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Abstract:
A simplified adaptive particle filter was proposed based on the K-L sampling to overcome the drawback of computational burden in the traditional adaptive particle filter. The new algorithm calculates k value by separating it from the sampling process. Therefore, the complex and computational burden of the algorithm are efficiently reduced, and the infinite circulation is avoided. The simplified adaptive particle filter was applied to the SINS non-linear alignment with large azimuth. Compared with Extended Kalman Filter, standard particle filter and traditional adaptive particle filter, the simulated data show that simplified adaptive particle filter results in more efficient alignment without reducing the accuracy of the SINS alignment. Then the simplified adaptive particle filter is more suitable to the SINS non-linear alignment in dynamic situation.
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Journal of System Simulation
ISSN: 1004-731X
Year: 2008
Issue: 20
Volume: 20
Page: 5714-5717,5721
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 0
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