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Bibliography

Research Report

State estimation with missing data and bounded uncertainty

Pavelková Lenka

: ÚTIA AV ČR, v.v.i, (Praha 2011)

: Research Report 2296

: CEZ:AV0Z10750506

: 1M0572, GA MŠk

: state-space model, filtering, bounded noise, incomplete data

: http://library.utia.cas.cz/separaty/2011/AS/pavelkova-state estimation with missing data and bounded uncertainty.pdf

(eng): The paper deals with two problems in the state estimation: (i) bounded uncertainty and (ii) missing measurement data. An algorithm for the state estimation of the discrete-time state space model whose uncertainties are bounded is proposed here. The algorithm also copes with situations when some data for identification are missing. The Bayesian approach is used and maximum a posteriori probability estimates are evaluated in the discrete time instants. The proposed estimation algorithm is applied to the estimation of vehicle position when incomplete data from global positioning system together with complete data from the inertial measurement unit are at disposal.

: BC

2019-01-07 08:39