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Original Articles

MMAE terrain reference navigation for underwater vehicles using PCA

Pages 1008-1017 | Received 27 Apr 2007, Accepted 24 Jan 2007, Published online: 22 Dec 2008
 

Abstract

The integration of a feature based positioning sensor, rooted on principal component analysis, with a multi-model adaptive estimator is proposed and discussed in detail as the solution to terrain reference navigation systems for underwater vehicles. The adequacy on the use of the proposed feature based non-linear positioning sensor is studied, the error sources are enumerated, a stochastic characterization is performed, and the attainable performance is discussed, based on the results from a series of experiments for a large set of synthesized terrains. Resorting to a non-linear Lyapunov transformation, the synthesis and analysis of a multiple-model multirate adaptive estimator (MMAE) in the stochastic setting is also presented, with overall guaranteed stability and optimal performance over equilibrium trajectories. Finally, results from Monte Carlo simulations to assess the performance of the overall system are included.

Acknowlegments

This work was supported in part by the Portuguese FCT (Foundation for Science and Technology) POSI Programme under framework QCA III, by the project PDCT/MAR/55609/2004 — RUMOS of the FCT and by the MAYA-Sub project of the AdI.

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