DocumentCode :
2578965
Title :
Estimation of deterministic and stochastic IMU error parameters
Author :
Unsal, Derya ; Demirbas, Kerim
Author_Institution :
Dept. of Guidance & Control Design, Roketsan Missiles Ind. Inc., Ankara, Turkey
fYear :
2012
fDate :
23-26 April 2012
Firstpage :
862
Lastpage :
868
Abstract :
Inertial Measurement Units, the main component of a navigation system, are used in several systems today. IMU´s main components, gyroscopes and accelerometers, can be produced at a lower cost and higher quantity. Together with the decrease in the production cost of sensors it is observed that the performances of these sensors are getting worse. In order to improve the performance of an IMU, the error compensation algorithms came into question and several algorithms have been designed. Inertial sensors contain two main types of errors which are deterministic errors like scale factor, bias, misalignment and stochastic errors such as bias instability and scale factor instability. Deterministic errors are the main part of error compensation algorithms. This study explains the methodology of how the deterministic errors are defined by 27 state static and 60 state dynamic rate table calibration test data and how those errors are used in the error compensation model. In addition, the stochastic error parameters, gyroscope and bias instability, are also modeled with Gauss Markov Model and instant sensor bias instability values are estimated by Kalman Filter algorithm. Therefore, accelerometer and gyroscope bias instability can be compensated in real time. In conclusion, this article explores how the IMU performance is improved by compensating the deterministic end stochastic errors. The simulation results are supported by real IMU test data.
Keywords :
Gaussian processes; Kalman filters; Markov processes; accelerometers; calibration; gyroscopes; inertial navigation; parameter estimation; 60 state dynamic rate table calibration test data; Gauss Markov model; Kalman filter algorithm; accelerometer; deterministic error parameter estimation; error compensation algorithm; gyroscope; inertial measurement unit; inertial sensor; instant sensor bias instability value estimation; navigation system; scale factor instability; state static rate table calibration test data; stochastic IMU error parameter estimation; stochastic error parameter; Acceleration; Gyroscopes; Manganese; Measurement uncertainty; Navigation; Stochastic processes; Inertial Measurement Unit; Kalman filter; accelerometer; gyroscope;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Position Location and Navigation Symposium (PLANS), 2012 IEEE/ION
Conference_Location :
Myrtle Beach, SC
ISSN :
2153-358X
Print_ISBN :
978-1-4673-0385-9
Type :
conf
DOI :
10.1109/PLANS.2012.6236828
Filename :
6236828
Link To Document :
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