Abstract This article is basically focused on application of the Robust Kalman Filter (RKF) algorithm to the estimation of high speed an autonomous underwater vehicle (AUV) dynamics. In the normal operation conditions of AUV, conventional Kalman filter gives sufficiently good estimation results. However, if the measurements are not reliable because of any kind of malfunction in the estimation system, Kalman Filter (KF) gives inaccurate results and diverges by time. This study, introduces Robust Kalman Filter algorithm with the filter gain correction for the case of measurement malfunctions. By the use of defined variables named as measurement noise scale factor, the faulty measurements are taken into the consideration with a small weight and the estimations are corrected without affecting the characteristic of the accurate ones. In the presented RUKF, the filter gain correction is performed only in the case of malfunctions in the measurement system and in all other cases procedure is run optimally with regular KF.
[1]
Sun Young Kim,et al.
A GNSS Interference Identification and Tracking based on Adaptive Fading Kalman Filter
,
2014
.
[2]
Karl Sammut,et al.
6-DoF Navigation Systems for Autonomous Underwater Vehicles
,
2010
.
[3]
Halil Ersin Soken,et al.
Robust adaptive unscented Kalman filter for attitude estimation of pico satellites
,
2014
.
[4]
A. H. Mohamed,et al.
Adaptive Kalman Filtering for INS/GPS
,
1999
.
[5]
José Jaime Da Cruz,et al.
Complete offline tuning of the unscented Kalman filter
,
2017,
Autom..
[6]
Wu Chen,et al.
Adaptive Kalman Filtering for Vehicle Navigation
,
2003
.
[7]
Halil Ersin Soken,et al.
REKF and RUKF for pico satellite attitude estimation in the presence of measurement faults
,
2014
.