Robust Proximity Operations using Probabilistic Markov Models
A Markov decision process-based state switching is devised, implemented, and analyzed for proximity operations of various autonomous vehicles. The framework contains a pose estimator along with a multi-state guidance algorithm. The unified pose estimator leverages the extended Kalman filter for the...
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Zusammenfassung: | A Markov decision process-based state switching is devised, implemented, and
analyzed for proximity operations of various autonomous vehicles. The framework
contains a pose estimator along with a multi-state guidance algorithm. The
unified pose estimator leverages the extended Kalman filter for the fusion of
measurements from rate gyroscopes, monocular vision, and ultra-wideband radar
sensors. It is also equipped with Mahalonobis distance-based outlier rejection
and under-weighting of measurements for robust performance. The use of
probabilistic Markov models to transition between various guidance modes is
proposed to enable robust and efficient proximity operations. Finally, the
framework is validated through an experimental analysis of the docking of two
small satellites and the precision landing of an aerial vehicle. |
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DOI: | 10.48550/arxiv.2409.19062 |