Multi-scale Kalman filters algorithm for GPS common-view observation data based on correlation structure of discrete wavelet coefficients |
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Authors: | Ou Xiaojuan and Zhou Wei |
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Affiliation: | (1) School of Mechano-Electronic Engineering, Xidian University, Xi’an, 710071, China |
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Abstract: | Global positioning system (GPS) common-view observation data were processed by using the multi-scale Kalman algorithm based
on a correlative structure of the discrete wavelet coefficients. Suppose that the GPS commonview observation data has the
1/f fractal characteristic, the algorithm of wavelet transform was used to estimate the Hurst parameter H of GPS clock difference data. When 0<H<1, the 1/f fractal characteristic of the GPS clock difference data is a Gaussian zero-mean and non-stationary stochastic process. Thus,
the discrete wavelet coefficients can be discussed in the process of estimating multi-scale Kalman coefficients. Furthermore,
the discrete clock difference can be estimated. The single-channel and multi-channel common-view observation data were processed
respectively. Comparisons were made between the results obtained and the Circular T data. Simulation results show that the
algorithm discussed in this paper is both feasible and effective.
Translated from Journal of Jilin University (Engineering and Technology), 2006, 36(4): 599–603 译自: 吉林大学学报 (工学版)] |
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Keywords: | communication multi-scale Kalman filters 1/f fractal characteristic correlation structure fractal increment |
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