating attitude parameters. The static and simulation results demonstrate that the proposed method has a competent performance in both accuracy and fixing success rate. The simulation results also show that the adaptability of the AKF method is nice.

Inspec keywords: phase measurement; adaptive Kalman filters; maximum likelihood estimation; satellite navigation; attitude measurement; vectors; covariance matrices

Other keywords: Euler angles; initial state vector; GNSS attitude estimation; high-precision phase measurements; baseline vectors; multiantenna Global Navigation Satellite System; maximum a posteriori estimation principle; system noise covariance matrix; AKF method; attitude estimation; phase measurement; indirectly attitude parameter calculation; fixing success rate; adaptive Kalman filtering

Subjects: Probability theory, stochastic processes, and statistics; Spatial variables measurement; Spatial variables measurement; Algebra; Phase and gain measurement; Other topics in statistics; Radionavigation and direction finding; Electrical instruments and techniques; Algebra, set theory, and graph theory

http://iet.metastore.ingenta.com/content/journals/10.1049/iet-rsn.2019.0439
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