Title :
Online Sensor Modeling Using a Neural Kalman Filter
Author :
Stubberud, Stephen C. ; Kramer, Kathleen A. ; Geremia, J. Antonio
Author_Institution :
Rockwell Collins, Poway
Abstract :
Sensor-measurement systems rely upon knowledge of the functional dynamics between system states and the measured outputs. Errors in sensor measurements come from a variety of sources. While there are well-known techniques to compensate for those errors that result from such issues as noise and sensor-accuracy limitations, other types, such as those that are more deterministic, can result in biases that are not easily compensated for in standard systems. A modification of an adaptive tracking technique based on the neural extended Kalman filter is proposed as a technique to provide for online calibration for the sensor models. Previously, the technique has been applied to tracking problems and successfully improved the motion model of a target when a maneuver occurs. In this new application of the technique, the sensor dynamics are learned rather than the target dynamics.
Keywords :
Kalman filters; calibration; computerised instrumentation; neural nets; sensors; adaptive tracking technique; neural extended Kalman filter; online calibration; sensor measurement systems; Acoustic measurements; Acoustic sensors; Calibration; Particle filters; Particle measurements; Radar antennas; Radar tracking; Sensor systems; Target tracking; Underwater acoustics; Adaptive Kalman filtering; calibration; neural networks; radar tracking; sensor modeling;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2007.900125