DocumentCode
2526944
Title
Analysis of the effects of bearings-only sensors on the performance of the neural extended kalman filter tracking system
Author
Stubberud, Stephen C. ; Kramer, Kathleen A. ; Geremia, J. Antonio
Author_Institution
Rockwell Collins, Poway, CA
fYear
2008
fDate
14-16 July 2008
Firstpage
54
Lastpage
59
Abstract
The neural extended Kalman filter (NEKF) has proven to be a quality maneuver target tracking system when the sensors provide a fully observable measurement, such as a radarpsilas range-bearing measurement or a position report. As with any state estimation technique, the NEKF requires observability in order to estimate the target track states. Observability is needed as well to train the weights of the neural network, since the neural network training paradigm is coupled to the target states. Passive sensor systems, such as electronic surveillance measures and passive sonar arrays, provide an angle-only measurement. Such bearings-only measurements make the tracking system an unobservable system. For a Kalman filter estimator, this will result in the eigenvalues of the error covariance matrix to grow without bound. For the NEKF, since both the target state and the weights of the neural network are affected by the lack of observability, the results could be more pronounced. In this paper, the application of the NEKF in bearings-only tracking problems is analyzed to determine the effects on performance. The analyzed cases look at a single sensor platform in four important scenarios: a stationary platform and straight-line target, a stationary platform and a maneuvering target, a maneuvering platform and a straight-line target, and a maneuvering platform and a maneuvering target.
Keywords
Kalman filters; covariance matrices; learning (artificial intelligence); nonlinear filters; sensors; state estimation; target tracking; bearings-only measurement; error covariance matrix; extended Kalman filter tracking system; maneuver target tracking system; neural network training paradigm; passive sensor system; state estimation; Neural networks; Observability; Performance analysis; Position measurement; Radar tracking; Sensor arrays; Sensor systems; State estimation; Surveillance; Target tracking; Kalman filtering; accuracy; bearings only measurement; neural networks; passive tracking; sensor fusion;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Intelligence for Measurement Systems and Applications, 2008. CIMSA 2008. 2008 IEEE International Conference on
Conference_Location
Istanbul
Print_ISBN
978-1-4244-2305-7
Electronic_ISBN
978-1-4244-2306-4
Type
conf
DOI
10.1109/CIMSA.2008.4595832
Filename
4595832
Link To Document