Title :
Gaussian mixture filtering for data fusion with switching observation models: Application to aircraft relative altimetry
Author :
Thomas, L. ; Monin, A. ; Mouyon, Philippe ; Houberdon, Nour-ed-din
Author_Institution :
Airbus SAS Oper., Toulouse, France
Abstract :
The relative altitude sensing function onboard aircraft is currently supported by the radio-altimeters system along with specific thresholding and voting logics. In order to improve its accuracy and integrity a multi-sensor data fusion is proposed that may involve radio altimeters, GPS information, terrain database, barometer, lidar and inertial measurements. Because these sensors are likely to be affected by multiple malfunctions we are faced to a linear state estimation problem with switching observation models.
Keywords :
Bayes methods; Gaussian processes; aircraft; filtering theory; mixture models; radioaltimeters; sensor fusion; state estimation; Bayesian probabilistic framework; GPS information; Gaussian mixture filtering; aircraft relative altimetry; barometer; dynamic sensor behavior; inertial measurements; lidar; linear state estimation problem; mode transitions; multisensor data fusion; onboard relative altitude sensing function; radio altimeters; switching observation models; terrain database; Aircraft; Approximation methods; Atmospheric modeling; Data integration; Estimation; Probability density function; Sensors;
Conference_Titel :
Control and Fault-Tolerant Systems (SysTol), 2013 Conference on
Conference_Location :
Nice
DOI :
10.1109/SysTol.2013.6693932